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EDUC 5080 STUDY GUIDE COGNITIVE LEARNING THEORY PRODUCT : EDUC 5080 /SG / 01 / VER1 1 EDUC 5080 STUDY GUIDE COGNITIVE LEARNING THEORY Dr Greg Yates, Magill Campus, University of South Australia PRODUCT : EDUC 5080 /SG / 01 / VER1 2 Terminology In line with international practice, the University of South Australia changed some of its academic terminology. From 1 January, 2001: Program replaced course Course replaced subject Unit replaced (credit) point This publication reflects the new terminology. Textbook Bruning, R H; Schraw, G J ; Norby, M N; and Ronning, R R (2004). Cognitive psychology and instruction. 4rd edition. Columbus, Ohio: Merrill. © University of South Australia 2005 3 CONTENTS MODULES AND READINGS Module Page Topic Textbook & Readings 1 5 Introduction to cognitive psychology Chapter 1 2 13 The working-memory system Chapter 2 3 21 The long-term memory system Chapter 3 4 29 Encoding processes Chapter 4 5 37 Retrieval processes Chapter 5 Yates & Chandler 6 43 Problem solving Chapter 8 ST1 53 Beliefs about the self Chapter 6 ST2 57 Beliefs about knowledge Chapter 7 ST3 61 Cognitive approaches to teaching science Chapter 15 ST4 67 Learning via ICT Chapter 10 Mayer 69 Appendices 86 References 4 5 MODULE 1 INTRODUCTION TO COGNITIVE PSYCHOLOGY Reading Text reading Bruning et al, chapter 1. Questions to ponder Each week at this point we usually list a set of questions to ponder, but find this on page 8 for this week. Listing of key concepts Each week at this point we list the significant terms or phrases from the readings, as a basic vocabulary listing. associationism the stimulus-response paradigm use of animals to derive elementary behavioural laws use of nonsense materials to study verbal learning learning as behavioural conditioning learning as a cognitive process learning as the construction of meaning structured knowledge role of prior knowledge and schemata metacognition learning as a function of personal motivation and self-beliefs learning through social interaction thinking like an expert Key points Each week’s list of key points will reflect the major ideas to be covered. These key points will frequently overlap with the summary provided within the textbook, so it will help to read the key points in conjunction with the relevant chapter summaries. 6 1 Although it has many forerunners, cognitive psychology, as an identifiable field of study really emerged within the 1960s. One common view is that it emerged out of the relative demise of associationism. 2 Associationism suggested that learning could be described in terms of associations between stimuli and responses. In the period from about 1900 to perhaps the early 1970s, psychologists were very much concerned with trying to describe universal laws of learning that would apply to animals and humans alike. 3 To some extent associationism did specify a number of highly valid and significant principles (for example, principles of reinforcement and behaviour modification). But as an analysis of human mental behaviour (that is, what is actually going on within the mind), associationism provided less than adequate explanations. 4 Virtually all contemporary psychologists now subscribe to cognitive psychology principles. Your textbook is devoted to reviewing these principles in depth. But by way of introduction, the following points (5 to 10 below) should be noted. 5 Learning is a process of meaningful construction. That is, we learn because we need to understand things, and this can only be achieved by making active and effortful responses. 6 Knowledge is structured or ‘packaged’ within the mind in several different ways, but especially in the form of coherent and interlinked schemata. Schemata stem from prior knowledge and are the basis for understanding new material. You will continue to meet the term schemata throughout this course. 7 Learning is also related to the goals and beliefs that learners bring into a learning situation. For example, people who believe that their intelligence is a fixed commodity generally fare poorly when they find themselves failing to perform well on a set task, whereas people who believe their intelligence is not a fixed entity do not expect to be successful all the time, and may be relatively untroubled by failures. 8 We also recognise that much learning occurs within social situations in which students can observe good models, then perform in ways that allow for peer interaction and collaborations to serve as good learning and teaching environments. 9 Cognitive psychology also stresses the contextual nature of much of our learning. For example, learning typically takes place within a specific location and is often tied, in part, to that location. The generalisation of a learned skill to other contexts will certainly occur, but it is far less of an automatic process that might be expected. Indeed, a good deal of human behaviour is highly discriminated (that is, we may behave differently in different situations), and this facet applies strongly also to how and what we learn. 10 Cognitive psychology will provide for you with a new language which you will find valuable in the analysis of both your own learning and that of your students. Overall, the problem “why is learning so difficult’ will continue with us throughout, as many sensible and meaningful answers, will emerge, but no final single resolution is possible. 7 Reading notes This section is intended to provide a guide to your reading. For the most part, the reading will be a chapter from Bruning et al, your textbook. Chapter 1 of Bruning et al provides a straightforward account of how cognitive psychology grew out of earlier associationism. Some of the associationists would have been known as ‘behaviourists’, but it is unclear just what the word ‘behaviourist’ ever referred to. The principles of behavioural conditioning described by researchers working in the 1920s and 1930s are as effective today as they were then. In the early years of last century, Pavlov systematically described the laws of classical conditioning, and as a species, we are very much subject to these principles. In the 1950s the noted behaviourist, B F Skinner extended our knowledge to elements such as schedules of reinforcement. As far as they went, the laws of associationism remain as important achievements within scientific psychology. Effective behaviour modification therapies were also developed within this period, although the clinical practitioners soon began to use cognitive learning principles within their work. If you are ever in doubt as to the impact of reinforcement schedules on human behaviour, then spend an evening watching people play poker machines. Within gambling parlours, people are paid on a ‘lean’ (that is, intermittent) reinforcement schedule to reliably give money to the machine’s proprietors. In essence, this type of psychology (ie associationist, or S-R psychology) was overtaken by cognitive psychology in the 1960s, not because it was wrong, but because it did not take advanced human thinking processes into account. To describe thoughts as ‘operant actions’ was not especially meaningful. After introducing the notion of cognitive psychology’s historical emergence, Bruning et al review six major statements that emerge as fundamental starting points for the cognitive analysis. Each of these statements will emerge within later chapters, so they are here mainly to help you become oriented toward the field, before we move more deeply into memory theory in week 2. Also, by way of introduction to the field and its major concepts, you can read two brief case studies in which the language of cognition is deliberately employed. 1 Firstly, a typical high school student, Kari, is featured on page 10 in Bruning. 2 Secondly, Mr Powell, a fire investigator, provides us with an example of high-level expertise within a skills domain (see Appendix 1). In both cases, notice the way that the situations the individuals face elicit active mental operations within the individuals’ brains. Active learning opportunities This section includes activities and questions that can be used for revision purposes. 1 On page 2, Bruning et al note that cognitive psychology seeks to observe behaviour in order to make inferences about the unobservable. What does this mean? Relate your thinking to how we might interpret someone’s facial expressions, if we ask them to memorise a number that is too long for their memory to cope with. 2 Does it mean, for example, that we are entitled to attach any meaning we want to another person’s facial expressions? 8 3 How do you know that another person is thinking? And how do you know what they are thinking? 4 Associationist and conditioning learning principles were first described in animal research around 1900 or earlier. But do they apply to human beings? 5 Why did cognitive psychology replace associationist psychology? 6 Write down at least five major assumptions that underpin modern cognitive psychology. 7 As a person becomes more expert within a field, how might his or her thinking processes change? How long do you think this takes? Questions to ponder A decision in writing the Study Guide was to try to avoid quoting many websites at you. There is a good deal of structured course reading already, and much of the web-based material is of marginal information value. It is extremely hard for novices to distinguish ‘good’ from ‘bad’. There are some superb sites available specifically in the area of memory strategies and some of these are given later in the topic. One aspect of studying cognitive psychology you can note is the scepticism most professional cognitive scientists have for most of what appears to take place in certain areas under labels such as brain-based learning, learning styles, and allied aspects such as the famous “Mozart effect”, and left-right brain hemispheres. Much of these activities are promoted through the Internet. But there is a remarkable level of misinformation passed across as though it represents actual research knowledge. When you enter the actual domain of cognitive psychology, however, you discover that things such as ‘learning styles’ barely exist within science at all, and have only marginal credibility. Most of the information about learning styles stems from agencies that have no actual basis in research, but simply claim this knowledge as though it was derived from research. Dr Yates wrote a book chapter on this several years ago, so please email him, if you want a copy of this paper. As a simple exercise in learning to become a sceptic about claims made in this area, log onto the Internet and place “Mozart effect” into an engine such as Google. Can we warn you that there is no actual data indicating that listening to Mozart increases student learning. But look at what various sites claim. There is a huge site run by people promoting books and products, and indeed it is necessary to view much of this area as being commercially-driven. Some claim credibility by using a name within the Internet domain address itself. (Indeed, even Nostradamus has his own website). The term “Mozart effect” is a registered commercial trademark in the USA. Thankfully, if you keep searching on the Net you also find many sites run by responsible people who counter the excessive claims made in the name of this effect. For example, two sites (of many) giving polar opposite views see http://www.mozarteffect.com and http://skepdic.com/mozart.html Listening to ‘Sonata for two pianos’ is a wonderful and rich experience. But this will not result in learning gains in other situations. So two questions to ponder are How did this situation of such misinformation develop? How can the average teacher be expected to tell genuine from pseudo-scientific information? But, to complete the introductory material, please consider the following case study: 9 EXPERTISE WITHIN REAL-LIFE SITUATIONS Adapted from the following The Weekend Australian (2000, 4 November). ‘Bill Powell: after the flames, he sifts through the mysteries of the ashes’, pages 9-10. [Weekend Magazine] The newspaper, The Weekend Australian, regularly publishes human interest stories within its magazine section. In 2000, the columnist Stephen Lacey interviewed Mr Bill Powell who has served with the New South Wales Fire Service for 33 years. As a chief investigator with the Fire Investigation Research Unit, he investigates and reports on around 150 fires per year, gathering evidence for the courts and the state coroner. In short, Mr Powell is an expert within the field of fire investigation. The following statements are drawn directly from the published interview. I always treat a fire as a jigsaw puzzle. I need to know what, how, and why. We like to go to a hot fire, which means it is still burning. In that way we can interview the first firefighters on the scene. Experienced firefighters can spot something unusual. If a fire has been increased by an accelerant, most firefighters can tell. For a start, the fire is very hard to put out. Secondly, when they put their hoses on it, the fire runs across the top of the water. Gathering factual information from eyewitnesses is an important part of the job. We narrow down from the ‘area of origin’—a certain room for example—to the ‘point of origin’, which might be over in a corner. At this point we’ll excavate debris in that location, layer by layer, by hand so we don’t disturb the evidence. When most people see a broken window, they assume it’s been caused by the fire. We look closer. Maybe we’ll find some clean glass fragments. If they are unsooted, it indicates that the glass was broken prior to the fire. 10 This job has made me a suspicious bastard … You’ve got to be. Absence of household goods sends me warning lights. I hate having to record a fire as an undetermined cause … I like to know. Within the interview, Mr Powell said a good deal more. For example he noted that, in his experience, arsonists often may remain around their fires and then offer to become eyewitnesses. They often seem to know more about the fire than would be expected. Many arsonists actually hurt themselves, but when they go for medical treatment they tend do so as far from the fire or their homes as they can. They may say it is a burn from a home BBQ (barbecue). Now, let us approach this interview from the perspective of cognitive psychology. We ask ‘What is going on within the mind?’. The above listing of statements from the interview is especially interesting. Note how the investigator tells us that he approaches the problem with an explicit mental focus. That is, he is suspicious, cautious and highly goal-oriented. He knows that there has to be a cause, and that he has to proceed with considerable thought and care. That is, he begins to employ an organised set of strategies. His knowledge of past fires and the variables that cause them is so extensive that certain recognition processes will be activated automatically. He knows that there are certain investigative steps to be taken while the fire is still burning, and so he approaches the firefighters and witnesses with a planned series of questions. The process of hypothesis testing has to take place, but the first crucial thing is to gather the information that will eventually allow a specific hypothesis to be supported more strongly than other possibilities. Mr Powell does not react impulsively, but takes time to gather evidence. But note how information gathering is not a random process. Indeed, he has to know what to look out for; that is, how to identify and protect the evidence. He has to ensure that people do not destroy the cues needed to arrive at a decision. For example, the disposition of broken glass is highly important, and there could be any number of additional subtle cues left behind. He knows that accelerants will leave some form of residue behind. For example, if anyone uses kerosene, it leaves a smell and unburnt fluid. Mr Powell possesses a wide range of knowledge about how fires can get started, how they develop, how quickly they spread, and what sequences to expect as a fire takes hold. Note how such knowledge is actively embodied in schemata such as ‘area of origin’ and ‘point of origin’. That is, even to use these terms entails a huge level of knowledge about fire causes and sequences. Mr Powell’s knowledge will be mentally filed within several different forms. Besides declarative knowledge about fires, and schemas for such constructs as ‘point of origin’, he will be able to draw upon case knowledge. Case knowledge involves memories of past events and specific cases which bear upon the present. For example, he may find that the fire scene is strangely devoid of furniture. This may cue him to recall a case he visited years ago, or read about in the past, in which a criminal cleared a house of all valuable objects prior to setting a building ablaze. Thus, recall of past cases helps by allowing him to perceive similarities between different events. Being able to read visual cues to locate areas such as the point of origin is a skill honed over many years, perhaps a decade or more. To the rest of us a burnt house is a sad scene of blackened desolation and hopeless loss. To Bill, it presents a clear mental challenge that enables high-level detective skills to be activated and employed in the service of truth and justice. Indeed, the newspaper interview touched on the theme of moral indignation; that is, many fires are the work of people with criminal intent who seek to hurt others, to benefit directly or cover up previous misdeeds. 11 Besides using eyewitness reports and direct observation, the fire investigators proceed to seek out additional information by procedures such as excavation. Additional data will be called upon, such as the pattern of burns on any objects including human remains. That is, the investigator has to take active steps to bring more data into the field, perhaps for a later stage of analysis. While the scene is still fresh, Mr Powell will take scores of photographs, but even knowing what to photograph is itself an acquired skill. The need for all this supplementary evidence gathering will often be guided by the nature of the investigator’s preliminary hypotheses, but he has to take care not to close off a viable cause too soon. A high level of inference is demanded. That is, the evidence as it fell is matched to prior knowledge of previous cases and to technical knowledge of fire sequence events. The specific presenting case is matched to a more general case of ‘what would occur’ given all available knowledge of situations and variables which resemble the current one. And in addition to the tone of moral indignation (that is, the outrage he feels when people use fire as a means of hurting others), note how Mr Powell, in common with many other experts, sees the entire issue in terms of remarkably strong personal motivations. That is, his job is not just to be there and fill out a mechanical report. He actually needs to know what caused the fire. To not be able to do this would be a cause of intense discomfort. From the viewpoint of the cognitive psychologist, this need to know is seen as a very powerful source of motivation. We may surmise that people such as Mr Powell take great pride in their ability to solve complex problems, and this is what makes his vocation personally rewarding. Did you notice how we invoked a number of significant technical terms to analyse what occurs within the mind of the investigator? Let’s look at these: explicit mental focus goal-orientation strategies knowledge (that is, declarative knowledge and case knowledge) recall and recognition prototypical features automaticity schemata information gathering hypothesis testing high level of inference mental challenge, and the need to know These terms are all basic to the cognitive analysis of mental functioning. Within this course, we review these and many other terms in more depth, looking at the research basis behind their usage. Note how they help us to describe the processes the human brain actively uses in order to solve problems, not just in solving crimes, but in all areas of our psychological functioning, and especially when the situations in front of us demand effortful thought. ADDENDUM: We contacted Mr Powell directly, and asked him to read these pages prior to our citing him in this way. He declared himself amazed and fascinated by what was written, and we believe these pages were used in training sessions, for the NSW Fire Service. 12 13 MODULE 2 THE WORKING-MEMORY SYSTEM Reading Text reading Bruning et al, chapter 2. Questions to ponder 1 How do we learn? What actual process has to occur within the mind? 2 What are the three distinct memory components described in the modal model? 3 Psychologists used to talk about short-term memory (STM), but now seem to talk more about working memory (WM). So what has changed? 4 What are the normal limits of the working memory, and how do these limits affect our normal functioning? 5 How can teachers avoid over-reaching their students’ processing limits and still make learning highly meaningful? 6 What does it really mean, in the mind, to ‘pay attention’? 14 Listing of key concepts Information processing models (including the modal model) sensory memory (that is, the sensory register) encoding and retrieval pattern recognition storage assignment of meaning to a stimulus the visual and auditory registers templates prototypes feature analysis the structural description approach knowledge as schemata attention as a process of selection attention as a process of attenuated processing automaticity short-term memory capacity chunks the working-memory system cognitive load theory Key points 1 Cognitive psychologists agree that the modal memory theory represents, in broad outline, an accurate picture of what the mind does in situations where input information has to be mentally processed. This theory describes the relationship between three memory stores. 2 Sensory memories (or iconic memories) are brief. Within the visual system, they may last for perhaps 0.5 of a second if no further processing is activated. Within the auditory register, the sensory memories (or echoes) possibly last around 3 seconds. However, information picked up at this level may be then further processed; that is, perception and pattern recognition processes may become active. 3 Elementary perception operates through four different mechanisms. Templates are applied, especially in identification of individual letters. Prototypes represent the ideal or ‘best fit’ pattern when it comes to whole images. Feature analysis applies to when we apprehend the critical features that determine the identification of an object (for example, identifying a cat from the shape of its ears ). A structural description involves a more verbal process wherein we apply statements and words to what we see, and so make a slower but reasoned judgement as to what the stimulus is. 4 Once perception is achieved, the next process will involve the knowledge store in some way. This will be covered in more depth in chapter 3 of the text, but at this point note that the mind is engaged with activating prior knowledge to assist the processes involved in perception and the assignment of meaning. 5 The process of paying attention is a little mysterious, in that some forms of selective switches are involved; that is, the mind appears able to switch from one input to another, and virtually shut off some input sources. Experimental studies have established that the mind does possess the tendency to follow meaningful inputs, almost irrespective of changes across sources; hence, a high level of input processing must be occurring outside of normal consciousness. 15 6 As skill within an area increases, there is a corresponding increase in the automaticity for basic cognitive processing. This proceduralisation allows the process of attention to shift from lower level concerns to higher level meaningful goals. 7 Short-term memory capacity is thought to be of around seven to eight basic chunks, and for perhaps 10 to 20 seconds. 8 The working memory is not just a fixed capacity system. It involves a system of information management. Active thinking (that is, ‘consciousness’) is said to occur within the executive aspect, but this is served by a visual–spatial sketch pad, and a verbal articulatory loop. Reading notes These present notes may go a little beyond the chapter in the textbook in some places, but link in with information in the next module. Across the two modules we are focused upon how we the mind is constructed. That is, there are systems that operate, and it is important to learn a set of technical terms that can be used to describe these processes. This week we are concerned more with how the mind stores experiences at the level of the active working memory, whereas in Module 3 we describe how the long-term memory operates. In future weeks we return to these topics, looking at how the mind acquires knowledge and lays down memories, but at the outset we need to review the basic terminology. Chapter 2 of the text conveys the basic information-processing model that has dominated theory and research in cognitive psychology over the past 30 years. This model sees learning as the ability to transfer information into the long-term memory, but how it gets there and how it becomes accessible are extremely complex problems.. One clear theme that emerges is that the human mind possesses very definite limitations. At times these are expressed as limitations in capacity; that is, how much information can be processed at one moment in time. For example, on page 26 of the text, it is suggested that the short-term span is perhaps seven or eight chunks of data. But if the task in front of you involves some relatively unknown notions, such as the names of unfamiliar towns in a country you have never been to, or the biological names of plants, then the short-term memory capacity is likely to drop to around four items. Generally, when we say that the short-term memory capacity is around seven items, it assumes that these are somewhat familiar items. Chapter 2 reviews our basic knowledge about the phenomena of sensory memory. Most people do not even realise that there actually is a very short memory system associated with each input modality. Visual icons last for about 0.5 of a second, but auditory echoes seem to last a few seconds. These are sensory memories, in that they are specific to the modality system. However, they provide information that can be apprehended at the next level; that is, the process of perception. The processes involved in basic perception and pattern recognition are reviewed briefly within the text. A template is a type of standard that you fit onto the incoming stimulus. For example, all of us can read letters, irrespective of the printing font. That is, all fonts fall within our templates for individual letters. Even if a font looks very strange at first, it takes 16 only a minute or so to adjust our mental templates to be able to read it. You can think of a prototype as being a kind of statistical average of what we think something ought to look like. We can ask people to draw things such as ‘car’ or ‘chair’ or ‘dog’. But their drawings may not actually correspond to any one real car, chair or dog. That is, when people make such drawings, they tend to make idealised pictures, not because they are poor at drawing, but because they access idealised prototypes of these things within their minds. The process of perception is extended to another level through feature analysis. This is where the brain picks up particular features of the object, and ‘knows’ that these features enable a specific decision to be made. For example, those distinctive ears on figure 2-5 in the text tell you that the hidden animal is a cat. Another example could be that if you see a dog with its ears flattened back, then this feature will tell you the dog is angry. The highest level of basic perception occurs with what is called the structural description. This is generally where there is a verbal-like definition being applied, possibly in a thoughtful manner, rather than as an automatic template. This is illustrated via the notion of a ‘strait’, but other examples could be that of ‘mountain peak’, a ‘magnetic field’, an ‘electrical circuit’, a ‘defensive fielding position’ in the game of cricket, a ‘checkmate’ position within chess, or even the ‘point of origin’ within the field of fire investigation (see week 1). In engineering, for example, notions such as ‘arc’, ‘trajectory’ and ‘balance point’ could all be seen in terms of structural descriptions; that is, patterns that people may still ‘see’ even though there may be no specific object, point or pattern that allows feature analysis to occur. Although structural definitions often resemble concepts, please realise that a structural definition refers more to what you see. That is, when you stare at a strange thing and then work out what it is, you see it as a ‘chair’, not as a ‘piece of furniture’. Our perceptions are steered by our schemata, and we meet this notion again next week. Schemata represent the way in which knowledge is organised within the mind. It is impossible to say where structural descriptions stop and schemata start. The very notion of schemata will subsume the more basic elements of perception. For example, the notion of tree within your mind includes an awareness of a perceptual prototype (an idealised tree-like shape). In addition, you can note certain crucial features that discriminate trees from other things (for example, a central trunk, then branches which radiate out, etc). Also, there will be a structural definition of ‘tree’ within your mind (even though it will not be a verbal or conscious one), which you can apply to any object in front of you to decide if this thing is a tree or not. Finally, ‘tree’ will exist within your mind as a schema. That is, you have access to prior knowledge about the properties of trees: what they are composed of, what we can do with them, where they grow, what different forms they take, how they can get their roots into drains, etc. At this stage it may help you to realise that although we describe all of these mental processes almost as a sequence, and the diagram of the modal model (Figure 2-1, page 16) seems to indicate a sequence, please realise that the sequence is occurring within split seconds. As a general principle, mental activity takes place within fast time frames. Sometimes it may take almost a second to answer an unusual question (for example, ‘Does a tree have feathers?’), but the point to note here is that neural processes and basic perceptual reactions can be occurring within frames of around a quarter of a second. 17 From page 23 there is a long discussion about theories of attention. You can skim through this without being worried about understanding everything there. There has been a long debate within experimental psychology as to what happens to sensory inputs that do not appear to be directly attended towards. The modern view appears to be that we can and do monitor more than one input channel, fairly successfully, as many tasks in our lives simply do not need huge amounts of continuous attention. But this ability is far less effective when we focus on a central task which demands high levels of intense concentration (called ‘resourcelimited tasks’ in the textbook). The notion of automaticity is reviewed on page 25. The ability to transfer control of a skill to a more automatic level is one key aspect in skill development. To read these words, you are using automaticity within the domain of text processing. You no longer need to employ effort to decode individual letters and words. Instead, you have been able to shift control of reading to an ‘automatic pilot’. This has tremendous mental benefits. For one thing, you are now free to actually think as you read. Chapter 2 concludes with a good discussion about the short-term memory and the working memory. The term ‘short-term memory’ originates from the field of psychological testing (for example, IQ and brain-damage assessments) and was used to describe the amount of information that can be held for short periods in the absence of any additional processing. It was thought of as a store about the size of a telephone number. It was shown to be highly subject to interference effects. That is, as new material comes in, it bumps out the old. Within the past 20 years, the term short-term memory has generally been overtaken by the notion of working memory. This notion suggests that the system is far more active than just being a storage bay or ‘temporary holding room’ for information passing into and out of the long-term memory (as implied by the modal model; see Figure 2-1). One way to think about these issues is to use the term ‘short-term memory’ when it’s a question of seeing how much capacity can be held by the system (that is, how many digits can be recalled, etc). But when there are decisions to be made, or there is material to be mulled over, then you are activating your working-memory system. One interesting notion of the working-memory theory, that now appears soundly validated, is that the human mind has separate ‘stores’ for verbal and visual information, and that our mental work can be effectively distributed (that is, shared across) both of these stores. The chapter ends by listing seven principles as implications for instruction. Active learning opportunities 1 Your sensory memory The sensory memory is one that we are barely aware of, or perhaps we simply do not think of it as a separate store as such. One way of trying to ‘see’ this effect is to close your eyes, turn your head, open your eyes very briefly, then with eyes closed again, ‘look’ at the image that remains there. It will go within a second. (Although there may be a longer afterimage effect, especially if you were looking at a bright light). Notice how within that second you can ‘read’ some things, but not much. 18 If you wish to see how some of the classic experiments into visual iconic memory were actually done, there is a web site http://www.mtsu.edu/~sschmidt/Cognitive/sensory_store/sensory.html which allows you to download demonstration protocols using the QuickTime movie system. You can also download demonstrations on iconic memory and memory span from: http://courses.smsu.edu/tab293f/mem/mydemos.html 2 The short-term memory store (See Appendix 1) Try testing your friends on how many digits (numbers) they can hold within their short-term memory. Tell them that you are deliberately trying to overload their short-term memories. Since this is a test of mental capacity, you need to warn them that the goal is to deliberately overload them, to the point they fail. You simply prepare a list of random numbers. – Tell them how long the string will be on each trial, beginning with four. – You need to tell them how many digits are coming up, and you need to give them a cue as to when to pay attention. So you would say something like, ‘The next one is of four numbers. Ready? … 6 … 9 … 4 … 7’ You say them one at a time, about every half second. We normally allow about a half second per digit, but some people may want you to slow down or to speed up, and you should try to do what they ask on this point. Ask them to repeat back the numbers in the order they heard them. They can have more than one trial, as sometimes they may simply fail to pay attention to the numbers. If they get four correct, then tell them the next trial is at five numbers, and so on. They will begin to fail, but allow them a couple of fails per level before deciding to stop. Most adults should be able to recall around eight digits. But realise that some people may fare better with words than numbers. If people actually do better than eight then ask them how they do it. Do you suppose the reason is their large STM capacity, or are they using some specific tactic (a strategy) which enables them to cope better? 3 Engaging working memory For variations on short-term memory capacity tests, try repeating the above experiment, but: Ask them to ‘add one’ to their replies. That is, you say ‘3 … 7 … 9’, and they respond ‘4 … 8 … 10’. If they seem to cope with this, make it even harder by asking them to ‘subtract one’. Note how these tasks invoke operations at the level of the working memory; that is, ‘take something in, do something with it, hold it in the rehearsal buffer, locate the next input, do something with this, etc’. (See Appendix 1 at the back of this guide.) 19 4 Memory for words For yet another variation on short-term memory tests, try using a word list (see Appendix 1 at the back of this guide). This test hinges upon: showing friends the list, within the matrix array, and allowing friends to read it through, but not to revise it. They will to take about 90 seconds to read these. Then they have to write the words down on a blank page. Note that for word tests, the order of recall does not matter. In general, adults will do better on words than numbers, recalling perhaps nine or ten words. This may be because they can use strategies such as imagery and linking words together. The ability to use chunking and elaboration on the stimuli is often much better with words than numbers. However, if the words are actually not known words, then it is far harder to use such strategies (see the ‘Nonword test’ in Appendix 1 at the back of this guide). On tests for nonword memory, many people score around 4 or 5. Why is this? 5 Internet connections You will find that there are many Internet resources available with cognitive psychology, although many of them are not particularly useful. However, some sites are worth visiting now and in the future. The following two sites feature good information on memory strategies and mnemonics: http://www.exploratorium.edu/memory/index.html http://www.mindtools.com/ In searching with Google we located other sites, which covered much the same territory, and there is a danger of just going over the same material. However, if you find sites that you feel are especially valuable, or useful for students (e.g., students learning for examinations), then please let us know about this. 6 Cognitive load Professor John Sweller at the University of New South Wales in Australia has proposed a specific version of information-processing theory known as cognitive load theory (see page 30 of the text). An essay, written by one of Dr Sweller’s colleagues, as an introduction to this approach can be found at: http://education.arts.unsw.edu.au/CLT_NET_Aug_97.HTML Although this essay goes well beyond our immediate needs, it will become a valuable resource for future weeks, especially for thinking about educational implications. 7 Attention and mindfulness limits As human beings, we routinely attend to sensory inputs from several sources, but that, as a central task becomes more demanding, then our ability to monitor other things drops away. Note that this applies also to how experts can function; that is, a highly skilful person may appear to attend to two things at once. But when you are a novice, or learning something new, then you are in a resource-limited mode (see page 24), which means that you are likely to be 20 highly ‘mindful’ in order to survive. This can apply also when you are under stress, such as driving in bad traffic. Many car accidents are linked to drivers’ attention being diverted by listening to the car radio. When you are under such potentially stressful conditions, what steps can you take to safeguard your level of performance? What advice can we give to students about to be confronted with attention-demanding situations (such as reading, studying or memorising)? What advice can we give the novice driver? Indeed, there is an elementary principle at stake here: We can learn from what we pay attention towards, and we fail to learn when we are unable to attend. This is plainly a common sense principle, but it is quite amazing how often we may act in violation of this principle, both as learners and as teachers in a position to help others learn. Please recall a famous quotation from Voltaire: that one basic problem with common sense it that it was not very common. 21 Module 3 THE LONG-TERM MEMORY SYSTEM Reading Text reading Bruning et al, chapter 3. Questions to ponder 1 How does the information we receive get organised, stored and retrieved? 2 Why is it important for teachers to distinguish between declarative and procedural knowledge? 3 How does the perceptual system convert stimulus features into meaningful concepts? 4 How does the mind generate ideas out of words, such as in reading text? 5 What sort of mental organisation can we identify that operates at a level higher than a concept or a proposition? 6 Does the mind somehow store images as well as words? 22 Listing of key concepts long-term memory distinction between declarative and procedural knowledge distinction between semantic and episodic memory concepts, propositions and schemata represent declarative knowledge productions and scripts represent procedural knowledge three theories of concept learning (as defined rules, as fuzzy prototypes, and as probabilistic entities) propositions and the propositional network schemata and instantiation productions and the production system scripts dual coding theory spreading activation theory the ACT model connectionist models mental models (see reading notes below on this concept) Key points 1 The long-term memory (LTM) is the permanent repository of a lifetime of information. This is the type of memory that enables us to recognise things we have seen before, to recall the appropriate past experience, and to produce the correct action when we come across familiar situations. This type of memory system allows us to do things such as pass exams, tell jokes, drive cars and pay our bills on time. 2 Declarative knowledge refers to information stored mainly in verbal form (although it could be via imagery). Procedural knowledge refers to our knowledge of how to string a series of actions together to accomplish a goal. Whereas declarative refers to ‘knowing that’, procedural refers to ‘knowing how’. The distinction is very important, as the two types of knowledge serve different functions, and are acquired under different circumstances. 3 We also distinguish semantic memory (that is, the general case, for example, that dogs bark) from episodic memory that features personal experience (for example, that my dog barked last night). 4 There are three major theories about how we form concepts: Rule-based theory says that the mind learns to apply a set of definitive rules (for example, ‘that anything that one can sit on can be a called chair’). Prototype theory suggests that we learn concepts by virtue of closeness or similarity to certain typical features (for example, ‘it looks like a chair’). A third approach, probabilistic theory, is a variation on prototype theory, and suggests the mind adds together the number of features (for example, ‘its got enough characteristics to be a chair’). 23 5 At the next level up, the mind uses propositions to store information. Propositions are akin to ideas. A proposition represents the most basic unit of meaning, which can be judged true or false. Many sentences embody multiple propositions. As you assimilate propositions, you begin to store them within a network of associated ideas. 6 Schemata are regarded as the fundamental units, however, by which the mind is able to keep its LTM knowledge store in order. Although difficult to describe, we think of schemata as higher level organisational units which serve to provide meaning and context to our experiences. 7 Moving now to procedural knowledge, we regard productions as basic IF/THEN rules which are used to guide actions. If a certain condition is fulfilled, then an action ensues. For example, IF the computer screen freezes, THEN press the reset button. But note that IF/THEN sequences can develop into very long and complex productions that require years of learning and refining. This is, of course, the underpinning of expertise. 8 The notion of script is used to refer to procedures which we learn as coherent and recurring patterns. Thus, we all possess, within our heads, scripts for events such as going to a movie; departing from an aeroplane; going to church, mosque or temple etc. 9 There is solid evidence for the notion that the human brain possesses a non-verbal storage system. The imaginal system appears to hold information in the form of visual images, and also sounds. 10 Mental network theories suggest that information is held within the LTM in logical and hierarchical groupings, or nodes. Memories are accessed then through the process of spreading activation along neural links to the nodes. 11 Cognitive psychology originally assumed that mental operations occurred as a sequence or series of neural events, much like a computer executing a sequence of instructions. However, the more modern view is that the brain is set up for parallel mental processing. This is sometimes called the connectionist model; that is, the assumption that complex actions are in part derived from patterns of neural firings in which multiple lower-level decisions come together to form meaningful perceptions. Reading notes Chapter 3 of the text is attempting to give you an appreciation of the storage systems inherent within the LTM. Some writers refer to these aspects as the ‘architecture’ of the mind. It is important to realise that these notions are an extension of the words used to describe perceptual processes in week 2 (prototypes, feature analysis, structural descriptions), and so week 3 completes our initial review of how the mind is constructed. However, a basic and fundamental distinction to be made is between declarative and procedural knowledge (see page 37 of the text). These two knowledge types are acquired in different ways and are probably stored within different parts of the brain. Declarative knowledge represents more verbal aspects as indexed by our ability to talk about events, or describe how we might do something. We might be able to describe, for example, what we can do to save money. To the extent that we get it correct, then, we can be said to possess declarative knowledge. Procedural knowledge refers more to actions and events within sequences. This is the ‘how to do it’ knowledge, where the index of knowledge is the action itself. Do you know how to 24 change a tyre on a car? Most people would be able to access the correct declarative knowledge. But do they know how to do this in real life? The ACT model of long-term memory (see page 57) actually suggests that our skills begin as declarative verbal knowledge which then is used in real situations to develop into procedural skill. We should note that this basic distinction is crucial to educators, since the conditions of learning associated with declarative and procedural knowledge are very different. Pages 42ff there is a good discussion on how we learn concepts. Remember that concepts are the next level of complexity up from structural descriptions. Concepts can become abstract, such as ‘vehicle’, ‘furniture’, ‘the economy’ or ‘having a relationship’. Within teaching situations, we know that people acquire concepts through learning what is, and what is not, within the classification. This is called the juxtaposition of examples and non-examples. Over the past 40 years we assumed that concepts were best acquired through learning the boundaries of whatever concept we were trying to teach. This was what was called the classical theory of concept learning which the textbook refers to as ‘rule-governed theory’. Within the past few years, however, we have begun to appreciate that the mind very happily learns concepts also from typical features (as distinct from the boundary demarcations). The mind is not bothered by fuzziness. When we learn a concept such as furniture, it does not really matter if ‘carpet’ is included within the concept or not. What seems to happen is that the mind readily forms a central notion as a type of prototype of what ‘furniture’ means. Hence, things such as sofas and tables are generally seen as being central to this idea, but other things become less central (for example, vase, clock, radio (see table 3-1, page 45)). Following on from concepts, propositions are discussed on pages 47 and 48. The proposition is the lowest unit by which an assertion can be made. And it is possible to make many of them very quickly. For example, if you read that ‘Compared to green ones, red tomatoes are very easy to eat on hot summer nights’ then there are six clear propositions embedded within the one sentence (that is, some tomatoes are red, some are green etc) as well as some possible unclear ones (for example, is the sentence telling us that green tomatoes are hard to eat?). The point here is that propositions are abstracted by the brain out of the sentences. The sentences are the surface structure which serves to activate the propositions which represent deep structure. One classic finding in this area is that people simply do not store sentences within their brains. Instead, sentences are converted immediately to propositions, and we very quickly ‘forget’ the words used to convey those propositions. Also note that different people may abstract different propositions out of the same sentences. The notion of schemata is reviewed on pages 48 to 51. Read these pages carefully. To ‘understand’ literally means to use pre-existing schemata to interpret some new information. Try to think of schemata not as passive entities, but as things that the mind actually uses. Thus, when you read ‘Piggo’, the schema for piggy bank is quickly activated and then used. So as new propositions enter your encoding, they are immediately understood in relation to what you know about ‘piggy banks’. That is, the schema enables you to ‘go beyond the information given’ to make sense of those words. But this can only apply if you actually know what a piggy bank is at the outset. Many people will not have a pre-existing schema for piggy banks, and hence comprehension of this passage will be severely constrained. 25 You could perhaps think of schema as a high-level concept enabling you to classify things. But the phenomena we are reviewing at this stage within the textbook are more than this. It is preferable to think of schemas as having multiple facets. For example, even the notion of piggy bank seems to have at least 12 elemental propositions associated with it (see page 49). Being able to activate a schema enables you to organise your thinking in such a way as to make sense out of scores of minor propositions and allied concepts. For example, think of a schema for ‘arriving at airport in foreign country’. This, of course, involves a script (see page 53) since a sequence of events has to occur. However, having the appropriate schema in your head enables you to correctly interpret information that is given to you, and so navigate your way successfully through a very complex process, even though you have never been there before, and no-one helps you. Procedural knowledge, in the form of productions, is reviewed on pages 51 and 52. Although IF/THEN sequences may seem quite logical and simple to you, please appreciate that they are the basis of high-level expertise. That is, production systems take years of development, can become extremely complex, and hinge upon very subtle effects. Think of the high-level cognition and physical skill required to fly an aeroplane or drive a racing car. Such actions are readily described within terms of IF/THEN rules, but require many years of practice to achieve proficiency. Knowledge can also be stored within images. That is, we can literally recall how things ‘look’, where the memories appear not to be embedded within words, but in a way that somehow mimics some aspects or dimensions of the original perception. Thus, you might draw a picture of a house you lived in ten years ago, where you seem to be using imagery rather than words to make this drawing. Possibly the perspective in the drawing relates to how the house looked from your gate. If so, you are constructing an image in your mind. The material from pages 54 to 62 of the text can be skimmed through fairly quickly, as it tends to be concerned with highly theoretical notions of mental storage and long-term memory structures. However, educational implications of long-term memory concepts are reviewed on pages 62 and 63. Finally, to complete the notions of mental storage, we want to suggest another notion that is not reviewed within your textbook. Some psychologists have suggested that all of the information you have reviewed in this chapter comes together in the notion of a mental model. The idea of mental model is that people develop their own theories of how the world operates. A good example would lie in very complex notions such as ‘evolution’. It is possible to have many different notions of what this means, and the model built up by a 15year-old will be very different from the mental model possessed by a biological scientist. So is ‘evolution’ just a like another schema? Well, yes, in so far as it provides a way of encoding information and seeing relationships that might otherwise go undetected. But evolution is more than this: it represents a major way by which huge areas of knowledge can be assimilated into coherency; the theory of evolution informs us what happened in the past; it provides us with operating knowledge that resembles IF/THEN procedures; 26 it can incorporate graphic imagery or at least can be expressed via imagery; it tells us what is likely to happen in the future; and it specifies the existence of likely mechanisms and processes that are found within the ‘real world’. So, for example, reading about how deadly bacteria are being selectively bred as a result of antibiotic usage can be interpreted in terms of evolution; that is, a fundamental understanding of how life on earth develops. It is possible to suggest then that notions such as evolution represent a ‘model’ of how the world is constructed; that is, a model within the mind. Although it begins as a simple concept, it develops into a multifaceted schema. With increasing development, the notion becomes a major explanatory device, to the point at which we can suggest that the person has constructed a mental model that serves to organise and integrate a huge area of knowledge. In other possible examples, we might suggest that Mr Powell (remember from week 1) has developed a complex mental model for fires that you and I simply do not have. Also, your car mechanic has developed a mental model for how the car operates. That is, he/she does not just fix little bits, but possesses a complex notion of how all the various systems of the motor car work together. Please note that people may take years, even decades progressively accumulating, developing and refining their mental models. Active learning opportunities 1 Declarative and procedural knowledge The difference between declarative and procedural forms of knowledge is a crucial distinction within cognitive psychology, as the conditions for learning associated with each type of knowledge are very different. At this stage, can you say roughly how these conditions will be different? Procedural knowledge is shown most clearly within recurring activities. For example, a person working at the counter of a fast-food restaurant may use the same procedures in securing food orders from customers perhaps 500 times a working day. Most companies in service industries use carefully prescribed training programs to ensure that staff acquire sound procedures. When such companies pay respect to the abilities of their staff, in effect it is a tribute to the human capacity to master procedural routines. Not only are such routines necessary in maintaining the system, but employees can use them to override personality variations. For example, when handling an abusive customer, it is most sensible to smile and ask if he/she would like to order anything else. To appreciate such human capacities, we suggest you observe people working in areas such as fast-food counters. Watch their actions carefully, and begin to analyse what they are doing in terms of IF/THEN procedural knowledge. You will gain fresh insight into (and perhaps admiration for?) human skill acquisition principles. 2 Skills acquisition experiences Think back to those situations where you first learnt a new and complex skill. This could be learning to drive, or operate a difficult machine, or word processing, or skiing etc. Do you recall trying to use declarative knowledge to drive your actions. If so, note the very heavy 27 memory strain involved in this process. The present writer (GY) recalls one moment when teaching his 16-year-old daughter to drive. She was driving along and called out, ‘Hey Dad, tell me again, which pedal is the brake’. Concentrating hard on the road ahead, her attention was so mindful, she had forgotten what her feet were supposed to be doing. Can you recall similar situations when you are were acquiring new skills? What was the mind doing in these situations? 3 The issue of music and attention Concerning the problem of attention: have you ever come across people who claim to listen to music as they study? There is good evidence that certain types of pleasant music can help you relax, place you into a pleasant mood and perhaps focus on a task (ie ‘Mozart Effects’). But the effect is terribly overrated. Real problems emerge when you focus on the music rather than any other input material you are trying to learn. In terms of normal information processing, listening to music or the radio will naturally slow down your reaction times, sometimes by up to about a second. For example, it is a very bad practice to listen to the radio if you are driving in intense traffic. Traffic accidents are linked to listening to music. Overall, it is more important to control your attention by removing, attenuating or just stopping those things that cause distractions. The notion that music can somehow directly stimulate your brain to learn other things better is not truly validated (recall Mozart effect research, from Module 1), and people such as high-school students are better off not listening to music as they study. People often report that they listen to music as they study. It may be possible to review known material, by way of checking, as they listen to music. But, for most people, this is not an efficient or sensible way to focus on learning new material. 4 Imagery Concerning imagery: ask friends how many windows they have within their main room at home. Note how some people do this by closing their eyes and counting. If so, what exactly are they counting? It’s not the windows themselves, but their images of those windows. When we do this in class, we get some people who seem to close their eyes and even turn their heads as though to face their imaginary windows. We know from studies into this that people take longer when there are more windows to count. Other variations on the imagery tasks are as follows: Ask someone to take an imaginary walk around their house, and tell you what they see. Ask someone to close his/her eyes and imagine an object such as a flower. Now ask what colour it is. Most people can tell you what colour it is, since images of flowers invoke colours, even though you did not ask for this. It does not indicate this within the textbook, but there is some evidence that children are often able to ‘hang onto’ images in their heads for longer than adults. 5 Prototypes To try to tap into prototypes, ask a friend to draw a picture of a flower. (You can do this for any other common object, such as a chair, bird, car etc.) Note how such drawings often seem to represent typical features of objects, rather than being any one such example taken from the class of objects. 28 6 Eyewitnesses You have read how memory for actual sentences is remarkably poor, as people strive to encode what they hear into propositions that they understand within their minds. Note how this tendency can give rise to some level of confusion, as people may actively disagree on their memories for specific social interactions, and the nature of words that were uttered. Have you ever seen examples of this; that is, where two people witness the same event but then produce remarkably different interpretations of what took place, and what actual words were used? 7 Free association One practical way to try to illustrate the notion of spreading activation is to play word association games, either by yourself or with others. For example, ask a friend to free associate for a minute beginning on a word such as ‘frog’. One person said ‘frog … swamp … mud … unknown … dark … streets … buildings … lamps … fires … detective work’. The interesting point about such free associations is that each local link can be highly meaningful. Activation is spreading from one item (or node) to the next, in an orderly and understandable way. One cannot predict where the mind is going to go, but the process is not random. We can suggest that each word is serving as a node (see pages 63 to 66 of the text); that is, a point from which activation can spread onto the next. The fact that the human mind is able to play such association games so easily will help you to think of the mind as a network. Another notable point about such networks is that the associations are likely to have a basis in unique personal experiences, rather than any simple logical process. Mental networks are not logical, since they are not derived from sets of logical rules. For instance, in the above example, the person associated ‘dark’ onto ‘mud’. Why? Well, it was because when he looks into a mud puddle he does not know how deep it is, so to walk there would be a step into the unknown. Such linkages are not inherently logical, but within context of the person’s life and unique historical memories, they are psychologically meaningful. 8 Teaching strategies Please think about the issues of teaching concepts and schemata. Then examine the list we have constructed on these as possible strategies for teachers (see Appendix 2). 9 How people learn http://books.nap.edu/html/howpeople1/ Note the existence of the monograph, “How people learn” which was constructed by a group of distinguished cognitive psychologists, as a commissioned project for the National Research Council in the United States. The book is published on-line. Notably, there is an excellent chapter on expertise development (chapter 2), which will overlap directly with material we cover within this course and EDUC 5090. The book provides tight little summaries which can be read quickly, and dips into much contemporary cognitive research in a deliberately nontechnical manner. 29 MODULE 4 ENCODING PROCESSES Reading Text reading Bruning et al, chapter 4. Questions to ponder 1 Why do we need to develop encoding strategies? What role do they play and do they develop as we grow? 2 What is metacognition? How is an understanding of this idea valuable within the classroom? 3 How effectively can strategies be taught to people who do not appear to use them? Will such training be durable? 4 Can the mind be trained to learn better or faster? Should I purchase an expensive memory-training package? 5 How can teachers help students to retain their knowledge? What teaching strategies promote both initial encoding and then long-term retention? 30 Listing of key concepts encoding storage: retrieval rehearsal maintenance rehearsal elaborative rehearsal mediation imagery mnemonics keyword method advance organisers having schemata activated shallow vs deep processing levels distinctiveness of encoding elaboration metacognition (declarative, procedural and conditional knowledge elements) good strategy usage (components of this) strategy instruction inert knowledge Key points 1 The processes though which the mind attempts to place information into the long-term memory are referred to as encoding (that is, coding something into some other form). 2 A basic mechanism available for encoding is rehearsal. When this involves merely repeating as it comes in, the process is called maintenance rehearsal. But when it involves changing the input experience in some way then we call it elaborative rehearsal. 3 One general principle is that people will exhibit more effective memory recall when they use active encoding strategies at the moment of learning. This could be, for example, the deliberate use of imagery and mnemonics. 4 There are many different types of mnemonics. Some are widely known and used (for example, FACE for notes in music), but others are less obvious. For example, the ‘pegword’ method (see the textbook) can be used to rapidly learn lists of up to 10 familiar objects. 5 Different mnemonics are suited to different task demands. In the case of learning vocabulary items and foreign languages, the ‘keyword’ method has established an excellent research record. 6 Before people are asked to learn complex material they benefit from the provision of advance organisers; that is, short packages or summaries of information which help them to organise the incoming information. The psychological process that underlies this effect is now referred to as ‘schema activation’. 7 One way to increase attention towards complex material is to arrange for questions to be asked and answered. Questions can be used before, during and after formal lessons. 8 It is known that memory recall is greater when people encode in such a manner as to encourage deep processing. Although this is true, we often do not actually know what ‘deep processing’ is in any one learning situation. 9 Memorability is also tied to how distinctive material is at the time of encoding. That is, if a stimulus is made more difficult to discern, then it becomes more memorable. 10 One major way to enhance learning is to encourage people to elaborate on an input experience. In this context, elaboration means to relate a current stimulus to your prior knowledge. 31 11 Metacognition refers to thinking about thinking. Knowledge of thought processes can be seen as having declarative aspects and procedural aspects. A third component—that is, knowledge of where a specific strategy would work (for example, in knowing that the keyword method can be used to improve your vocabulary)—is called ‘conditional knowledge’. 12 Several psychologists have suggested that students within all learning contexts have the problem of managing their mental resources. They describe this ‘job’ in terms of the good strategy user construct. 13 A sizeable body of research suggests that strategies can be taught to students, but they do not readily generalise to situations beyond the original training. Generalisation is possible, but hinges upon several factors being in operation. Reading notes Chapter 4 of the text is really about how knowledge is acquired. It begins by describing a basic learning strategy we all use from time to time. When we need to hold a limited piece of information within the head for a short time frame we are inclined to use rehearsal; that is, simply repeating the information in a type of reiterating loop. Maintenance rehearsal is really holding the information active within the short-term memory where it stays there through active repetition. This is highly adaptive for some things, but as you know from Module 2, the STM system is fragile and limited. So another form of rehearsal, called elaborative rehearsal, is often used. Elaborative rehearsal can take different forms, but the term elaborative is used as it involves the person doing something other than repeating the stimulus, and typically involves things such as reorganising the input, dividing it into chunks, seeing a pattern, or using prior knowledge. The concept of imagery returns on page 68. Note how the emphasis now is on using imagery as a mnemonic tool. Mnemonics are discussed in some depth. The word mnemonic really refers to anything that the mind can do to help with memory recall. That is, mnemonics refers to a class of mental activities occurring at the encoding level. In order to recall something in the future, it is vital to do something in the present, and hence the notion of mnemonics implies a very definite goal orientation. We generally use the term mnemonics to refer to activities that assist people to learn things that would otherwise be an arbitrary listing. All commercial memory-training programs are based on teaching mnemonics, and as such they can have a certain validity, provided that realistic goals are set. However, you should note that there are no secrets in this field. All the information you need to try acquiring new mnemonic skills is readily available. For example, all of the techniques described from pages 69 to 74 in the text are thoroughly validated, and you can find a good deal more about memory tricks and strategies on the Internet pages cited earlier. Mnemonic skills are very useful and worthwhile. But do not gain the impression that acquiring a few memory tricks will suddenly improve your overall ability to do things such as read better, study more effectively, or begin to pass courses at a high level. Indeed, one possibly disappointing finding to emerge out of the research has been that when a person develops a memory skill in one area, it seems to have little impact on memory skills in a different area. (Also, you can read more on some of the research into exceptional memory 32 skills on pages 288 to 290 in the paper by Ericsson and Lehmann that is supplied within the Readings for EDUC 5090). But back to Bruning et al, note that from page 74 to 80 they offer a good but brief discussion about how the mind tackles more complex and meaningful information. They review several mechanisms that are known to come into play when we try to learn complex information, especially when it comes at us in a verbal form. We will benefit from any information that enables us to organise new information (that is, the notion of the advance organiser). We benefit from any information that enables us to recall what we already know, and this is expressed as schema activation. Another way to engage active learning is to try to answer questions about what we are learning. Questions appear to work in several ways, firstly to help us direct attention, and then to encourage us to integrate information across different sources. Questions help us to use our knowledge in new and active ways. We also benefit from anything that forces us to make an enhanced effort toward understanding the new information. This can, at times, come about through manipulating the distinctiveness of the stimuli (see page 78). Sometimes this can take the form of increasing the level of elaborative processing that an item may elicit (see page 79). This may entail ensuring that the new information links in well with old information, and that a rich supply of concrete and varied examples are embedded within the new information. Metacognition, within the context of strategy instruction, is discussed from pages 81 to 86. Metacognition is a difficult word to define, but it involves knowing about how the mind operates, and being able to use this knowledge to achieve a goal. In some situations it translates to a matter of monitoring to see how well you are doing, then using this information to alter your strategies. But it also covers aspects such as knowing what your memory span is likely to be (that is, a declarative aspect), knowing which strategy to use when learning a vocabulary list (that is, another declarative aspect), and actually being able to carry this strategy out (a procedural aspect). Knowing exactly when and where to use a specific strategy is another type of metacognitive knowledge we call conditional knowledge (that is, being aware of the conditions under which a strategy can work). One fascinating finding that keeps emerging within the research into metacognition is that people are often somewhat overconfident about their own skills or ability to learn. This appears true especially of young children and people who are fairly unfamiliar with an area. When you encounter a new knowledge domain area it is all too easy to underestimate how difficult it is to do well within the area. That is, with increasing experience and maturity, we become more accurate in assessments of our own competency levels. The concept of the good strategy user is one that has been promoted especially by noted psychologist, Michael Pressley. This position suggests that the key to adaptive learning involves two levels of self-control: 1 the cognitive level which involves strategies, knowledge, and metacognition, and 2 the emotional/motivational level which involves focusing attention, controlling distractions, maintaining your goals, and controlling destructive emotions such as anxiety and helplessness. 33 Research on strategy instruction is reviewed on pages 84 to 86 of the text. The authors advance five specific conclusions stemming from the major reviews of the field: 1 Strategies can be taught, and most students do benefit from strategy instruction. 2 Strategy instruction most clearly helps younger and lower-achieving students. 3 The most effective programs aim to teach several different strategies. 4 It is important to help students acquire metacognitive (that is, conditional) knowledge. 5 Generalisation of strategy usage is far slower than we might have hoped for. Quickly taught strategies will be quickly abandoned. Steps must be taken to encourage generalisation. Instructional implications are reviewed from pages 86 to 90. These revolve around several key matters including: stimulating deep processing such as in helping students to activate schemata and use their prior knowledge; directly teaching strategies as means of attacking problems; stimulating conditional knowledge via means such as checklists that students can use to help them become more organised and strategic within their learning; and prompting and encouraging students to reflect upon how the knowledge and strategies they learn in one context can be applied within another. Active learning opportunities 1 Web resources Take some more time to revisit the web pages we noted in week 2, especially the pages devoted to memory and memory improvement. Note how these sites feature mnemonics a good deal. You can place mnemonics into a search engine and then obtain many hundreds of hits. Note how there are many different types of mnemonics, and different writers may use slightly different versions of the same one. For example, Bruning et al describe the rhyming pegword. Note that in relation to ‘Nine is a pine’ (see page 70), the writer of this Study guide sometimes uses this pegword for a memory aid in shopping but says ‘Nine is wine’. Do you think these variations are important? 2 Special mnemonics Note that mnemonics are often developed for learning specific topics. For example, a mathematics student may use a mnemonic to recall the value of pi. A wonderful collection of medical ones can be now found at http://www.medicalmnemonics.com/. Medical students are expected to memorise large amounts of knowledge, and so they often devise highly creative memory tricks to assist them. For example, the set of cranial bones are called occipital, parietal, frontal, temporal, ethmoid and sphenoid. To learn these as a list, the student may say ‘Old people from Texas eat spiders’ as a first letter mnemonic. Such mnemonics are very useful, but they hinge upon the 34 student actually knowing all these bones to begin with; that is, mnemonics are useful but they cannot substitute for meaningful learning acquisition. Another interesting medical site is http://www.md4sure.com/resources.asp, but this one seems less amenable to non-medical people than the other site. 3 Encoding as a slow process Have you ever wondered why your brain seems to fail sometimes when you want to learn but just cannot? One possible factor is that of overload. Consider the following. As a means of inputting data, the normal lecturing and speaking pace is about 150 words per minute or 30 propositions per minute. This may exceed human information-processing levels by a factor of perhaps 500%. This is not intended as a joke. It has been known for about 90 years that people listening to a lecture normally will retain up to around 20% of the actual lecture information within their LTM. If every item entering LTM requires at least 10 seconds processing time, then we might learn only about six propositions per minute, not 30. There is even a strange paradox (called the Feynman effect after the noted physicist) that lectures that are ‘easy’ to listen to are more enjoyable, but may have lower retention levels. This is because the audience does not need to concentrate strongly on the content information. The Feynman effect gives rise to a cognitive illusion, in that you believe you learn more from the lecture because you liked it, whereas in objective terms you retain less. There is also another well-known effect in the literature called the Dr Fox effect, where a lecturer presents material well, or appears to do so, even though the content is inherently nonsensical and full of contradictions. Dr Fox, however, still receives glowing evaluations from his audience. What do we make of all this? Well, it tells us that merely attending a lecture is only the starting point for actual learning. No one claims that listening to another person is, within itself, an effective learning experience. However, there are many reasons why lecturing and other forms of didactic teaching still are very valuable teaching tools. From our perspective we note that time assumes a vital role in any situation where learning is meant to occur. Most of us (and we include teachers in this) have only poor notions of how long it takes someone to master a new skill, or acquire a new piece of knowledge. We fail to appreciate how slow the knowledge-acquisition process really is, and we are fooled by the ease by which a learner might regurgitate back a few trite points that he or she has just heard. We fail to realise that novices require extended practice opportunities without pressure or harassment. 4 Personal encoding experiences Many people report upon personal encoding tendencies which may intrude upon interactions. For example, people who are conscious about their weight may judge everyone they meet in terms of how overweight they are; people who are especially religious may continually stress morals; and people who are obsessed with money may always be judging others by their wealth. It is possible to suggest that these are subtle schemata operating. Can you identify any such tendencies within your own life adjustments? 35 The author of this Study guide experienced the strange effect of becoming gutter-schematic several years ago when he had to renew the rain gutters on his house. He undertook a good deal of research into the problem and discovered there are many types of gutters, varying in aspects such as materials, contour shape, size, strength and colour. Reading all this information and doing the actual handiwork turned him into a type of gutter expert. Following on from this experience, he found that every time he ventured close to any house he began analysing the gutters on the roof. This carried on for six months before he was finally and thankfully able to stop. Other people report similar experiences in areas such as furniture, carpeting, and looking at your host’s crockery. That is, once you acquire detailed knowledge, this becomes an unwitting, and often unwanted, basis for reacting to the world. This can be especially true when it invokes implicit evaluations. Such experiences are tied in with the notion of automaticity, which is covered in depth in EDUC 5090. 5 Metacognition and memory limits If someone tells you that they can recall about eight numbers, they are displaying metacognition. That is, they know, in advance, limits of the STM. This is one aspect of metacognitive declarative knowledge. If you have access to children, then try asking them how many numbers they can hold in their STM. In general, it is not until around 8 years will they give accurate answers. The author of this Study guide tested metacognition for memory span in preschoolers several years ago, and was impressed with the optimistic responses of some children. For example ‘About a hundred’, ‘Thirty’, or ‘Mummy remembers it all, so I don’t have to’. In the study, we demonstrated to one young man how he could actually remember about four numbers. So we asked him again and he continued to say ‘12’. When we pressured the point he simply snapped back ‘OK, I didn’t do it then, but I can still do it’. If you have access to children, try asking them such questions. One method is to show an array of picture cards, and keep adding a card at a time, asking the child to stop when they think they would forget any if the cards were covered by a cloth. Our experience was that most young children fail to know where to stop. 6 Teaching strategies How should we teach for memory improvement and for enhanced metacognition? Please think about these issues, then examine the list of teaching strategies we have constructed: ‘helping with memory’ and ‘helping with metacognition’ (see Appendix 3). 36 37 Module 5 RETRIEVAL PROCESSES Text reading Bruning et al, chapter 5. Reading 1 Yates, G and Chandler, M (1994). ‘Prior knowledge and how it influences classroom learning: what does the research tell us?’ Set: Research Information for Teachers, issue 2, item 6, pages 1-8. Questions to ponder 1 What is the distinction between recall and recognition? 2 Getting students to answer questions at the time of learning seems to be a most effective means of helping them retain information better. Why? 3 It seems that we can often recall things much better when we are prompted in certain ways. This is called encoding specificity. What is meant by such a strange term? 4 What factors cause errors in memory recall? Should we trust eyewitnesses to events? Listing of key concepts retrieval encoding specificity generation effect elaborative interrogation effect state-dependent learning recall and recognition: the threshold hypothesis the dual process model reconstruction in memory flashbulb memories relearning massed practice and distributed practice 38 Key points 1 The principle of encoding specificity says that memory performance is greater the extent to which the conditions under which recall is expected match conditions present at the time of the original learning. 2 The generation effect refers to fact that recall will be enhanced when people are induced to generate an active response to an input at the time of learning. 3 One highly effective way to make meaningful material more memorable is to get students to answer ‘why’ questions at the time of learning. This is referred to as the elaborative interrogation effect. 4 A specific case of encoding specificity is called state-dependent learning. This refers to the match between psychological states at the time of encoding and retrieval. This match has been shown to account for memory effects. 5 People are generally able to recognise far more information than they are able to recall. 6 The older theory was that recall meant that memories had to have strength to overcome a threshold, and that this threshold was set lower in the case of recognition performances. The newer theory is that the recall and recognition operate in essentially the same way, but that recall simply entails a more thorough (that is, deeper) memory search through the associative networks of the mind. 7 Modern psychology stresses the constructive nature of much memory work. That is, unwittingly we make errors in our recall protocols, and often these are related to idealised or schematised notions. Often our minds will ‘fill in the gaps’, and we do not realise that this natural process is occurring. 8 In general terms, the research indicates that eyewitness testimony, as may occur in law courts, is remarkably subject to biases. 9 It is possible for people to exhibit significant levels of relearning. Relearning means to learn material for the second time, after appearing to forget the initial learning. Although hard to demonstrate through experiments, it is possible that relearning effects are very strong in real life contexts. 11 In general, massed practice will result in far less retention of information over time that distributed or spaced practice sessions. Reading notes This is a short but significant chapter in that it reviews a good deal of what has been discovered about long-term retention effects. The most obvious point to make is that longterm retention depends a good deal upon exactly how the original information was learnt. Hence, there is a good deal of overlapping content between this chapter and the previous one on encoding processes. The term encoding specificity is a rather complex notion for what is essentially a simple effect. When we try to remember things we benefit from having access to anything that appears linked to events that were present at the time of originally laying the memory down. In commonsense language, we may suggest that the mind can be ‘triggered’ by anything that is linked to the original learning context. 39 At times this phenomena can take strange forms, such as the notion that students’ memory in exams may be slightly better if they are tested within the same room as they did the original learning (a context effect), or that memories we have within certain psychological states can be somewhat specific to that state. There are several studies, for example, showing mood effects in memory. If people learn material within a happy frame of mind, for example, their memories of this material is better when they are tested in a happy mood again. Such effects are known to be implicated in clinical depression; that is, when someone is depressed, their memories of unhappy events seems to become more available to the mind. But such state dependent memory may be a subtle rather than a strong effect. The notion, for example, of totally ‘forgetting’ what you did while drunk is a false one. The encoding specificity hypothesis does not suggest that recall across diverse contexts is impossible, only that we need to recognise the fact that the context in which you try to recall information does have an active role in helping the mind to access memory. In essence, people benefit strongly from any stimuli available that can trigger their minds. Recall is partially dependent upon being provided with good retrieval cues. On page 94 there is a citation to a significant notion: elaborative interrogation. Once again, please do not get fooled by the language. This is one of the most effective strategies we know about to help people to learn meaningful material. The requirement is for people to answer ‘why’ questions. This should take place at the time of original learning; that is, it is technically an encoding strategy. The need to answer ‘why’ questions at the time of learning ensures that the degree of effort needed increases. But, more specifically, it forces the learner to activate prior knowledge. How might this work? Suppose you tell someone that ‘Japan imports iron ore from Australia’. Then you ask ‘why’. The student generates a reason for this fact, which is consistent with his or her prior knowledge. (For example, ‘Because Japan has industries which need raw materials, and there are huge ore deposits in Western Australia’). When it comes to a recall test, the mind is more able to access data which was associated with a greater spread of activation at the time of learning. The fact that Japan imports ore from Australia can be accessed by a greater range of retrieval cues. That is, instead of just remembering a single proposition, the knowledge is tied into a network involving multiple propositions, any one of which can be used as a basis for a possible retrieval cue. That is the above knowledge may be accessed from any of the following questions: ‘What does Australia export?’, ‘Does Japan need to import anything?’, ‘Where does iron ore come from?’, ‘What is the relationship between Western Australia and Tokyo?’, and ‘What sort of industries does Japan rely upon?’ That is, each one of these now contains a viable retrieval cue that would be far less effective than if the teacher had not asked the question ‘why’ in the first place. Several published studies now indicate that high ability students do tend to use interrogative elaboration on a spontaneous basis. That is, they may automatically ask themselves ‘why’ when they receive new information. The findings from laboratory studies now show that that this is a strategy that can be easily taught, even though it will work only if the ‘why’ question can actually be answered in a meaningful way. This strategy is of considerable use in helping people to use their knowledge most effectively. 40 The distinction between recall and recognition is discussed in depth from pages 97 to 100. In our undergraduate classes we often demonstrate that after seeing a list of 30 words for a minute, most people can recall perhaps 10 of them. But if we ask them to simply pick out those 30 words from a larger list, then people get about 20 correct. So how many did they really remember, 10 or 20? Well, it just depends on how we define remembering at that moment. The older theory of recognition suggested that it is easier to recognise an item than recall it as the threshold of memory strength was set lower. To perform the recognition, you basically had to exert less effort, and the material could be located, even though the trace still did not have enough strength to trigger a full recall. This older theory has now been replaced by mental network theory. This theory suggests that recall is difficult, not because the memory is weak, but because it may not be appropriately cued. On the other hand, a test of recognition provides you with an abundance of cues that may trigger the appropriate response. From the network perspective, both recall and recognition are essentially the same mental process, but the stimuli used to trigger the memories are different. That is, the relative accessibility of information is the issue, not the strength of the memory trace as such. On pages 100 to 104 of the text, the classic work on memory distortions is briefly cited. The topic of eyewitness reliability emerges from this work and has been handled in depth by experts such as Ceci and Bruck (1995). For our purpose, we need to note that massive changes are typically found between material people read or witness, and their recall protocols. The existence of such changes can be described in terms such as loss of detail, abbreviations, loss of sequencing, simplifications and magnifications. In modern research we tend to emphasise how constructed memories are changed by the schemata activated at the time of learning and by the nature of available retrieval cues at moment of recall. We can note the interesting research finding that people are, in general, not able to detect their memory distortions. Hence, confidence in recall is not any guide to its accuracy. In general, people are overly confident in their ability to recall accurately (see page 105), and, indeed, humans tend to be a little overly confident in many of their actual competencies and abilities. The topic of relearning is handled on page 105. This is an especially interesting phenomenon in that it occurs without people realising what is happening. Relearning refers to the advantage that occurs when learning something for the second time. The original learning appears to be unavailable. OK, but even though this appears ‘forgotten’, in fact the second learning occurs very rapidly. We are aware of several cases in which people appear to have forgotten a language they learnt as a child, but then relearned it within a few days. It is possible that the relearning phenomenon is far more general than is obvious, since it occurs outside of awareness. Your ability to ‘pick up’ new material may be substantially a function of how much old material is locked away within the mind, even though this material is not consciously available. Various educational implications of these findings are discussed from pages 122 to 124. Active learning opportunities By this stage of the course you have accomplished a good deal. You have worked through 110 pages of fairly intense cognitive psychology, learning a relatively new, interesting, but nevertheless difficult language. At times your enjoyment of the material and the insights it 41 brings will have been muted by the need to just move on, and the need to keep thinking about your own expertise project. By way of consolidation, we have included two essays into the materials at this point. These two essays (see points 1 and 2 below) should contain little by way of new information, but each will serve as a device to help you organise your information. As you read each one, think about how it covers material you know about already. 1 Undergraduate module We use an essay in undergraduate educational psychology courses at the time of introducing information-processing theory. It covers basic principles and can be used as an overview of the field, suitable for introductory purposes (see appendix 5). 2 Article on prior knowledge The Yates and Chandler article (Reading 1) attempts to provide a coherent synthesis of a large body of findings in the area of prior knowledge effects. We trust you will find this material interesting and pertinent. Prior knowledge theory uses schema theory in describing memory effects. This article was written for teachers who would have minimal background within psychology. Pay special attention to the notion of the Matthew effect which has massive educational implications. 3 Why does abstract language fail? In the Yates and Chandler article (Reading 1), note the material on ‘Making text incomprehensible’ (page 6). Use your new knowledge in cognitive psychology to say why the abstract statement fails to achieve any significant learning, whereas the listing of examples becomes far more user-friendly. Note also how this illustrates rule-example-rule principles. 4 Examples of retrieval problems Here are five illustrative problems: 1 What is the 12th letter of the alphabet? 2 Is there a four-letter word in the English language ending in -eny? 3 What relationship to you is your mother’s brothers’ wife’s daughter? 4 Are there more words in English that start with R or have R as the third letter? 5 What were you doing on the morning of 25 September last year? Be totally sure on this. Problem 1 In the first problem you really do know the 12th letter, but to identify it you may have to dump the alphabet out of the file where it is stored as a linear sequence, and then start to count the products of this dump. The task takes a few moments, simply because the question does not relate to how the alphabet is normally stored. Hence, direct retrieval is impossible, although you immediately know that all the information is actually in your head, and you have sufficient metacognitive capacity to carry through some basic steps to produce an outcome. A variation on this same problem is to ask people to recite the alphabet backwards. People can do this, but its highly mindful at first. 42 Problem 2 The second problem seems to have the following effect: about half the people we try it on pronounce -eny as thought it was -enny, and then fail to realise that the 4th letter of the alphabet actually solves the matter. The problem illustrates another example of a possible encoding/retrieval mismatch, as most simply will people read (that is, encode) the stimulus in a way that makes retrieval difficult. Problem 3 The relationship problem is one of overload in that three steps are involved. These problems can be made harder simply by increasing the number of steps to exceed natural WM limits. When under such pressure one active step is to convert the premises to a different representation by writing it down. This relieves considerable pressure on the WM, and hence retrieval becomes more accurate and easier. Problem 4 Most people will say the R appears more at beginning of English words than in the number three spot, but this would not be correct. The effect here is called availability; that is, when you think of words with R, then those that begin with R are simply more accessible or available in the mind than those that have R in a different spot. The same also applies to V and K. One variation on this problem is to ask would more words in English have seven letters and end in -ing, or have seven letters and have N as the second to last letter? Obviously, there have to be more with N as the second to last letter, but many people are fooled by the availability of the -ing word ending. Please realise that we have a principle operating (or heuristic) here: Other things being equal, human decision making will be biased in favour of stimuli that are more currently available to the mind, in contrast to other information which is only potentially available. Problem 5 To rediscover and be totally sure of what you were doing on the morning of 25 September, you may need to begin an active memory search in which you orient through a number of checks such as what day of the week, where is my diary, which city was I in, who was I with, did anything different occur, and so on. That is, rather than rely on your current memory contents, you need to take steps to obtain more information and so secure the retrieval onto a reality basis. The process can involve use of external aids such as diaries, computer records, bank statements or even other people’s accounts. However, you have to keep track of the information and be cautious of premature closure, such as in deciding you were at work, when in fact you may have been sick that day. It seems strange that you need to undertake such steps, since it is your own life. But the mind simply does not lay down memories in such a way as to definitely answer that given question. This is yet another example of a mismatch between encoding tendencies and retrieval demands. That is, you had not forgotten what you were doing on the 25 September, but as you lived that day you simply did not keep saying to yourself ‘I must remember this in case they ask me later’. 5 Using photographs as retrieval cues You can try the following personal experiment. Do you know of any photos stored away in which you are a member of a past group. This could be from your school days or past work. Try to remember as many people as you can that should be present in that photo, by writing names down. Now locate the photo and see if there are people there who you did not recall initially, but whose name can now be recalled by looking at the photograph. What has happened is that you have tried to recall under two conditions, where the photo provides a much stronger retrieval cue than memory alone. This is called cued recall; that is, the person’s name was in your brain all the time, but it took a strong cue to bring it into consciousness. Note that looking at the photo is not a recognition test, as we are not asking if this person was in the group or not. 43 MODULE 6 PROBLEM SOLVING Text reading Bruning et al, generally chapter 8, but detailed reading of pages 162 to 180. Questions to ponder 1 Which problem-solving strategies would be of most benefit to students? 2 Does problem solving occur in an instant flash, or can we describe the process as a series of steps? 3 As a teacher, how can you assist a student to be adaptable in transferring their problemsolving skills across situations? 4 What does it mean to be an expert in an area? Do experts behave and think differently from novices? 5 How does one develop high levels of skill and expertise? Does high achievement depend upon early talent? 6 Does the act of solving problems help us to learn? (Discussion on this found later within this week’s materials, but answer the question now, and then see if your answer matches the information given). 44 Listing of key concepts problems as well defined or ill defined trial and error Dewey’s steps: Gestalt approach functional fixedness identifying the problem overcoming obstacles to problem identification representing the problem the problem space initial state, goal state and operators recognising deep structures selection of strategies algorithms heuristics means-end analysis strategy implementation evaluation of solutions domain knowledge general knowledge seven characteristics of expertise deliberate practice talent facilitating transfer of problem-solving skills Key points 1 In human life it is important to distinguish well-defined problems (which have clear solutions) from ill-defined problems (which have no universally agreed-upon solutions), and to help our students grapple with both types. 2 The first psychologists to systematically investigate problem solving were associationists (for example, Thorndike) who stressed the nature of ‘trial and error’. That is, they saw problem solving as a graduated process of learning from feedback. 3 However, John Dewey challenged associationist views by suggesting that we solve problems by working through a series of mental steps. And another approach, called Gestalt psychology, stressed the role of sudden perceptions, or insight, as the base process involved. 4 It is often difficult to identify exactly where a problem is located. That is, problems need to be defined carefully, and sometimes this does not occur, or people may not give themselves sufficient time to really assimilate the dimensions of the problem. 5 The next step is that solutions may be hard to arrive at if the problem is not adequately represented. This means to categorise its elements, to define the goal state, and be able to articulate the crucial operators (rules) and constraints that bear on the context. 6 Several general problem-solving strategies have been described, including trial and error, means-end analysis, working forwards and working backwards. 7 Once strategies are selected, they are implemented. Experts seem to implement their strategies with far less mindful fuss than do novices. 8 Even after problems appear solved, the learner needs to engage processes of evaluation to fully learn from the experience. 9 As we interact with the world, we develop significant levels of domain-specific knowledge, and this is crucial in any real-life problem-solving context. 45 10 The study of expertise across many different domains has converged on several central notions, including the awareness that human expertise develops through deliberate practice over large slabs of time, perhaps 10 years. 11 Across many domains, it has been possible to characterise expertise in terms of seven key attributes. 12 The research into how high-achieving individuals develop their expertise over time indicates that early talent markers have little if any predictive validity. 13 People appear to be able to transfer their problem-solving skills across situations by mechanisms such as automation, analogies, studying worked examples and identifying deep structures. Reading notes Our interest as educators is certainly in the whole chapter of Bruning et al. But for study purposes at this point, we suggest you read for depth up to page 180. This covers a large area; that is, the psychology of human problem solving. Note how the material from pages 171 and following is directly relevant to the course project. Let’s begin with a little history (page 162ff). The early associationist psychologists knew that problem solving in humans could take place very quickly, but they saw this as the result of a significant history of individual learning. People could apply what they learnt beforehand within a new situation. Thus, the speed of problem solving was a type of illusion where the long history of trial and error was not taken into account. What is interesting today is that this thinking also underlies what is now known as expertise; that is, when people acquire significant levels of expertise they do not need to exert much effort in problem solving, as they rely very much on recognition processes. Strangely enough, this position was espoused by associationists a hundred year ago. However, within today’s psychology, there is far less emphasis on trial and error as the vehicle for either acquiring knowledge or attacking problems. The next significant development within this field was the series of steps proposed by John Dewey (see page 163). This step sequence has been widely used within psychology for 90 years, and of course it forms the natural basis for the review in the textbook, pages 164 to 171.. The steps have certain validity, yes, but we cannot see them as occurring within real time frames. That is, one does not spend a half second identifying a problem, a half second representing the problem, a second selecting a strategy and so on. The steps’ major use is as a means of: reviewing what we know about the mental processes that have to be involved as we solve problems, and analysing why some people do not or cannot find adequate solutions. Lets pick up on some of the themes that you come across within the reading. The Gestalt approach is cited on page 163. This position has problem solving as the result of seeing events in a new way. That is, the processes of perceptual reorganisation and pattern recognition are seen as critical. One reason why we, at times, fail to solve problems is that we become too fixed and habitual in the manner in which we perceive the world and the objects within it. Hence, when circumstances change, we fail to see the unusual uses certain objects might serve. This is called functional fixedness (see page 164). 46 From pages 164 to 166 there is an excellent discussion of problem identification; that is, the initial facet of recognising that a problem actually exists. This facet is not obvious, as indeed when we even talk of ‘problem solving’ the assumption normally is that the problems are known ones. But there is an earlier stage in which people need to invest some time assimilating the fact that a problem actually does exist, and what exactly is its true nature. Is it a problem that demands attention, or not? Should I spend some time just identifying the parameters of the problem, or can I assume that I already know where the trouble lies? Virtually all the research into this issue tells us that good problem solvers are very cautious about identifying problems. They take time to think about the problem before it arrives; they plan ahead, do not dish out quick impulsive responses, and may even identify the problem in strangely divergent ways that others had not thought about. Once the nature of the problem has been identified, the next step is representation. This refers to how the mind plays out the problem within its mental space. One notable way that many students approach school-type problems is to change the given representations to a form that is easier to process. The classic example of this is shown in the monk problem on page 167. By converting a verbal representation to a graphical representation, the solution suddenly becomes available. One excellent strategy found in many good problem solvers is to vary the problem representations in as many ways as is possible; for example, verbally, pictorially, graphically, algebraically, as objects or models to move around, as icons on a computer screen, using CAD etc. Many individuals, for example, feel the need to solve problems using diagrams, sketches, figures, or just writing words down using paper and pencil. If you look at what they are doing, it is often a case of converting information from one input (for example, someone else’s words) to another representation (that is, a form that they can deal with and respond towards far more comfortably). Once they have represented the problem in a form they cope with, people need to recognise or discover the fundamental operators (see page 168) that apply within that knowledge domain. This is another way of saying that people have to respect the rules of what is possible, and what is not possible. For example, someone who assumes they can solve the problem of paying the rent by gambling demonstrates a very poor grasp on fundamental operators in their life. From page 168 to 170 there is a good discussion on the next two steps: strategy selection and implementation. Note the term algorithm. This is most useful term, used in many areas. It refers to rules and procedures that serve specific functions very effectively. For example, you acquired algorithms at a young age which enable you to do computational mathematics relatively quickly and error-free. Hence, as you read a problem in mathematics, you may represent it in your mind as a ‘ratio’ problem, and as such activate algorithms for calculating proportions and fractions. The next construct is that of heuristic. Whereas algorithms generate precise answers, heuristics refers to generalised tendencies. We met the heuristic of availability in the reading notes last week (tendency to pick things that are more immediately available in your consciousness). But in this week’s text reading, the two heuristics cited are trial and error and means-end thinking. To these we will add working forwards and working backwards. 47 Trial and error is a tactic people use when they have no other known way of proceeding. This may occur because the situation is new, or perhaps they have simply run out of good ideas. Means-end analysis can often be a very effective strategy. It implies fixing upon what an end state (goal) should look like. Then progress towards this is checked regularly, step by step. Working forwards is very similar to this, but the implication is that the person knows already what the goal state is like, and so the need for continuous monitoring is not present; that is, the person appears to ‘plough on’ without actually stopping to check on anything. Working backwards is an especially interesting strategy, especially when used in combination with other tactics. Backwards working means to look at the goal state and change it to a state that is far easier to reach. For example, many problems in mathematics can be solved by working from the finishing point. In one sense this is similar to problem identification step we discussed earlier; that is, if a person is able to redefine the problem in a creative way, then divergent solutions come more easily into view. From page 172ff the topic of expertise is reviewed. We have met this notion many times before, and a professional level readings on this topic are supplied with this course, and set for Week 11. The text reading for this current week serves as an excellent overview. The topic of expertise is now one of the most thoroughly researched topics within modern psychology, and a number of striking findings have emerged. One of the major themes that you will see emerging is the role of content knowledge; that is, in order to become an expert, a person accumulates an incredible level of knowledge which he or she uses to advantage in any problem-solving context. Rather than rely on raw strategies such as means-end, or brainstorming, or hypothesis testing, experts call upon their knowledge base using mainly recognition processes to identify complex patterns that are seldom detected by novices. This can give rise to an interesting paradox: experts typically will solve problems within their domains, not by activating general problem-solving strategies at all. Instead, it is the characteristic of the novice to have to activate effective problem-solving strategies. Why? Because they cannot ‘see’ what is painfully obvious to the more knowledgeable expert. The section, as far as we need to take it, reviews some of the data on deliberate practice and transfer of training. One surprising finding to emerge from the deliberate practice research was that indices of initial talent within specific domains have some validity to begin with, but then have little meaning once children begin to accumulate levels of practice. We used to believe that children have to have ‘talent’ to succeed within an area of achievement. But it now has been found, across many studies, that deliberate practice rapidly outweighs talent. Many high achievers emerge from the ranks of children who score around average on early talent measures. Active learning opportunities 1 Watch expertise on film By way of direct enrichment however, we can suggest something rather different. Try to have a look at specific examples of expertise on film, video or TV. You can look at many sports performances in terms of what the participants are actually doing. Many of these could be highly practised routines involving little variation. Such examples might be in gymnastics, ice-skating and diving. In other sports the participants are responding to stimuli that are more dynamic and so continuous adjustments are being made to musculature. Developments in 48 camera work have provided remarkable views of, for example, cricket balls coming straight down the pitch, and close-ups of racing car drivers correcting a dangerous skid. It is instructive to video record such examples, and then replay the action frame by frame on a home video, paying especial attention to what the expert is actually doing, where his/her eyes are directed, what the hands are doing etc. This activity can be very productive in viewing championship tennis, where it is possible to note, via slow motion, the actual point at which the player begins to adjust limbs for the return volley. While on the topic of films, we recommend certain commercial films available on video. Searching for Bobby Fischer is an American film made in the mid 1990s starring the noted actor Ben Kingsley. Although based on a true story, the plot is a bit sentimental. But the film has excellent shots of junior chess championships. From a psychology view, the film shows training conditions, apprenticeship factors, social modelling, and highlevel pattern-recognition skills. Another high quality film depicting exceptional abilities is Rain Man starring Dustin Hoffman. Although a fictional story, the character was based on the idiot savant syndrome; that is, expertise in narrow areas found in some disabled individuals. Mr Hoffman studied several such individuals before acting the role. The psychologist Michael Howe (1990) has made a special study of the savant syndrome. Another most remarkable film, beautifully made and strongly recommended for what it shows about the development of skills, is Hiliary and Jackie, based on the life of cellist Jaqueline Du Pre. 2 Expertise in yourself: two key aspects By way of reflection, we want to alert you to two key aspects about expertise. Firstly, as you know from your project, it is not a rarefied phenomenon. It is found everywhere in human behaviour; that is, within any context where people engage repeatedly in activities over extended periods of time. To be assimilating these pages, for example, implies you have acquired considerable expertise in the act of reading, perhaps over decades. You possibly have personal expertise, for example, in controlling a car, and almost certainly in your most treasured life pursuit, be it painting, writing poetry, gardening, making money, managing your children, or teaching. Secondly, a subtle point is that it is misleading to assume that expertise is a status one somehow acquires. The definitions of ‘novice’ and ‘expert’ are convenient tags for purposes of experimental design. In their book, Surpassing ourselves, Bereiter and Scardamalia (1993) are at pains to stress that within cognitive psychology, expertise is viewed as a process of mind rather than a social status. Expertise is evident once an individual has mastered basic elements such that attention (that is, the WM) is no longer focused upon immediate requirements. Attention can then be reinvested into higher level problem-solving activities based upon confidence of successful task mastery. 3 Toward an understanding of automaticity We often say that experts use automaticity. However, this is not a closing down of consciousness, but a shift of attention to a higher level. Experts frequently exhibit highly 49 mindful activities involving planning, organisation and self-monitoring (see page 297 in Ericsson and Lehman, Readings Booklet for EDUC 5090). Certainly, experts can lose insight into the difficulty and complexity of basic skill acquisition, as automaticity takes over and makes task performance ‘easy’. But this does not imply mindlessness per se, only a shift in mental focus. Interestingly, the emergence of skill automaticity can easily make the experts into terrible teachers for that particular skill. Can you say why? 4 Why do we behave stupidly? Why do smart people often act so stupidly? This is a fascinating issue that goes far beyond this Study Guide, and indeed is the subject of a recent book, “Why smart people can be so stupid”, edited by Sternberg (2003). There are many answers as to why people frequently perform in ways that are dumb, in relation to their actual competencies. You will meet other explanations later on, (eg, misconceptions, in Week 12). And those of you who move onto another topic in this University award called “Problem Solving” will encounter many more explanations. However one possible explanation (of perhaps a dozen offered by cognitive scientists) is the simple observation that people frequently experience overload in their mental adjustments. The parent slaps his child for a minor indiscretion. The teacher loses her temper with the class. The driving instructor shouts at the student for exceeding 60 kph. The student throws a tantrum when he is given more homework to do. The priest finds himself being rude to someone who came for help. You take a silly risk on the road. You regret buying those expensive sheets as soon as you get home from shopping. And so on. In such cases the person may reflect “Why was I so stupid?” It is possible that many people fail to perform at an optimal level due to their minds being at a point of overload. Indeed, sometimes overload will trigger automatic or mindless responding, which appears to be the case of a procedural knowledge element overriding a controllable response which ‘should’ have been guided by more adaptively appropriate declarative knowledge. Some factors implicated in overload are cited in the essay attached to this Study Guide, Appendix 5. But for purposes of this present chapter, try to think of times when overload has occurred in your mind, thus preventing sensible problem solving, and even ‘dumb’ behaviour. 5 Encouraging transfer of training A deceptively simple question: what are the major variables likely to determine the extent to which a skill taught in situation A will be evident in a potential transfer context which we call situation B? Perhaps one of the most difficult educational goals is transfer of training. The enemy of transfer is inert knowledge. Knowledge is said to be inert if it is potentially available but fails to be activated at the appropriate time. This may be evident in the failure to use existing knowledge to solve problems even though the solution appears ‘obvious’ once known. All of us plainly know more than is often apparent, and the cry ‘Why didn’t I think of that. I knew that, but just didn’t think about it’ appears to be a very common human experience. One fear expressed by many educators is that some forms of classroom teaching may encourage inert knowledge, useful in answering questions on paper and pencil tests, but 50 failing to generalise to real life (or authentic) applications. We know of science teachers who tell amusing stories of how their students may learn of a basic principle in laboratory classes, but fail to realise it applies at home or in the ‘real world’ as well. Note how even the vocabulary of many school-taught subjects is very different from the vocabulary used in everyday life, so this in itself represents an obstacle. The inert knowledge factor is not a major problem in its own right, once we begin to analyse it in terms of insufficient instructional provisions. For example, there could be failure to identify schematic elements, failure to instate an IF/THEN production system, or failure to develop skill beyond stage 1 of the automation process. It is important to realise that much human learning is context-specific (recall this discussion from week 1). So rather than see inert knowledge as a ‘major issue’, try seeing it as the natural state of how the human mind works. That is, transfer is something that has to be learnt, rather than assuming it will occur spontaneously and automatically. All this points to the need to broaden teaching and training environments to include the range of cues and task demands that can be expected to occur within more natural contexts, rather than rely on purely verbal forms of teaching and assessment. And of course, it may point to the need to devote more time and practice to specific topics within the curriculum. Training strategies such as elaboration and question asking assist in making the original learning more accessible and retrievable across a greater range of situations. From this perspective, inert knowledge is seen as a natural, understandable and surmountable problem of instruction and application, and not as a human failing or an indictment of an educational system. Now, following on from this discussion, try to list things teachers can do to assist with transfer effects. Once you have devised such a list, compare it with one we prepared on the same problem (see Appendix 6). 6 An strange problem: Do we really learn through problem solving? In recent years, a chorus of educators worldwide have espoused a pedagogy generally referred to as problem-solving approaches to education. This has reached a high point in terms of the tertiary level problem-based curriculum movement which has attracted a good deal of attention in fields such as business and medical training, and is often known by its mnemonic, PBL. While not questioning the value of this approach, we note the existence of an assumption very often conveyed by promoters and advocates within this area: That people learn effectively through solving problems. Such an assertion implies that effective learning is a direct result of successfully solving a problem; that is, that the process of problem solving itself creates new and deep learning. But within scientific cognitive psychology, such an assertion has never been adequately validated, and is seen as seductive, but potentially misleading. Within an information-processing view, problem solving is the natural result of being able to apply what has been learnt, rather than the factor that accounts for the learning itself. By no means is this a trivial or a semantic point. Professor John Sweller (University of New South Wales) has documented the fact that some students within high-school mathematics lessons may solve some specific problems but still be well deficient in terms of the schema acquisition process. That is, the existence of a successful resolution to one problem does not in itself guarantee successful and generalisable learning. After all, why should it? Dr Sweller has found that students benefit most from a systematic exploration of conditions that induce direct schema learning, such as carefully reviewing worked examples of completed problems, or being in a position to focus adequate attention upon crucial elements. 51 But getting students to work on problems before necessary schemata are secured in place has been shown to be an ineffective use of instructional time. Dr Sweller has tied his findings to the theory of cognitive load. Asking people to learn as they solve problems places high to excessive levels of cognitive strain onto the mind. Hence, as a direct consequence they fail to learn to maximum advantage. On the other hand, when educators take steps to teach schemata more directly, rather than giving people ‘problems’ and expecting them to discern underlying patterns unaided, then learning effects (especially as defined in cost/benefit terms) will surface most strongly. This argument does not ridicule the problem-based curriculum, it merely provides a soundly validated analysis of when and how learning takes place most effectively. We would hesitate to say that problem-based learning involves ‘bad pedagogy’, but it does worry cognitive scientists that PBL can be driven by a faulty notion of learning processes. It is more likely that the value of the problem-solving approaches to education, including the problem-based learning movement, lies more in the following two aspects: 1 high levels of motivation and engagement; that is, students are provided with strong reasons to learn, and 2 high levels of self-efficacy (confidence) in ability to solve significant and realistic problems within a credible professional context. Since these are valuable educational goals themselves, the additional assertion that problemsolving activities automatically create significant learning effects appears unnecessary and mistaken. Indeed, Dr Sweller’s own work suggests that students’ schemata benefit from a careful analysis of past case studies, and these methods are easily brought into problem-based curricula. So, to recap on this strange issue: The notion that one learns through solving problems invokes a flawed assumption. Learning is learning. When one engages in problem solving it is likely to be based on prior learning. But to assume that one activity produces another however may be untrue and even false if the act of solving problems overloads the mind (high cognitive load) and thus prevents adequate learning from taking place. Many of us might solve problems without fully understanding what it is that ‘worked’, or what the underlying schemata and fundamental operators actually were at the time. This problem can be made far worse when solutions to problems appear as known or defined options (such as in multiple choice test), and hence response selections rather than generated declarative knowledge are all that is required. If you can read these pages, and think “Hey, this is all beginning to make some sense”, then be assured you are beginning to think like a cognitive psychologist. Poor you… there can be no turning back. THE SPECIAL TOPICS From this point on, we feel you have covered the basic elements of cognitive learning theory, and we move onto additional or supplementary information, under what we call “Special topics”. These can be treated, for course purposes, more as options in that we do not necessarily expect all students to be equally interested in each of the topics. We have prepared four such Special Topics: (a) Self-beliefs, (b) Knowledge-related beliefs, (c) Cognitive approaches in teaching science, and (d) Cognitive principles in ICT. 52 53 SPECIAL TOPIC 1 BELIEFS ABOUT THE SELF Reading Text reading Bruning et al, chapter 6. Questions to ponder 1 We all agree that confidence is an important aspect to consider in human learning, but how can we incorporate this into the theory of cognitive learning? 2 Do people actually think about the causes of their own actions? 3 Do teachers signal cues to students about what they think of the students’ abilities? 4 Should teachers strive to give students a sense of personal autonomy? 5 Is it possible to misapply rewards? Listing of key concepts outcome expectancies self-efficacy enactive learning vicarious learning modelling goal setting cognitive modelling self-regulation attributions attributional dimensions attributional style attributional retraining intrinsic motivation autonomy vs external control classroom-controlling conditions sense of personal control evaluation via norms or objective criteria the over-reinforcement effect Key points 1 Self-efficacy refers to an individual’s confidence when faced with a real situation. It is a personal judgement which mobilises motivation and effort in the face of challenge. 54 2 Self-efficacy is built up through actual experience and positive feedback. But it is also influenced by observing good models, by accepting persuasion attempts, and by taking factors such as physiology and mood into account. 3 One significant means through which people learn complex skills is through cognitive modelling; that is, where words and actions are correlated within a model’s performance. 4 It is inevitable that students arrive at personal explanations or attributions for virtually everything that occurs to them. 5 Attributions have motivating properties. The attributional pattern a person uses to account for the past determines how that person reacts to the future. 6 It is possible to identify poor, unhealthy attributional tendencies and seek to modify these through attributional retraining procedures. 7 A large body of data indicates that students are highly sensitive to classroom conditions that signal levels of control in operation. In general, motivational conditions are healthiest when teachers de-emphasise external controls and allow students a sense of autonomy. 8 Indeed it is possible to overuse rewards within the classroom, and, under some conditions, this can lead to reductions in intrinsic motivation levels. Reading notes This week we move into the area of motivational psychology; that is, the study of conditions under which students are most likely to exert high levels of goal-directed effort. What has become obvious over past 25 years of research is that motivational psychology has moved to a very strong cognitive orientation. The dynamics of effort exertion are now seen to implicate the thought processes of the individual learner. When you attempt to understand things, for example, not only do you have concepts and schemata being activated, but also you have thoughts and feelings about what you are doing, and why you are doing it. Chapter 6 of the text reviews the major advances in this area. The first thing to notice is that the chapter says little about the notion of self-esteem. This is because self-esteem is not especially relevant in most learning situations. People can learn material perfectly well whether they have low or high self-esteem. The notion of self-esteem is frequently overrated, and most psychologists today would view self-esteem more as the end result of successful experiences rather than a determinant of that success. What has been discovered over past years is that confidence, as a human attribute, is not well articulated as an overall trait. Instead, it is better seen as a task-specific measure. This is why Bandura coined a new term, self-efficacy, to refer to judgements people make as they size up the dimensions of a real task put before them. In this sense, self-efficacy is not something to carry around, or something one somehow possesses. Instead, it is typically expressed as ‘Yes, I can do this’. But this is a personal assessment based on realistic indices rather than nonspecific impressions. To arrive at a self-efficacy assessment probably takes a second or so of a person’s time. But the outcome of this process then determines the level of motivation a person is prepared to exert on this task. After reviewing Bandura’s social learning approach, the chapter goes on to attribution theory (pages 119 to 126). The underlying notion here is that all of us make personal attributions, virtually all the time, which serve to explain things as they occur within our experience. A 55 well-documented finding is that if students begin to blame their learning problems on their lack of ability, then motivational problems follow quickly. The studies cited between pages 123 and 125 lead into what is called learned helplessness. This topic will be looked at again next week. It has been found that many students react poorly to failures, whether real or anticipated. With careful training, however, it is possible to realign attributional patterns in the direction of more adaptive patterns. The chapter then moves on to discuss the topic of intrinsic motivation from the perspective of self-determination theory (Deci). This view stresses the role of student perceptions as mediators of motivated effort. The basic notion is that students are more strongly motivated when they feel more in control of their own learning. It has been shown that students do rate (that is, encode) the basic climate of their school and classrooms in accordance with the extent to which they feel their autonomy is either supported or thwarted. The final fascinating issue taken up in the chapter concerns the misuse of rewards. Rewards can be administered as blatant controlling gestures, for example. One recurring finding has been that when rewards are over-used and then withdrawn, students may express lower levels of intrinsic motivation than previously expressed. Such findings do not suggest that rewards should not be used. It’s a question of how rewards are applied, what they mean to the student within the specific context. There are other studies (not cited within the chapter) that indicate that social rewards can stimulate intrinsic motives well, especially when such rewards are for clear goals set at a high, attainable and non-competitive level. Active learning opportunities 1 Self-esteem measures If you want to see what a reasonable self-esteem test looks like, have a look at the Queendom website. You can do this test on the net and get a score on self-esteem level, in contrast to others who have done this test. Note how the questions deal with generalised notions. This is perhaps why self-esteem is not particularly important within most realistic learning situations. Within the psychology domain, there is lot to offer on the queendom main site: http://www.queendom.com/. However, we do suggest that you do not take some of the tests there too seriously, as this site is really oriented to general interests and entertainment rather than serious academic study. 2 Self-efficacy web site Professor Frank Pajares has contributed a huge and very rich web site devoted exclusively to the construct of self-efficacy. This includes several hundred links to his own work and that of others. However, be warned that it is possible to spend hours exploring this site. Of special note is that some links are to the actual questionnaires used within some of the classic studies in this area. The URL is http://www.emory.edu/EDUCATION/mfp/self-efficacy.html 56 3 Self-efficacy as a calibrated assessment One easily misunderstood aspect of self-efficacy is that it represents a judgement whereby a person matches an envisaged task to his or her perceived capabilities. Hence, it is possible to identify a kind of ‘false self-efficacy’ whereby a person makes a declaration such as ‘I can do Task X’, but without genuinely apprehending what Task X actually is. Such declarations may take the form of impulsive responding, carelessness, inflated aggrandisement or simply lying. Within the published research, this factor of inflated ratings is controlled by making people accountable for the judgements they are asked to make. That is, they are asked to judge their ability to do Task X, but know that they might be asked to do Task X within a few minutes. Hence, self-efficacy has to be seen as a personal calibration. Set this too low and you will undersell yourself, underestimate your worth, pull back from challenge and fail to develop skills. Low self-efficacy is a recipe for low levels of learning, performance and development. But set self-efficacy too high, and there is danger of over-exertion, overload, inadequate performance levels and unfavourable cost/benefit ratios. Further, if this occurs within a public area, there is the added threat of possible shame following on from social ridicule. So should your self-efficacy level be set at exactly the same level as your actual competencies? The answer is ‘No’. Bandura has been most explicit on this point. Psychological development and effort exertion hinges in part upon feeling free to set selfefficacy levels slightly ahead of actual levels. This provides a level of motivation and inducement. Since levels of effort have to be activated to enable performance to rise to this new level, successful learning can now be attributed to personal factors. In essence, this model views psychological development in terms of iterative cycles of self-efficacy assessments, goal setting, effort exertion, skill development, and revised self-efficacy assessments. This is one possible mechanism for Matthew effects. 4 Are there gender differences in self-efficacy? Do boys and girls differ on measures of self-efficacy? The evidence is mixed in that such sexdifference effects simply are not found universally. However, when they do appear it is more often the case that boys will claim slightly greater levels of self-efficacy than girls. This effect seems to hinge upon what method of self-efficacy assessment is used. Girls and boys appear equally confident when asked to rate themselves in relation to others, to their position in class, or to their overall skill level. But it does seem to be the case that girls are more accurate in predicting what they cannot do. Several studies now suggest that boys tend to be overly confident even when they perform poorly. On the other hand, girls tend to know their limits with greater accuracy, and are less inclined to over-estimate their competency levels. The meanings behind these effects are unknown. It is too easy to over-emphasise these findings, which are subtle statistical trends rather than clear-cut differences. One possibility is that boys’ overall sense of competency is, in relative terms, less influenced by immediate setbacks. In such a scenario, there is no need to reduce confidence levels just because ‘It didn’t work the first time’. 57 SPECIAL TOPIC 2 BELIEFS ABOUT KNOWLEDGE Reading Text reading Bruning et al, chapter 7. Questions to ponder 1 Can people significantly improve their level of intelligence, or is this a relatively fixed trait? 2 If a person was to fair poorly in a learning situation, what cognitions are most likely to determine appropriate remedial activities? 3 Is it better to focus on displaying existing performances, or on developing new skills? 4 Is the world describable in terms of ‘black-and-white’ clear-cut issues? 5 Has doing this course made you think any differently about what it means to learn and acquire knowledge? Specifically, what changes have you experienced? 6 Has you attitude to students altered? Listing of key concepts implicit theories incremental theory entity theory learning vs performance goals learned helplessness epistemological beliefs dualism vs relativism simple knowledge certain knowledge fixed ability quick learning stages of reflective judgement hope 58 Key points 1 Inevitably, we hold and defend sets of beliefs concerning the nature of human learning, achievement, intelligence and knowledge. These beliefs may be not formalised, but exist on a tacit, unspoken or implicit level. 2 We use the term entity theorist to describe people who tend to express belief in the fixed nature of human intelligence. On the other hand, incremental theorists are people who retain faith in the inherently changeable aspects of human nature and intelligence. 3 Entity theorists are inclined to approach most learning situations harbouring an underlying performance goal. This is also called ego-orientation. 4 Incremental theorists approach learning situations in a different frame of mind. They stress learning goals (such as, ‘What will I learn from this experience?’). This is also known as task-involvement. 5 Learned helplessness represents the extreme case where entity theorists fail and then withdraw effort because of their activated self-beliefs. 6 Epistemological beliefs concern the way in which students think about the nature of knowledge in the abstract. 7 A well-known distinction is made between dualism (‘black-and-white thinking’) and relativism. As people move through university life, there is a general tendency towards relativism. 8 Schommer has postulated four dimensions of beliefs: 9 simple knowledge certain knowledge fixed ability quick learning Kitchener and King have described seven steps in the development of reflective judgement. 10 Although epistemological beliefs do change as people mature, it is not clear just how educators ought to actively try to change such beliefs at the level of the individual. There is some suggestive evidence that thinking skills can be shaped by the type of training experienced within university studies. Reading notes The text chapter for this week continues on from last week, and there is much overlap in content and ideas. The focus of this chapter, however, is on the role of generalised beliefs, rather than self-oriented beliefs, as was the concern last week. Carol Dweck (see pp 139 to 144) has contributed a major program of research into the consequences of harbouring implicit theories about intelligence. Belief in fixed intelligence is fine, provided one continues to succeed. But if you are failing and believe that the task you are on is a fair reflection of your true ability, then you are faced with a type of existential problem: how can you increase your competency if you have run out of ability? People who think this way are ‘entity theorists’, and they tend to perform well when they know they can succeed. But the onset of obstacles suggests that the limits of their capabilities are coming in fast, and hence the disposition to keep maintain exertion is seriously impaired. 59 It is appropriate to think of these dimensions in terms of what the mind is doing. Two students sitting next to each other within a difficult mathematics test could be activating totally divergent mental frames. One child (entity theorist) could be interpreting the questions as valid indices of her competency level, and experiencing huge levels of helplessness, knowing that she cannot escape, that she will get a low score, and that her score will tell her and others that she is a poor student. Her friend next door (incremental theorist) knows that she cannot do questions 7, 9, and 10. But so what? They are difficult but interesting problems, and she will find out how to do them next week. She may get a low score on this test, but this has no implications for her capabilities or intelligence. In fact, its rather good to get such challenging questions as one learns from them and increases the personal knowledge base. Epistemological beliefs are then handled from page 145 to the end of the chapter. Where does knowledge come from? And what is the relationship between your knowledge and the world? What is the nature of knowledge? Can it be acquired through amassing scores of facts? Questions such as these tap into the epistemological belief system. Within psychology there is a level of debate as to what are the appropriate dimensions to measure in this area, and most of us feel that the area has yet to ‘gel’ in terms of generating securely validated research findings. Nevertheless, some interesting work has been carried out. Pioneering work was done by Perry who found that as students progressed through their undergraduate degrees increasingly they tended to endorse views representing a relativistic worldview. This work was done mainly through interviews, but Marlene Schommer developed a questionnaire scale which she was able to use to monitor four dimensions of belief and show some interesting developmental patterns. The work by Kitchener and King is interesting, but some of the subtle points between the seven levels are very hard to appreciate, and we suggest you skim read some of this material. From pages 152 to 155, Bruning et al cite several studies which indicate that the content of your education influences epistemological beliefs and some reasoning skills. For example, graduate students from medicine and psychology seem to acquire greater skills in reasoning in terms of statistical probabilities. Schommer found that science graduates apparently reduced their level of belief in certain knowledge. These studies imply a connection between education and changing beliefs. The chapter finishes with a brief discussion about the possibility of teachers holding different beliefs about learning and knowledge. Exactly how such beliefs may impact upon how they treat their students is a topic as yet not well researched. The assumption would be that teachers actually teach in a manner consistent with their stated epistemological views. Several studies indicate consistencies between such views and how lessons are planned. Active learning opportunities 1 Dweck’s research programe Over the past 20 years, Carol Dweck, her colleagues and students, have published many spectacular studies into the dynamics of implicit theories of intelligence. Her work is summarised in a highly readable book Self-theories: their role in motivation, personality, and development (Dweck, 2000). Her work reveals that Western society is overly concerned with displays of ability, where ability is defined within terms of unalterable and stable personal qualities. This world view gives arise to the following four conclusions about the development of what she refers to as mastery-oriented qualities such as engaging effort, persisting, overcoming obstacles: 60 1 Students with high ability are more likely to display mastery-oriented qualities. 2 Success in school directly fosters mastery-oriented qualities. 3 Praising a student’s intelligence encourages master-oriented qualities. 4 Students’ confidence in their intelligence is the key to mastery-oriented qualities. Do you agree with any of these statements? Well, Dr Dweck’s research indicates each one of these notions embodies a falsehood; that is, the opposite of what her empirical data actually indicate. 2 New directions in the psychology of hope and optimism Dr Snyder’s research into generalised hope is briefly cited on pages 155 and 156. Another stimulating research program is evident in the work into optimism and pessimism. Several research groups around the world are concerned with these problems, and many fascinating findings have emerged. Of especial note is the work of Martin Seligman who has published many books in this area, but his early paperback Learned optimism (1990) remains an all-time classic. There is much spectacular work carried out in this area, and this is not the place to attempt to review it. However, we might note that Seligman has convened a group of leading researchers who are currently engaged in a push for what they refer to as positive psychology. These are people who are among the most creative psychologists working today. The group uses Dr Seligman’s web site at: http://www.psych.upenn.edu/seligman/ Also, if you place ‘Martin Seligman’ into a search engine, you will find many links to his work in the public domain. Among the first products of this group was the January 2000 issue of the leading journal American Psychologist, which was edited by Dr Seligman and Dr Csiksentmihaly (available per your online library access). 3 A point of orientation: what is cognitive psychology? It has been our experience that students, when encountering cognitive psychology for perhaps the first time, are a little overwhelmed by the arrangement of topics that define the world of cognitive psychology. In one tutorial discussion a student said to us that she felt very perplexed. One week it was heavy on schemata, retrieval strategies and encoding specificity. But then the next week it was the nature and dynamics of human motivation and optimism. The simple answer is that cognitive psychology has a very broad sweep, and within any training course we have try to survey as much of the field as is realistic. So is there any intrinsic connection between topics such LTM organisation and human hope? One answer is that the notion of schemata underlies both. When we are optimistic, or depressed, we are using selective cognitive filters that enable us to structure psychological space within manageable parameters. As an extreme example, when we are depressed we have black thoughts appearing with a clear level of automaticity. Under depression we have immediate access to negative sentiments and will interpret the world using schemata that reflect the permanent and pervasive attributes of negative experiences. For example, you are depressed and the car breaks down. Naturally, you see that this event is a part of the pervasive and continuing pattern of negative experiences that continue to assail you. You know this because the mind accesses other negative events and these are chunked together forming a category of prominent negative events that can be recalled, rehearsed and ruminated over. Under such prominence it is hard to maintain positive thoughts. 61 SPECIAL TOPIC 3 COGNITIVE APPROACHES TO TEACHING SCIENCE Reading Text reading Bruning et al, chapter 15. Questions to ponder 1 What is the level of basic scientific knowledge within our community? What roadblocks to scientific literacy can be identified? 2 Why do people rigidly retain ideas that are wrong? 3 What does a teacher have to do to encourage conceptual change? 4 Does knowledge of the scientific processes (that is, data, theories, experiments etc) come naturally, or does it have to be taught? 5 What factors predict how well students perform on tests of science achievement? Listing of key concepts naive beliefs: misconceptions intuitive physics conceptual change conditions (dissatisfaction, intelligibility, plausibility, and fruitfulness) weak restructuring radical restructuring exposing misconceptions creating conflict supporting new information distinguishing theory from data commonsense vs critical views of theory obstacles to scientific literacy extended experimentation the determinants of achievement 62 Key points 1 Even within groups of educated people the level of misconceptions in basic scientific knowledge is surprisingly high. To solve scientific problems, most people use their own naive conceptions. 2 There is debate within the field as to whether faulty beliefs are fragmentary and incomplete, or represent a coherent and integrated worldview. 3 Whichever view is correct, it is apparent that people adhere to their faulty beliefs with tenacity. Thus, science educators are faced with the challenge of conceptual change. 4 To achieve conceptual change, misconceptions need to be articulated, challenged, and students need much support in adopting the new position. 5 Young children and unsophisticated adults often fail to distinguish theory from data. Primitive (commonsense) notions of ‘theory’ are that it as a collection of facts based on solid data. The more sophisticated (critical) view of theory is that it a humanly constructed approximation of reality that needs continual data support. 6 It has been widely established that many roadblocks to scientific literacy exist, including lack of knowledge, lack of teacher training, inadequate reading strategies and insufficient time allocated to the curriculum. Reading notes From our biased perspective we feel that the science curriculum is often given insufficient attention within our schools. Many students exit from the educational system with a poor grasp of scientific concepts and of the processes involved in carrying though procedures in a scientific manner. We tend to subscribe to the view that science is not the continuing accumulation of facts to be memorised, but a means of generating: a rational and coherent view of the world, and procedures that help us, and the rest of humanity, make balanced and sensible decisions. In short, helping students learn the rules and procedures of the scientific method is itself a higher level educational goal; that is, over and above whatever content has to be assimilated. Chapter 15 of the text opens with a review of the well-documented findings that many people hold notions of natural phenomena that are at variance with recognised scientific principles. That is, rather than having ‘no idea’, it is often the case that people do have ideas that are wrong. Misconceptions have been located within many knowledge areas besides the ones cited in the textbook. They seem to stem from natural observations and from other people. Wrong ideas and false beliefs appear to abound within the commonsense world, and our students bring these notions into the classroom. The classic studies in this area, however, tell us that students do not or cannot shed their old ideas. Not only does faulty knowledge never correct itself, but it often stays there and can become a base point for additional misconceptions. Just telling students they are wrong is not an adequate pedagogical position, although it is where one has to start. The chapter reviews several methods that can be used to try to undermine faulty knowledge. This involves schema acquisition and refinement. Note how it is crucial to support and reinforce students as they change their views (see page 346). 63 Note how it is really not feasible to teach science from a perspective of ‘Here are the facts. Now, learn them to get ready for the test’. Instead, it is vital to get students to: be active in seeing relationships across different phenomena use theories to generate hypotheses carry out the procedures that yield that data discuss the findings in the light of the results Such teaching can be loosely called the inquiry-based method (see page 350). But this should never be interpreted as meaning that students are somehow free to learn what they want to, or have to ‘discover’ everything for themselves. In fact, the science curriculum embodies necessarily high levels of direct teaching. The use of procedures such as experimentation and discussion are often highly structured and goaldriven. To put it bluntly, it is a waste of time and effort for students to engage in inquiry methods if they are looking at the wrong things, using the wrong measures, not implementing appropriate experimental controls, not reading the data properly, or failing to interpret the data correctly. Beginning on page 348, Bruning et al discuss some of the work of noted science educator Deanna Kuhn, whose work was also cited in chapter 7. She has documented that a large percentage of the population has difficulty identifying the nature of the data needed to support a theory. This applies even to theories that people purport to believe in themselves. Very often, people will confuse theory and data. People typically fail to adjust their personal theories even in the face of disconfirming data. Reading some of her adult studies tends to leave one a little pessimistic about the possibilities for achieving a rational society. But then such data indicate how vital it is to teach the scientific method to people while still at school. In one fascinating study, Roth (see pages 351 to 352) found that only a minority of middleschool students changed their misconceptions through reading disconfirming materials. She identified several strategies that students use to cope, including one remarkable strategy she labelled ‘overreliance on prior knowledge’. To this point within this course, we have tended to stress how prior knowledge helps current learning. But prior knowledge can also be a source of misconception. And in her study Roth found some students were able to activate what has been called the “know-it-all effect”. A know-it-all effect is when students fail to engage with materials on the assumption that they know it already. Have you ever been faced with something you have read too quickly? Perhaps you failed to pick up a subtle point because you thought you knew all about it anyway? If so, that would be a natural know-it-all effect. Kuhn’s other studies in helping young teens learn the scientific methods are cited on page 356. Students successfully did learn scientific procedures for decision making, but we must stress that such learning took several weeks, and seems best to involve extended experimentations. The notion of extended experimentations means to keep working on the same problems over a long period, rather than trying to cover a broad range of topics. As a generalisation, successful teaching in this area often involves continuing to work with the same group of students on very similar problems over several weeks and in this way the depth of students’ knowledge increases along with their intrinsic motivation. Science teaching can 64 be a great and rewarding experience for teachers and students alike if sufficient time is devoted to concept development. The notion of instructional time emerges in the research cited on page 357 to 358. This project was one of several carried out within the United States concerned with the determinants of achievement and educational productivity. This entailed collecting data on student test scores, and correlating such data against sets of predictive variables such as ratings on home backgrounds, parents income levels, the type of school attended etc. This is difficult research to do in that it hinges upon getting hold of appropriate measures, and engaging in massive number crunching to reveal that worthwhile patterns. The specific study cited was based on a survey of over 5000 students at middle-school and early high-school levels. The data can then be expressed as a type of picture called a path analysis in which factors are seen to flow on from each other in a coherent manner. Note that the largest influence on achievement scores turned out to be past achievement (path coefficient of 0.73, a massive effect; see Figure 15-5, page 357). But other influences are also significant. Instructional time had a coefficient of 0.32—that is, around one half the power of past attainment—but this is still a remarkably strong effect. Finally, instructional quality was seen to have a low effect (0.1). But in this type of research there are always doubts as to whether this type of variable really was measured adequately by the questionnaires used. The fact that it was done on 5000 students means that the measures used have to be easily applied. Note how this type of research leads to interesting relationships being uncovered. For example, the students’ home background was seen to impact upon past achievement, but not current achievement. That is, the variable was already accounted for on the earlier test, so did not figure again on the test of current achievement. Home effects are explained by the fact that this factor has already entered the equation at an earlier point in time. Such path models are highly valuable devices in uncovering statistical relationships, but they hinge upon having adequate data in the first place. Also the mechanics of actually carrying out the analysis are very complex. Active learning opportunities 1 Misconceptions It is virtually impossible to reflect upon the nature of any misconceptions that you yourself hold, until you actually encounter information that seems to directly contradict what you believe. Has this experience occurred to you recently? Perhaps it has even occurred during the tenure of this course. For example, several weeks ago we made the assertion, in these reading notes, that self-esteem has virtually no relationship with the ability to learn. Our experience with in-house tutorial groups is that whenever we make such a statement, a number of students will say they simply disagree with us. 65 When this occurs we use conceptual change methods by querying whether or not this statement is, or is not, a matter for personal opinion. Should you hold personal opinions that seem to fit your life experiences to date, but which are at variance with other data sources? One common fallacy even in well-educated people is the person–who argument. This is the use of statements such as ‘I know a person who … ‘ as data for a general statement about the world or humanity. For example, ‘Smoking does not kill people as I know a 95-year-old man who smokes like a chimney’, ‘You do not need a university education as lots of successful people left school before graduating’, and ‘Anyone can win on poker machines. My friend Jonnie went in with $10 last night and came out with $500’. These are all example of the person–who argument which is a remarkably common defence when people peddle misconceptions. Have you ever seen people use this type of argument, and have you found yourself using it? 2 Experimental controls Do you know how to conduct a controlled experiment? One of the favourite tasks used by researchers is the pendulum problem. Suppose you were given materials such as string, scissors and plasticine (ie modelling clay or playdough) and asked to construct a pendulum. Now you are asked what factor or factors determine the frequency of the oscillations of your pendulum. What factors could they be? You think quickly and name weight, height of drop, length of string and whether or not you give it a push to start it off. OK, these are possible hypotheses, but they may work in interaction. How do you decide what to do to answer the question?. A variation on this type of problem is often used in primary science classrooms when students are asked to discover factors that make seeds grow more rapidly. Many adults fail on this type of problem. The pendulum problem was used by the great Swiss researcher Jean Piaget as an index of formal operational thought, as people move into adolescence. However, it became apparent that many highly educated individuals, who clearly have attained formal operations in other areas, have difficulty in aspects such as the need to control variables one at a time. The notion that we all have an inherent sense of experimental procedures and know how to isolate and control for different possible variables is simply untrue. 3 Do you believe in UFOs? The paranormal continues to attract people, despite this being an age of supposed enlightenment and high tech applications. A few people claim to have seen UFOs. But, far more people appear to believe that UFOs buzz around the globe than actually claim to have seen one. In a survey of students at an Australian university, we (Yates & Chandler) found that 46% actually admitted belief in UFOs, 47% said they believed in séances, and the belief level for Nostradamus’ predictions was 39%. A report on this was published in the journal Research in Science Education, volume 30, but a conference paper version is on http://www.unisanet.unisa.edu.au/edpsych/research/ (the file is NewAge.rtf). We are drawn to the conclusion that much intelligent discussion can be centred around some very shaky notions. Beliefs in paranormal events and processes are easy to sustain, provided they are held within a community of like-minded people. If you do harbour beliefs that you suspect people like us would challenge, please ask yourself ‘What evidence really sustains this belief?’, and ‘Is this evidence genuine?’. We are not asking people to abandon their beliefs, only to query the basis upon which such beliefs are held. On a humorous level, there 66 is the story of a lady who was asked whether she believed in angels. She replied ‘No, not personally. But that doesn’t mean that they don’t exist’. There is a subtle logic to this. 4 How important is time on task? At this point we want to draw attention to some common threads. Note how from the Ryan and Walberg data (Figure 15-5, page 357), it is possible to say that one major factor affecting student mastery in science is the amount of class time that their teachers devote to science. The more science that students get exposed to, the better their test score. Note how this is consistent with all that we know about the impact of factors such as deliberate practice and skill development over time. That is, note how this time factor emerged as a relatively strong variable outweighing other factors, as it seems to also in the talent research data (see page 176 in Brunning, and also the reading by Ericsson used in EDUC 5090) Furthermore, there could be a Matthew effect lurking within the Ryan and Walberg data. We do not know for sure, as the necessary analyses were not reported. But the powerful role of prior achievement is clearly seen there. A Matthew effect would be evident if the differences in achievement from time 1 to time 2 actually expanded rather than contracted. This is what could be occurring: students who are good at science move to classes where they do more science. Because they do more science, they get better at it. Dynamics similar to these are played out within the real world all the time. But note how time enters these relationships as an active factor, helping to explain why some students emerge with higher scores than others. To help you relate to this type of study and its significance, it will help you to realise that with 5000 students to assess, the achievement test used was similar to what would appear within national examinations for purposes such as university entrance. 5 Matthew effects: Are they everywhere? Recall that in the article by Yates and Chandler (Reading 1), the Matthew effect was described within the appendix using the rule-example-rule teaching principle. Although not described formally within your textbook, some of the data supporting the existence of Matthew effects are clearly cited within the book. For example, within the present chapter (15) on science, note how Roth (pages 351ff) reported on a minority of students in middle school who used sophisticated reading strategies when confronted with material discrepant from their existing beliefs. These students exhibited conceptual change strategies and so benefited from an experience that left others relatively unaffected. Upon reflection, note that this is likely to define yet another Matthew effect. That is, to those who already possess a positive trait (in this case, sophisticated reading skills), the educational experience provides the most benefit. Although we will not be reviewing the chapters on reading skills within this current course, we note that the Matthew effects abound within this specific area and can be documented on several different levels. For example, the whole language and language experience programs are of most value to children who can already read. Further, as a child begins to read, automaticity kicks in, and then the experience of reading serves to enhance aspects such as vocabulary development and knowledge acquisition. These traits, in turn, stimulate greater skill in reading. Some of the research data into vocabulary and knowledge effects within reading are summarised from page 269 to around 277 in Bruning et al. They may not use the term Matthew effect, but note that within your mind a schema for the Matthew effect is developing as a direct consequence of your participation within this course and through being an excellent reader. Can we suggest that you will begin to ‘see’ such effects occurring within your own teaching location? 67 Special Topic 4 COGNITIVE LEARNING PRINCIPLES IN ICT Reading Text reading Bruning et al, chapter 10. Reading 7 Mayer, R E (2003). The promise of multimedia learning: using the same instructional design methods across different media, Learning and Instruction, 13, 125-139. Reading notes Once again, we look on this topic as course enrichment, rather than presenting you with any new material. The principles of knowledge acquisition do not change across environments, and hence there is nothing dramatically ‘special’ about learning from information communication technology (ICT) sources. By ICT we refer generally to machine-mediated learning, of course most notably the impact of the modern PC facility. Computers bring great promise and high levels of expectation. But how can such promise be realised? There has been a fascinating debate going on for perhaps 60 years about whether or not any one learning source or medium possesses any real advantages. There is no final agreement of such issues, but one generally held position, consistent with virtually all learning theories, is that humans learn well when learning sources are varied, when the mind can integrate information from different data sources, using different modalities, and using diverse media. A modern version of this view is found in the work of R E Clark (see page 213) whose writings stress the point that learning depends far more on the quality of the educational experience, rather than the medium used in its delivery. Hence there is nothing ‘special’ about ICT, other than the fact that certain learning opportunities may be organised and managed with greater levels of precision than possibly afforded by alternative means. For example, computers can track individual responses, success and failures on attempted items, in a way that far exceeds the information processing capacity of any human classroom teacher. The 68 debate over the role of different media as learning resources is covered in depth in the book, Learning from media: Arguments, evidence, and analysis, edited by Clark (2001). Within the ICT world, instructional designers have shown a keen appreciation of ways in which cognitive learning theories can assist them in their goals. This chapter, together with the Mayer reading will provide a sound introduction to this area, and show how these two fields (cognitive psychology, and IT development) converge on a set of meaningful principles. Richard Mayer is a major professor at the Santa Barbara UCLA, and his work is also covered in depth in his book, Multi-media learning (2001) which is readily available (eg try the Internet second hand book people, around $20, American).(Note: If the reading from Mayer does not accompany this booklet, please contact Dr Yates directly). Bruning et al. again provide us with a clear highly readable overview of the entire field. After a general introduction, they move more into the psychology of learning with an excellent discussion on cognitive load theory, page 219ff. Of course, you will have met this before, briefly, in Module 2. Professor John Sweller, from University of New South Wales, is a leading figure in this area, and his work dovetails neatly alongside that of Richard Mayer. Mayer’s work is discussed on page 221, and you can then note how the Readings article expands greatly on these points. One curious thing about all this work on defining the cognitive principles behind learning from ICT is that it may seem initially so ‘obvious’. But this is an illusion. It seems obvious in that it all makes such great sense AFTER one has read it (ie what is called the hindsight bias). In fact, whenever we look at most learning programs available as educational software, we find they violate many such ‘obvious’ principles. This is not the place to debate this aspect, but the point to appreciate is that designing good software for educational purposes is so remarkably difficult. This area has experienced many false starts and false promises over the past two decades, as initial expectations were set far too high. Some examples of high quality American-based packages are given in the text, notably the Jasper Woodbury mathematics discs. This one has a rather interesting website that’s worth a visit if you are interested in mathematics teaching. http://peabody.vanderbilt.edu/projects/funded/jasper/Jasperhome.html Please realise of course that such programs have a clear commercial basis, and will naturally engage in much self promotion. However, this series is of strong interest to us in that they specifically used a team of distinguished cognitive researchers and mathematics teachers from an American university (Vanderbuilt) in the development stage of the materials. Many sound principles of learning and motivation are incorporated into the program (see pp 227- 228). Overall, this is a clever and impressive package, especially useful in stimulating young people to think of mathematics as an authentic problem solving tool. The evaluations did indicate that students (middle school level) found the discs stimulating to use, and this resulted in positive attitudes to mathematics, as well as viable cognitive learning gains. This is not meant here as any ‘advertisement’ for Jasper, only the realisation that such well designed programs, put together with expertise and strong team development, can become effective tools for teachers to use. 69 APPENDIX 1 SHORT-TERM MEMORY Short-term memory for digits: digit span test and plus one digit test Digit span test The digit span test taps short-term memory for numbers, presented visually below. Keep the numbers covered. Expose only one line at a time. Begin with four digits (that is, level 4) which you can look at and read, but only very briefly, around four or five seconds, to place them into your short-term memory. These are then covered up, and you write the numbers down on paper. You must get every number in the correct order to be scored correct. Once you have done four numbers, you move onto five numbers (that is, level 5), using the same procedure. And so on, until you can no longer do it correctly. Note: You can have up to two attempts per level, on the assumption that the first ‘fail’ is a lapse in concentration. As the numbers increase, you are allowed a little more reading time, up to one second per digit. 70 LINE BELOW HAS FOUR DIGITS (Keep covered until ready to begin.) 2 8 3 5 SECOND TRY AT FOUR DIGITS (Skip this ‘second try’ if first one correct.) 4 0 5 3 THE LINE BELOW HAS FIVE DIGITS 7 4 9 3 5 SECOND TRY 1 2 9 8 5 THE LINE BELOW HAS SIX DIGITS 9 6 7 4 8 6 SECOND TRY 4 9 7 3 1 6 THE LINE BELOW HAS SEVEN DIGITS 6 0 9 6 8 3 5 SECOND TRY 3 2 1 2 6 0 7 THE LINE BELOW HAS EIGHT DIGITS 7 5 4 5 6 2 80 SECOND TRY 3 0 1 8 2 0 2 9 THE LINE BELOW HAS NINE DIGITS 0 6 0 1 7 3 6 5 4 SECOND TRY 5 3 4 0 7 5 0 6 5 THE LINE BELOW HAS TEN DIGITS 5 8 9 4 3 2 0 7 9 1 SECOND TRY 8 1 0 7 4 0 3 7 2 5 THE LINE BELOW HAS ELEVEN DIGITS 1 7 0 2 3 9 5 9 0 1 4 SECOND TRY 4 1 7 0 7 9 7 3 8 5 1 THE LINE BELOW HAS TWELVE DIGITS 3 1 0 8 1 4 6 0 5 3 0 7 SECOND TRY 6 2 4 1 0 5 8 4 0 7 1 5 71 Plus one digit test This test is similar to the digit span test except that instead of repeating back the same digits you see on the page, you now add one to each of the numbers. If you see ‘6 9 7’ write down ‘7 10 8’. THE LINE BELOW HAS FOUR DIGITS 8 2 6 7 SECOND TRY 5 0 8 3 THE LINE BELOW HAS FIVE DIGITS 7 1 8 3 6 SECOND TRY 8 9 2 1 7 THE LINE BELOW HAS SIX DIGITS 8 4 7 6 9 3 SECOND TRY 6 4 9 7 3 1 THE LINE BELOW HAS SEVEN DIGITS 3 8 6 9 0 6 2 SECOND TRY 0 7 3 2 1 4 6 THE LINE BELOW HAS EIGHT DIGITS 2 0 8 1 0 3 4 7 SECOND TRY 1 3 8 2 4 1 6 3 THE LINE BELOW HAS NINE DIGITS 6 1 5 4 1 7 3 6 9 SECOND TRY 6 0 2 9 8 4 1 5 3 THE LINE BELOW HAS TEN DIGITS 2 0 7 9 1 8 9 4 3 1 SECOND TRY 0 7 2 5 4 0 3 7 8 3 THE LINE BELOW HAS ELEVEN DIGITS 6 1 4 3 9 5 9 1 7 0 2 SECOND TRY 4 1 7 8 5 1 7 3 9 3 6 THE LINE BELOW HAS TWELVE DIGITS 4 6 0 5 3 3 1 0 8 0 7 5 SECOND TRY 7 3 8 2 5 2 8 9 4 0 7 1 72 Short-term memory for words This is another test of short-term memory capacity, but for words this time. Also the procedure is different in that you will see a large number (that is, 20) of four-letter words, which you try to read through, taking up to a minute (that is, 60 seconds). Then try to write down as many as you can, without looking. Although you will see them arranged in a table of five columns, the order or position of the words does not matter. Just try to cram as many of them into your memory as you can, then write them out anyway you feel. FARM CONE RENT KILN DENT MOOD STAR BIKE WANT FIST FOOT SILK FULL LAMP ZINC PORT LAST JINX NORM SOAP Short-term memory for nonwords This is yet another test of short-term memory capacity. Nonwords are sometimes called nonsense words in that they look like genuine words but are not currently used within the English language. For example, SALM is a nonword in that you can easily say the word, but it has no immediate meaning. In this test: (a) You will see a large number (that is, 20) of four-letter nonwords; (b) You can try to read through once, taking up to a minute (60 seconds). (c) You then write down, without looking, as many as you can recall. Although you will see them arranged in a table of five columns, the order or position of the words does not matter. Just try to cram as many of them as you can into your memory as you can, then write them out anyway you feel. The order is not important in this type of free-recall exercise. BRAL LONK REXT TRAS YILD DREM MURT KRUL SPOD HARG POOM DIRB FROJ TRIB GEAL NARP WURT FRUK TROR LART 73 APPENDIX 2 HOW TO TEACH CONCEPTS AND SCHEMATA Helping students form concepts 1 Use the rule-example-rule strategy. This can involve six steps: Define the concept or rule. Clarify the terms in the definition. Give examples to illustrate the key features or characteristics. Restate the rule. Provide additional examples. Have students generate their own examples of the concepts. 2 Numerous and varied positive instances help to illustrate a concept. Through encountering many instances of concepts, students can form prototypes of these concepts. Give students some experiences in prototype matching. Think of different concepts, and then ask students what are the general features of these. 3 Negative instances are crucial in demonstrating what a concept is not. Negative instances, particularly when they are near misses to the concept, are helpful in defining the concept’s limits and in preventing overgeneralisation. For example, in learning about mammals, students can be shown similar-looking non-mammals such as frogs and lizards. 4 Positive and negative instances are more effective when presented simultaneously. Students tend to learn concepts more easily when they see examples and non-examples simultaneously rather than sequentially. As far as possible, also try to vary the manner of presentation. For example, try to use different representations or multi-modal inputs such as pictures, real objects, models, video, graphs, readings etc. 5 Make concepts as clear as possible and give concrete examples. Spend some time thinking about the best way to present a new concept, especially an abstract one. Assess students understanding of a concept by asking them to classify new examples. If you want students to come up with the concept ‘vehicle,’ ask them to come up with examples of it. They probably will say ‘car’ and maybe ‘truck’ or ‘bus’. Show them photographs of other vehicles, such as a sled and a boat, to illustrate the breadth of the concept. 6 Help students relate new concepts to concepts they already know. For example, a student might know what gold and silver are but not be aware of what platinum and plutonium 74 are. In this case, build on their knowledge of gold and silver to teach the concepts of platinum and plutonium. 7 Encourage students to create concept maps. Getting students to visually map out the hierarchical organisation of a concept can help them learn it. The hierarchical arranging can be used to help students understand the concept’s characteristics from more general to more specific. Hierarchical organisation benefits memory. 8 Ask students to generate hypotheses about a concept. Generating hypotheses encourages students to think and develop strategies. Work with students on developing the most efficient strategies for determining what a strategy is. 9 Motivate students to apply the concept to other contexts. Get them to expand their knowledge of the concept and elaborate on it by assigning further reading about the concept. Ask the students how the concept can be applied in different contexts. For example, in learning the concept of fairness, ask students how fairness can make life smoother, not only at school, but also at play and at home. Teaching for schemata development The principles for teaching concepts and schemata will substantially overlap. However, note the following points: 1 Provide students with practice to organise a body of knowledge about a specific topic. Assist children in focusing their attention on information that is likely to be important and to ignore what is probably unimportant. 2 Encourage activities in which students can form schemas about events. These event schemas are called scripts. For example, what happens when we have an art lesson? Students put on a smock, get the art paper and paints from the cupboard, clean the brushes when they are finished, and so on. Therefore a student who comes in late to the art class is more likely to know much of what to do because he has an art activity script. 3 Provide students with scenarios, short stories and descriptions of events and then get students to make a list of the facts. Analyse this list observing which information is actually evident and what information has been ‘filled in’. Discuss how information is sometimes assumed to be true from prior knowledge. 4 Recognise that the starting point of learning is what students already know. Brainstorming at the outset of an activity is one strategy. Students understand what they read, hear and see through the filters of their experiences in their families and cultures. This needs to be the starting point of instruction. 5 Help students activate their current knowledge. Having relevant knowledge is one thing; using it in new learning is another. New information needs to be instantiated within students’ schemata. Teachers need to ensure that students have activated relevant knowledge and take maximum advantage of the relationship between prior knowledge and new knowledge. Among useful activities that will assist in encoding and elaboration processes are: stimulating students’ recall of related information providing analogies and ‘schema activation’ experiences probing students’ intellectual and emotional reactions to materials. 75 6 Expose students to examples that vary widely on irrelevant attribute values. This prevents an irrelevant attribute value from being encoded as part of the schema. Careful selection of examples and non-examples is crucial. 7 Provide students with concept maps and get them to create their own maps. 8 Use visual examples along with a verbal description to assist with higher-level schema formation. For example, teaching students to recognise a triangle using both a visual example and a verbal definition of a triangle, with two examples of a triangle that vary on irrelevant attribute values, encourages the student to form a schema for triangle that contains both propositional and perceptual information about triangles. Since the student can combine propositional and perceptual information, activation of one type of knowledge is likely to lead to activation of the other type. Thus, if a student sees a new triangle, the image of a triangle will be activated and this will give access to the label ‘triangle’ and definitional information about triangles. 9 Provide experiences to encourage students to learn when to apply steps in problem solving rather than purely memorising them. Engage students in cooperative learning groups or computer-simulation activities to promote knowledge that is easily transferred. Problem-recognition activities are highly effective and focus students on refinement of schemas. 76 APPENDIX 3 HELPING WITH MEMORY AND METACOGNITION Helping with memory 1 Meaningful learning is more effective than rote learning. Students will remember information better over the long term if they understand the information rather than just passively rehearsing and memorising it. Rehearsal works well for encoding information into short-term memory, or for storing small parcels of information into the LTM. But to be meaningful in the long term, it is much less efficient. Encourage students to: understand information give information meaning elaborate on information personalise information Associating new information with things that have already been learned promotes effective storage and more successful retrieval. 2 Assist students in organising what they put in their memory. Students will remember information better if they organise it hierarchically. Give them some practice on arranging and reworking material that requires restructuring. 3 Teach students some mnemonic strategies as memory aids for remembering information. Mnemonic strategies can involve imagery and words. 4 Method of loci: developing images of items to be remembered and mentally storing them in familiar locations. Rhymes: examples include, ‘Thirty days hath September, April, June and November … ‘ (to remember months of the year), and the song to learn the English alphabet. Acronyms: involves creating a word from the first letters of items to be remembered. Keyword method: vivid imagery is attached to important words. Encourage students to distribute their learning over a longer period rather than cramming for the test at the last minute. Cramming tends to produce short-term memory that is processed in a shallow rather than deep manner. 77 5 Get students to ask themselves questions: ‘What is the meaning of what I just read? Why is this important?’ This helps the elaboration process; that is, to expand the number of associations they make with the information they need to retrieve. 6 Help students to take good notes, not just brief, disorganised or verbatim notes. Strategies include: Summarising: listen for a few minutes and then write down the main idea. Outlining: similar to chapters and subheadings in books. This will need to be modelled. Concept maps: visually portraying information in a spider-like format. Helping students use metacognition in the classroom 1 Recognise that strategies are a key aspect of solving problems. Monitor students’ knowledge and awareness of strategies for effective learning outcomes. Many students do not use or are unaware that good strategies can help them learn. Sometimes, they may get too fixated on less effective strategies. 2 Model effective strategies for students. While doing this, verbalise the steps in the strategy. 3 Scaffold students’ initial attempts at using new strategies, gradually phasing out the scaffolding as students become more proficient. Give students many opportunities to practice the strategy. As students practice the strategies, provide guidance and support to the students. Give them feedback until they can use the strategies independently. As part of your feedback, inform them about where and when the strategies are most useful. 4 Encourage students to monitor the effectiveness of their new strategy in comparison to the effectiveness of old strategies. This helps the students to see the benefits of using the new strategy. 5 Remember that it takes students a considerable amount of time to learn how to use an effective strategy independently. Keep encouraging students to use the strategy over and over again, until they can use it automatically. 6 Understand that students need to be motivated to use the strategies. They are not always going to be motivated to use the strategies. Especially important to students’ motivation is their expectations that the strategies will lead to successful learning outcomes. 7 Encourage students to use multiple strategies: finding out what works well, when and where. Students should learn a wide variety of strategies, as well as the situations in which each one is appropriate. 8 Students can often learn effective strategies by working cooperatively with their classmates. Teach students to use elaborative interrogation, (questions along the line of ‘Why is it that such and such is true?’). This technique appears to promote better recall for facts and increased integration of ideas, by encouraging students to draw on their prior knowledge to understand new information. 78 APPERNDIX 4 HELPING STUDENTS TRANSFER INFORMATION AND AVOID THE INERT KNOWLEDGE EFFECT 1 Set expectations: simply alert learners to occasions where they can apply what they are learning directly, without transformation or adjustment. For example, ‘Remember, you’ll be asked to use these pronouns correctly in the essay due at the end of the week’. 2 Match: adjust the learning to make it almost the same experience as the ultimate applications. For example, in sports, play practice games; in drama, full-dress rehearsals. 3 Simulate: use simulation, role-playing, acting out, to approximate the ultimate applications. 4 Model: show and demonstrate rather than just describe. 5 Use problem-based learning: give students many opportunities for real-world learning. 6 Anticipate applications: ask students to predict possible applications remote from the learning context: ‘Where might you use this or adapt it?’ 7 Generalise concepts: ask students to generalise from their experience to produce widely applicable principles, rules and ideas. 8 Use analogies: engage students in finding and elaborating an analogy between a topic under study and something rather different. 9 Use parallel problem solving: engage students in solving problems with parallel structure in two different areas, to gain an appreciation for the similarities and contrasts. Help them to see underlying patterns. 10 Metacognitive reflection: prompt and support students in planning, monitoring and evaluating their own thinking: ‘What went well, what was hard, and how could I handle what was hard better next time?’ 11 Deliberately incorporate occasional obstacles into instructional sequences and lessons. Teach your students to overcome obstacles. This principle is seen in things such as computer games in which the going gets harder, once a basic skill is acquired. Everyone enjoys overcoming a challenge, and there is no reason why learning always has to occur under perfect conditions. So occasionally do things deliberately to make learning more challenging. Use encouraging statements such as ‘OK, this is problem. But I know you can all cope with it’. 79 APPENDIX 5: Material as used in undergraduate topics on the Magill Campus INTRODUCTION TO THE PSYCHOLOGY OF LEARNING AND BASIC INFORMATION PROCESSING (This version intended for students in EDUC 1019. October 2004. Dr Greg Yates, UNISA Magill) How do we learn? What actual process has to occur within the mind? How can we make our learning more meaningful? What can we do to prevent memory loss? Can the mind ever get “full up”? Can the mind be trained to learn better or faster? Will my knowledge of psychology help me to pass university exams? Questions such as these can be addressed in the light of information covered within this topic. These pages will provide you with an introductory commentary focussing upon a specific way of looking at human learning. The perspective adopted by contemporary psychologists is referred to in general as information processing theory. Your textbook will take you more deeply into this theory and its educational implications. We begin this commentary by reviewing several elementary principles of learning. Some of these will be very familiar to you, but you may never before have appreciated such principles as formal statements about human learning. In this module, we will quickly review three topics: Viz, (a) principles of acquisition, (b) principles of memorisation, and (c) principles of mental overload. Following on from this review we will quickly cover the multi-store theory of human information processing. Principles of Acquisition 1. Role of time, effort, and motivation Human learning is a slow process, typically indexed over months and years rather than hours or days. The necessary concomitants of the process are (a) time, (b) goalorientation, (c) frequent review, and (d) accumulated successful practice. Notions such as “instant expertise”, superfast learning, speed-reading, and other magic-like programmes are seen as faddish quackery, and stand in violation of known principles of human learning. Most humans will appear to learn specific small-scale behaviours, bits of knowledge, or low-level objectives within only a few minutes. But this impression of quick learning is highly deceptive for a variety of reasons. Unless the material is very strongly meaningful, it is subject to very rapid forgetting. Even if it is retained, it may be difficult to retrieve within an appropriate context. To acquire any level of domain competency will take a bare minimum of 100 hours practice, and genuine expertise takes perhaps 5 to 10 years of consistent skill development. 2. Concentration span Adult humans have a natural attention or concentration span, of around 15 to 20 minutes, before significant levels of mind wandering will occur. Well-motivated learners may then refocus their mental activities back onto a task, but will still need short breaks in order to avoid overload effects. If you need to teach anyone some new information, then, it is most helpful to do so within 15 minutes, or else you will “have lost them”. Note how university lectures may exceed the span by a factor of three, and of course the lecture room violates the notion that learners should make active responses. Also note how attending to music may actually harm attention focussing and resultant learning. 3. Spacing effect/ Distributed practice To try to learn material within a single block of time often turns out to be far less effective than if the same duration of time was broken into shorter periods spaced over several days or weeks. This is especially true when learning new skills. For example, if you were to learn to drive a car, you would benefit far more from 6 sessions of 20 minutes each spaced over a week, than from a single block session of 2 hours. In most human learning situations, blocks of 20-30 minutes are most effective in cost-benefit terms. The concept of distributed practice is also used to refer to the spacing effect. 80 4. Prior knowledge effect In any one context, the major determinant of knowledge acquisition will be what the mind already knows. It is far easier to build on existing knowledge (which we call schemata or schemas) than to learn new material. Input information that cannot be related to one’s existing knowledge is quickly shed. In sheer power, prior knowledge effects are far stronger than other variables influencing learning. Prior knowledge effects, for example readily outweigh effects due to IQ or ‘learning styles’ which have only fairly weak effects on learning. When your prior knowledge is faulty, however, it creates a huge obstacle, an effect called interference, which we discuss in more depth within the next section on memory effects 5. Principles of information structuring The mind does not relate well to unstructured data. We find it extremely taxing to learn random lists or otherwise cope with unrelated materials. We need to find organisation, structure, and meaning in what we learn. Very often, meaningfulness stems directly from prior knowledge, but we also benefit enormously from being shown how to group information, how to find patterns, how to use orderings, or how to schematise and summarise. In teaching situations, good teachers often provide overviews of what we are to learn, and these are referred to as advance organisers. 6. The mind responds well to multi-media (ie multi-modality) input From time to time you will come across people describing ‘visual learners’, or ‘tactile learners’, or whatever. The basic experimental data, however, indicates that people are far more similar than they are different in such ‘learning styles’. In fact, we all are visual learners, not just some of us. Studies reveal that we all learn well when the inputs we receive are multi-modal or via several different media. That is, the brain is set up, rather beautifully, as a device which integrates information from different sources, from different inputs, or from different modalities. Strong learning occurs when words and images are combined. Claims such that ‘some students learn from words, but others from images’ are incorrect as students learn most effectively through the contiguity (ie mental associations) of words and images. Principles of memory retention 1. Recall is hard: recognition is easy To recognise means to indicate that the material is known, often by signalling in some coherent way, such as ticking a box on a multiple-choice test. But recall means to produce, regurgitate, reconstruct, rebuild, etc. Measures of recognition are sensitive in that they may pick up partial knowledge very easily. Recall measures are far more severe and are typically insensitive to partial knowledge. Hence, in terms of items “remembered”, a recall test yields much lower scores. Indeed, part of the art of constructing high quality multiple-choice tests is to devise items that cannot be answered by simple, direct recognition but which involve deeper levels of processing. 2. Primacy and recency effects These two effects are not widely known to lay people. However, they are well established in the research literature. As a learner, the individual copes inevitably with sequences of information. The human brain is a type of linear processor, and recall is often subject to what are called serial position effects. Obviously some information entering the mind is more important than other information, and this facet will dominate the individual’s attention. But the sequencing of data also has been shown to influence learning in that the information that enters the mind first within a sequence is often recalled more readily. This is called primacy. The recency effect occurs when the information that enters the mind last has an advantage in mental processing. For example, you may listen to a lecture and recall the beginning and end bits, but the middle somehow gets forgotten. Recency effects can be strong immediately after a learning experience. However, the primacy effect often tends to be stronger than recency when recall is attempted a period of time after the original experience. 81 3. Meaningfulness determines retention level It is possible to learn meaningless material. Lists of nonsense words, or columns of random numbers can be committed to memory. But the retention level for this type of rote learning is very low, possibly around 20% after a day. Rote acquisition results in rapid forgetting, and this appears to occur within minutes or hours of the original learning. If such material is to stay within the head, it must be constantly rehearsed or otherwise some sort of pattern must be perceived. Various mnemonic devices might be activated to try to aid retention levels, and these are often useful due to the relative meaninglessness of the input. 4. There are different rates of forgetting over time The rate of forgetting can depend on the type of original learning. For example, once mastered, motor actions are typically retained virtually for the life of the individual. A fit senior citizen might be able to ride a bicycle even after not riding on one for 50 years. Also, the retention level for words is very high in humans, at least within one’s native language. But moderate levels of decay over time will occur for most intellectual-type skills, especially if the skill hinges upon detailed knowledge of specific operations, facts, or arbitrary numbers. The mind will shed isolated facts very rapidly, and we all have great difficulty holding onto arbitrary items such as telephone numbers, bank account numbers, etc, even when such things might be seen as important things to try to recall. 5. Memory is a constructive process. It is tempting to think of the memory as “play-back video recorder”, but this metaphor is misleading. Memory is highly constructive in that it hinges upon the brain making sense of partial cues and imprecise information. Memory is dependent upon the focus of attention at the time of learning. But what two people focus upon, given the same experience, could be very, very different. Human beings are notoriously unreliable as eyewitnesses to objective events. Memory for aspects such as time estimates, vocal emphasis, specific words spoken, causal sequences, and even actor-action associations can vary dramatically between witnesses. Interpretations vary in accord with prior expectations and other sense-making strategies. The act of recall must be seen as a person’s attempt to find meaningful patterns in what otherwise is unprocessed chaos. Hence, our memories are subject to many different types of error such as oversimplifications, abbreviations, schematizing, distortions, and intrusions. An intrusion is where a person recalls some aspect that was not part of the original learning experience, but which is possible, feasible, likely, or just something that seems to “make sense”. It should be noted that people generally are not aware when their memory plays such tricks upon them. We all fall into the trap of believing that our memories correlate perfectly with reality. Indeed, confidence in memory accuracy has often been shown to be unrelated to actual objective indices. This has been documented both in laboratory type experiments and naturalistic studies. Put bluntly, an eyewitness’s confidence level is a flawed predictor of this person’s actual accuracy level. At times, memory reports can be biased by factors such as stereotypes, prejudices and faulty expectations. As intelligent people, and teachers responsible for managing student welfare, we must be alert to such sources of distortion in what people report. It is important to realise that human interactions are actually very difficult things to recall accurately. 6. The principle of savings (ie relearning) Suppose you learnt a foreign language 20 years ago, but appear to have forgotten it completely. Well, this is unlikely to be the full story. Studies have shown that we can learn material the second time very rapidly, even when the original learning appears lost and inaccessible. We know about this principle because of the huge time advantage people have when they relearn material. In such situations, people are largely unaware of the power of this effect, and may not realise that substantial savings are being made. All they know is that they seem to be “picking it up fast”. This effect is quite dramatic when a person visits a country after not having spoken a specific language there for 20 years and then “picks it up again” within 3 or 4 days of arriving in the country. Often there can be ‘hidden reasons’ why some people learn quickly, notably when prior knowledge can serve as an unconscious source of memory savings. 82 7. Memories are subject to interference. Interference refers to natural memory loss due to experiences either before or after the original experience. For example, if you learn a list of 20 Spanish vocabulary words and then a list of 20 French words, there is a very strong chance that your recall of the Spanish words is inhibited by learning the French list . This is called retroactive interference. But similarly, your recall of the French list is reduced by the fact that you had earlier learnt the Spanish list, and this form of interference is called proactive interference. These are genuine memory effects, not merely the result of fatigue or overload. In school situations these effects can operate in subtle ways. Although we hold that one’s prior knowledge generally will help learning, there are times when prior knowledge can become a clear source of proactive interference. For example, within the Science curriculum words such as “force”, “matter”, “vector”, “ratio”, “space”, and “living” all have technical definitions that can be very hard for students to assimilate precisely because such words also have common sense meanings. (Note, this relates to the notion of misconceptions, which are often discussed in connection with Science teaching) Principles of handling overload At times people find themselves in situations where they are overloaded. The efficiency and organisation of their actions is threatened simply because there is too much going on within the mind. Overload is implicated in a multitude of human pathologies and miseries, and is one reason why people at times appear to act against their goals and self-interest. For example, under provocation and stress, a teacher may strike a student despite being well aware that such physical gestures are illegal. The explanation for many forms of violence is that the actors were overloaded. Some basic principles follow. 1. Learning is an unpleasant experience. This principle may surprise many of you, as the overall results of learning can often bring high levels of reward and personal satisfaction. But, seriously look at this more closely. You may find that positive emotions tend to be correlated with (a) planning and goal setting in the first place, and then with (b) achieving your goals. For the most part the actual learning is NOT enjoyable, even though it is helpful to tell yourself otherwise. It is enjoyable to have skill, to display prowess, and to envisage what one can do. That is, it is pleasurable to perform, or dream about performance benefits. But the actual process of learning (ie the moment when learning takes place) is far more likely to be stressful and loaded with emotions of uncertainty which quickly shift into negative feelings. One factor implicated in this principle is that humans possess a natural tendency towards overconfidence in being able to learn. That is, we tend to be optimists and believe we can perform better than we really can in most learning situations. Similarly, we tend to underestimate the amount of time and practice it takes to master a new skill. Please realise these natural tendencies are neither “good” nor “bad”, but they should be recognised by all instructors, teachers, and parents. The overconfidence effect is especially strong before people receive objective feedback about performances. Feedback may force a person to radically alter such assessments. 2. Learning places great stress on mental resources The learner is vulnerable. She has to maintain adaptive composure in the face of often unpredictable consequences. It is necessary to mobilise high levels of effort and vigilance, and so be prepared to respond to input experiences in a variety of ways. The learner may not know how the world is going to react towards an action she has initiated. She may not know of the appropriate stimuli to pay attention toward. She may not know how to match the intensity of her response to the immediate input, or how to pull back if she has optimistically overstated her current capabilities. In short, mental resources are stretched, possibly to a point of non-optimal processing we refer to as overload. 3. Every person has to develop coping strategies. We all develop ways of coping with stressful learning contexts. We can do things such as pay attention, work slowly, increase the level of practice, reread the materials, or find a good teacher. Our coping strategies must apply to two fundamental aspects: (a) increasing our opportunities to learn, and (b) managing our emotional responses. It is 83 necessary for every learner to develop a wide range of possible coping methods. Failure to learn coping skills renders the learner passive in the face of inevitable overload. Incidentally, it has been found that there is some level of consistency in the way individuals will tend to respond to quite different sources of stress. 4. Overload factors can be identified There is no one single cause of overload, and some people will cope with such stress better than others. However, at the level of the individual learner, it is possible to specify that overload can be linked to ANY ONE of the following: (a) Low levels of prior knowledge. (b) Deficient use of mental strategies. (c) Unrealistic expectations (eg overconfidence, or goals set too high, or are immutable). (d) Poor instruction, inadequate teaching, or failure to engage with learning material. (e) Unfavourable learning conditions (eg study facilities, presence of distractions, etc). (f) Assessment apprehension (eg unfair tests, competition, emotional/motivational problems). Multi-store theory In this section we introduce the major theory of memory that has held sway over the past 30 years. This theory accounts for many (but not all) of the principles listed above, and is widely accepted within cognitive psychology today. The theory says that the human memory system consists of at least three levels of memory, which can loosely be called stores. They are the iconic store, the short term memory, and long term memory. There has been debate within academic psychology as to whether these stores should be seen are separate entities, or part of a single process, but for purposes of this essay we will treat them separately. 1. Iconic Memory This form of memory is also known as sensory memory, and as ultra-short term memory. Iconic memory relates to input experiences and perceptions within a sensory modality. Within the visual system, for example, experiments reveal that a large amount of data can be stored for around a second. In a laboratory study, for example, you might be asked to look at a screen where an image appears for one twentieth of a second. Your visual system takes it in and then has perhaps up to a second to “read” from the image until it fades from your mind. The auditory system appears to have longer duration sensory images possibly 2 or 3 seconds duration. 2. Short term memory (STM) or working memory (WM) For our purposes we will regard these two terms as virtually synonymous. However, many psychologists now avoid the term “short term memory” and prefer “working memory”. This is to signify that this form of memory represents the amount of space available for current mental processing. Metaphorically, it is the working area or the workbench of the mind. But it is a system that has to stay active, lest items drop off the workbench. Indeed, it is a limited capacity workbench. The WM system has two basic problems. Firstly, the amount of information it easily holds is limited to only a few items at a time, and secondly, information is lost quickly from the system. How much information can be held? Answer: only around four items if they are unfamiliar ones, but around eight if they are relatively familiar items such as numbers, letters or simple words. How long does information stay within the system? Answer: somewhere between five and twenty seconds. For example, you find a telephone number in the White Pages. But someone speaks to you in between reading the number and being able to dial. This interaction destroys your mental rehearsal and your ability to get the number correct is lost after five seconds. And after a 20-second interruption, you may recall not even one of the original numbers. To retain such information you need to rehearse in order to maintain it within an active buffer. This is called the articulatory loop. Laboratory studies have shown that humans posses a natural articulatory loop of one and a half seconds. That is, it is “easy” to retain as much as you can say to yourself within 1 ½ seconds, and do so indefinitely. The other way to retain information is to transfer it to long term memory. 84 3. Long term memory (LTM) Metaphorically, this is the archival library store where data are filed for retrieval at a later time. It is held that this system holds information in permanent storage form. The term permanent memory is favoured by some writers. Certainly, LTM storage will be affected dramatically by disease or brain trauma, but this system is not subject to the same decay processes that beset one’s STM efficiency. In short, the passage of time alone does not dim this system. There are still many problems with storage within the LTM. One major issue is that the system does not possess anything like the FTP download capability of a computer. There is no human equivalent to transferring information from one’s floppy disk to one’s hard drive. It is often noted that the major cause of apparent forgetting in humans is actually forgetting to learn properly in the first place. As we noted earlier, humans tend to be overly confident in their learning ability, and underestimate the time and effort required to achieve skills. It is assumed that there are no natural spatial limits on LTM, ie we have yet to come across any healthy human being whose LTM capacity has reached a top limit. Indeed, the principle of prior knowledge even suggests the opposite, ie the more knowledge you have the easier it becomes to learn even more. In the course of aging, the mind may lose often certain agilities, notably those to do with fast accessing, but the volume of material stored primarily is not affected. The major problems of the LTM system hinge around three aspects: Viz, (a) the sheer difficulty of loading information into the system, (b) the use of efficient encoding strategies which enable inputs to be fully processed and so interpreted in such a way as to relate to what the head already knows, and (c) the use of efficient retrieval strategies which enable recovery of the stored data. Each of these three can involve high levels of conscious effort and thinking, consistent with what is referred to as the “good information processing” model of human cognition. Within contemporary psychology we find a large number of concepts used to describe how the LTM operates. These concepts and their research findings are treated in depth in chapter 6 of your textbook 4. The nature of learning: The need for strategies The multi-store theory portraits learning in terms of transfer of information across the memory banks within the mind. Whereas the sensory store appears to take in a good deal, the process of attention ensures that only a few items are transferred into the STM. In this sense, attention operates as a filter keeping a high level of information out of consciousness. Within the STM information may be held for brief periods, but unless immediately refreshed it fades quickly, and is lost forever. On the other hand, the learner can use strategies to moves the data into LTM. This entails some form of active responding in that the mind has to “do something with this stuff before it disappears”. But what? The mind could try a bit of CRIME: ie, chunking, rehearsal, imagery, mnemonics, and elaboration. Chunking is involved whenever the mind groups items together that did not necessarily come together in direct experience. Chunking can mean to group, sort, organise or classify. The central idea is that the mind is able to reduce mental load by arranging related items into a meaningful pattern. These patterns stem from prior knowledge. Rehearsal means literally to repeat oneself, ie to refresh the data. This can be done subvocally, within a verbal buffer. When one rehearses aloud it is called recitation. The mind is working on the theory that repetition will make the memory trace more permanent. When this practice is applied to data that cannot be linked to existing knowledge we may use the term “rote learning”. In the early childhood years this strategy generally takes the form basic labelling (ie naming whatever stimulus is present within immediate view). In later childhood, rehearsals may take the form of a list that can be quietly repeated to oneself. By adolescence, rehearsal can take the form of a cumulative rehearsal-fast finish, a much more sophisticated form. Imagery is another way to respond to an input experience, which is described in depth in chapter 3. Literally, this means to “picture it” within the mind, a skill that some people report they use very naturally. We encounter some people, for example who claim that they even recall telephone numbers not by rehearsing them subvocally, but by imagining what the numbers actually look like written down. This writer once worked with a person who claimed to recall telephone numbers by “projecting” the number onto a blank wall. Mnemonics is really a general word that can be used to refer to any memory device, but we may tend to use the term more readily to refer to temporary tricks such as ROYGBIV, 85 or Every Boy Deserves Fruit, or even CRIME. As a student you will know of specific mnemonics which relate to problems within your areas of knowledge. Such tricks exist, for example, for being able to memorise the value of pi, the periodic tables, the positions of planets, the nerves of the body, etc. Elaboration means to process information by adding to it in meaningful ways, ie to use the input information as a trigger for bringing other data into consciousness, and so fusing the new with the old to create a more durable and accessible memory trace. Let us try to illustrate this: (a) you have to learn a number, 7812815, and realise that you were born in 1978, in the month of December, so you “pretend” that it was quarter past 8 in the morning, and (b) you read the word “Taipan” in the TV programme, and your mind crosses back to when you were in Queensland and the farmers told you to watch out for deadly snakes hiding in the cane fields. In both instances your memory for the inputs (the number and the TV programme) is enhanced simply because you elaborated on them at the moment of initial exposure. Such elaborations may be either involuntary, or quite deliberately employed as a conscious learning strategy in which prior knowledge associations are used to advantage. (Note: virtually all the memory training schemes or books base themselves around the principles of elaboration) 5. Final note This concludes our introductory tutorial on information processing theory. The story will be taken up in depth in McInerney and McInerney. Also, you may find it helpful to also consult other texts that are designed for the undergraduate student. Indeed, any basic textbook within psychology or educational psychology will have at least one chapter on basic information processing and cognitive learning theory, and most texts generally have good use of visuals such as flow diagrams. 86 REFERENCES The following were cited in this Study guide, but are not part of the reading program, and are not cited within the text or readings used within the current course. Ceci, S. & Bruck, M. (1995). Jeopardy in the courtroom: a scientific analysis of children’s testimony. Washington: American Psychological Association. Clark, R. E. (2001). Learning from media: Arguments, evidence, and analysis. Greenwich, CT: Information Age Publishing. Dweck, C. (2000). Self-theories: their role in motivation, personality, and development. Phil, PA: Psychology Press. Howe, M. J.A. (1990). The origins of exceptional abilities. Oxford: Blackwell. Howe, M.J.A. (1999). Genius explained. Cambridge: Cambridge University Press Mayer, R E (2001). Multi-media learning. Cambridge: Cambridge University Press. McInerney, D. M. & McInerney, V. (2002). Educational psychology: Constructing learning, 3rd Edition. Frenchs Forest, NSW: Prentice Hall. Seligman, M E P (1990). Learned optimism. New York: Alfred Knopf. (Published within Australia by Random House). Sternberg, R J (2003) Why smart people can be so stupid. New Haven: Yale University Press. UNIVERSITY OF SOUTH AUSTRALIA PRODUCT : EDUC 5080 /SG / 01 / VER1