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MANAGEMENT INFORMATION SYSTEMS 8/E Raymond McLeod, Jr. and George Schell Chapter 13 Decision Support Systems 13-1 Copyright 2001 Prentice-Hall, Inc. Simon’s Types of Decisions Programmed decisions – repetitive and routine – have a definite procedure Nonprogrammed decisions – Novel and unstructured – No cut-and-dried method for handling problem Types exist on a continuum 13-2 Simon’s Problem Solving Phases Intelligence – Design – Inventing, developing, and analyzing possible courses of action Choice – Searching environment for conditions calling for a solution Selecting a course of action from those available Review – Assessing past choices 13-3 Definitions of a Decision Support System (DSS) General definition - a system providing both problem-solving and communications capabilities for semistructured problems Specific definition - a system that supports a single manager or a relatively small group of managers working as a problem-solving team in the solution of a semistructured problem by providing information or making suggestions concerning specific decisions. 13-4 The DSS Concept Gorry and Scott Morton coined the phrase ‘DSS’ in 1971, about ten years after MIS became popular Decision types in terms of problem structure – Structured problems can be solved with algorithms and decision rules – Unstructured problems have no structure in Simon’s phases – Semistructured problems have structured and unstructured phases 13-5 The Gorry and Scott Morton Grid Management levels Operational control Structured Degree of problem structure Semistructured Unstructured Management control Strategic planning Accounts receivable Budget analysis-engineered costs Tanker fleet mix Order entry Short-term forecasting Warehouse and factory location Inventory control Production scheduling Variance analysis-overall budget Mergers and acquisitions Cash management Budget preparation New product planning PERT/COST systems Sales and production R&D planning 13-6 Alter’s DSS Types In 1976 Steven Alter, a doctoral student built on Gorry and Scott-Morton framework – Created a taxonomy of six DSS types – Based on a study of 56 DSSs Classifies DSSs based on “degree of problem solving support.” 13-7 Levels of Alter’s DSSs Level of problem-solving support from lowest to highest – – – – – – Retrieval of information elements Retrieval of information files Creation of reports from multiple files Estimation of decision consequences Propose decisions Make decisions 13-8 Importance of Alter’s Study Supports concept of developing systems that address particular decisions Makes clear that DSSs need not be restricted to a particular application type 13-9 Alter’s DSS Types Retrieve information elements Little Analyze entire files Prepare reports from multiple files Estimate decision consequences Degree of complexity of the problem-solving system Propose decisions Make decisions Degree of problem solving support Much 13-10 Three DSS Objectives 1. Assist in solving semistructured problems 2. Support, not replace, the manager 3. Contribute to decision effectiveness, rather than efficiency Based on studies of Keen and Scott-Morton 13-11 A DSS Model Environment Individual problem solvers Report writing software Other group members GDSS GDSS software software Mathematical Models Database Decision support system Environment Legend: Data Communication Information 13-12 Database Contents Used by Three Software Subsystems – Report writers » Special reports » Periodic reports » COBOL or PL/I » DBMS – Mathematical models » Simulations » Special modeling languages – Groupware or GDSS 13-13 Group Decision Support Systems Computer-based system that supports groups of people engaged in a common task (or goal) and that provides an interface to a shared environment. Used in problem solving Related areas – – – – Electronic meeting system (EMS) Computer-supported cooperative work (CSCW) Group support system (GSS) Groupware 13-14 How GDSS Contributes to Problem Solving Improved communications Improved discussion focus Less wasted time 13-15 GDSS Environmental Settings Synchronous exchange – Members meet at same time – Committee meeting is an example Asynchronous exchange – Members meet at different times – E-mail is an example More balanced participation. 13-16 GDSS Types Decision rooms – Small groups face-to-face – Parallel communication – Anonymity Local area decision network – Members interact using a LAN Legislative session – Large group interaction Computer-mediated conference – Permits large, geographically dispersed group 13-17 interaction Group Size and Location Determine GDSS Environmental Settings GROUP SIZE Face-toface MEMBER PROXIMITY Dispersed Smaller Larger Decision Room Legislative Session Local Area Decision Network ComputerMediated Conference 13-18 Groupware Functions – – – – E-mail FAX Voice messaging Internet access Lotus Notes – Popular groupware product – Handles data important to managers 13-19 Main Groupware Functions Function IBM TeamWARE Lotus Workgroup Office Notes Electronic mail X FAX X Voice messaging Internet access X Bulletin board system Personal calendaring X Group calendaring X Electronic conferencing O Task management X Desktop video conferencingO Database access O Workflow routing O Reengineering O Electronic forms O Group documents O X = standard feature O = optional feature X X X X X X X X X O O O 3 3 O 3 3 X X X 3 X 3 3 3 3 X Novell GroupWise X X X X O X X 3 X X O O 3 = third party offering 13-20 Artificial Intelligence (AI) The activity of providing such machines as computers with the ability to display behavior that would be regarded as intelligent if it were observed in humans. 13-21 History of AI Early history – John McCarthy coined term, AI, in 1956, at Dartmouth College conference. – Logic Theorist (first AI program. Herbert Simon played a part) – General problem solver (GPS) Past 2 decades – Research has taken a back seat to MIS and DSS development 13-22 Areas of Artificial Intelligence Expert systems Natural language processing Learning AI hardware Robotics Neural networks Perceptive systems (vision, hearing) Artificial Intelligence 13-23 Appeal of Expert Systems Computer program that codes the knowledge of human experts in the form of heuristics Two distinctions from DSS – 1. Has potential to extend manager’s problemsolving ability – 2. Ability to explain how solution was reached 13-24 User Instructions & information Solutions & explanations Knowledge User interface Inference engine Expert system Development engine Expert and knowledge engineer Knowledge base Problem Domain An Expert System Model 13-25 Expert System Model User interface – Allows user to interact with system Knowledge base – Houses accumulated knowledge Inference engine – Provides reasoning – Interprets knowledge base Development engine – Creates expert system 13-26 User Interface User enters: – Instructions – Information } Menus, commands, natural language, GUI Expert system provides: – Solutions – Explanations of » Questions » Problem solutions 13-27 Knowledge Base Description of problem domain Rules – Knowledge representation technique – ‘IF:THEN’ logic – Networks of rules » Lowest levels provide evidence » Top levels produce 1 or more conclusions » Conclusion is called a Goal variable. 13-28 A Rule Set That Produces One Final Conclusion Conclusion Conclusion Evidence Evidence Conclusion Evidence Evidence Evidence Evidence Evidence Evidence 13-29 Rule Selection Selecting rules to efficiently solve a problem is difficult Some goals can be reached with only a few rules; rules 3 and 4 identify bird 13-30 Inference Engine Performs reasoning by using the contents of knowledge base in a particular sequence Two basic approaches to using rules – 1. Forward reasoning (data driven) – 2. Reverse reasoning (goal driven) 13-31 Forward Reasoning (Forward Chaining) Rule is evaluated as: – (1) true, (2) false, (3) unknown Rule evaluation is an iterative process When no more rules can fire, the reasoning process stops even if a goal has not been reached Start with inputs and work to solution 13-32 Rule 1 IF A THEN B Rule 2 T Rule 7 F IF B OR D THEN K IF C THEN D Rule 3 T Rule 10 IF K AND L THEN N The Forward Reasoning Process T T IF M THEN E Rule 8 Rule 12 T IF N OR O THEN P IF E THEN L T Rule 4 IF K THEN F T Legend: Rule 9 Rule 5 IF G THEN H T IF (F AND H) OR J THEN M T First pass Rule 11 IF M THEN O T Second pass Rule 6 IF I THEN J Third pass F 13-33 Reverse Reasoning Steps (Backward Chaining) Divide problem into subproblems Try to solve one subproblem Then try another Start with solution and work back to inputs 13-34 Step 4 Rule 1 IF A THEN B T Rule 2 Step 3 Rule 7 IF B OR D THEN K T IF C THEN D The First Five Problems Are Identified Step 2 Rule 10 IF K AND L THEN N Step 5 Rule 3 IF N OR O THEN P Rule 8 IF M THEN E IF E THEN L Rule 11 Rule 9 13-35 Step 1 Rule 12 IF (F AND H) OR J THEN M IF M M IF THEN O THEN O Legend: Problems to be solved The Next Four Problems Are Identified Step 8 If N Or O Then P T Rule 4 If K Then F Rule 5 Rule 12 T Step 7 Step 6 IF (F And H) Or J Then M T If M Then O Step 9 If G Then H T Rule 6 If I Then J Rule 9 T Rule 11 Legend: Problems to be solved 13-36 Forward Versus Reverse Reasoning Reverse reasoning is faster than forward reasoning Reverse reasoning works best under certain conditions – Multiple goal variables – Many rules – All or most rules do not have to be examined in the process of reaching a solution 13-37 Development Engine Programming languages – Lisp – Prolog Expert system shells – Ready made processor that can be tailored to a particular problem domain Case-based reasoning (CBR) Decision tree 13-38 Expert System Advantages For managers – Consider more alternatives – Apply high level of logic – Have more time to evaluate decision rules – Consistent logic For the firm – Better performance from management team – Retain firm’s knowledge resource 13-39 Expert System Disadvantages Can’t handle inconsistent knowledge Can’t apply judgment or intuition 13-40 Keys to Successful ES Development Coordinate ES development with strategic planning Clearly define problem to be solved and understand problem domain Pay particular attention to ethical and legal feasibility of proposed system Understand users’ concerns and expectations concerning system Employ management techniques designed to retain developers 13-41 Neural Networks Mathematical model of the human brain – Simulates the way neurons interact to process data and learn from experience Bottom-up approach to modeling human intuition 13-42 The Human Brain Neuron -- the information processor – Input -- dendrites – Processing -- soma – Output -- axon Neurons are connected by the synapse 13-43 Simple Biological Neurons Soma (processor) Axonal Paths (output) Synapse Axon Dendrites (input) 13-44 Evolution of Artificial Neural Systems (ANS) McCulloch-Pitts mathematical neuron function (late 1930s) was the starting point Hebb’s learning law (early 1940s) Neurocomputers – Marvin Minsky’s Snark (early 1950s) – Rosenblatt’s Perceptron (mid 1950s) 13-45 Current Methodology Mathematical models don’t duplicate human brains, but exhibit similar abilities Complex networks Repetitious training – ANS “learns” by example 13-46 Single Artificial Neuron y1 w1 y2 w2 y3 w3 wn-1 yn-1 y 13-47 OUT1 OUTn The Multi-Layer Perceptron Input Layer Y1 Yn2 OutputL ayer IN1 INn 13-48 Knowledge-based Systems in Perspective Much has been accomplished in neural nets and expert systems Much work remains Systems abilities to mimic human intelligence are too limited and regarded as primitive 13-49 Summary [cont.] AI – Neural networks – Expert systems Limitations and promise 13-50