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Visual Salience in Climate Change Imagery is in the Eye of the Beholder Julie C. Libarkin Geocognition Research Lab, Department of Geological Sciences and Center for Integrative Studies in General Science, Michigan State University, East Lansing MI, USA Stephen R. Thomas Department of Zoology and Center for Integrative Studies in General Science, Michigan State University, East Lansing MI, USA Gregory Ruetenik Geocognition Research Lab, Department of Geological Sciences, Michigan State University, East Lansing MI, USA Visual Salience in Climate Change Imagery is in the Eye of the Beholder Complex phenomena like climate change are often communicated visually. In this paper, we investigated the effectiveness of common visuals used to convey key messages about climate change. We also present a new methodology for analysis of eye tracking data that takes advantage of functionalities already available in Geographic Information Systems (GIS) software. Eye tracking analysis of two sets of images, one disseminated by an international organization and the other redesigns of these images, indicates that viewers do not always engage with images as intended. While expert scientists generally understand where to look within traditional images, novices often ignore graphical scales and keys, focus on artistic yet unimportant elements of schematic images, and view image components in random order. We show that careful image redesign can focus viewer attention on important image elements and encourage directed viewing to enhance the potential for effective communication. Keywords: eye tracking; climate change; visual communication; visual salience Introduction While recognition that Earth’s temperature is increasing has clearly risen in the past decade (Akerlof et al., 2010), many groups still hold core alternative conceptions about climate change on Earth. Limited understanding of climate change processes or implications can be found in K-12 (Sweeney & Sterman, 2007) and college (Lombardi & Sinatra, 2010) students, teachers (Papadimitriou, 2004), the general public (Weber & Stern, 2011; Whitmarsh, 2009), and other groups (Maibach, Witte, & Wilson, 2011). Early work indicated that even highly educated individuals confused ozone depletion and the greenhouse effect, as well as weather and climate, and considered global warming and the greenhouse effect to be the same phenomenon (Bostrom, Morgan, Fischhoff, & Read, 1994). These same ideas continue to be documented in multiple populations. For example, Papadimitriou (Papadimitriou, 2004) documented confusion in pre-service teachers, particularly confounding of different environmental issues, such as ozone depletion and acid rain, with the greenhouse effect. Climate change has proven to be a particularly difficult concept to communicate (Leiserowitz, 2006; Sterman, 2011; Whitmarsh & Lorenzoni, 2010), with very little traction observed in developing new perceptions, behavior and action among the general public (Fortner et al., 2000; Ockwell, Whitmarsh, & O’Neill, 2009; Whitmarsh & Lorenzoni, 2010) A wide array of suggestions for improving climate literacy have been proposed and implemented across many populations and over many years (Gowda, Fox, & Magelky, 1997; J.D. Sterman, 2011; Svihla & Linn, 2011). Scholars argue that climate change can be best conveyed through initial focus on uncovering and utilizing existing alternative conceptions (McCaffrey & Buhr, 2008; Pruneau et al., 2001; Rebich & Gautier, 2005), recognition by learners that climate change poses a concrete and immediate risk (Ungar, 2000), use of disaster narratives to encourage decision-making towards action (Lowe et al., 2006), and inclusion of elements that appeal to values and affect important in perceptions of risk related to climate change (Leiserowitz, 2006). Myriad materials to enhance climate literacy have been designed and implemented for public safety and emergency management personnel (Arndt & LaDue, 2008), college students (Rebich & Gautier, 2005) and the general public (Solomon et al., 2007). In fact, climate change instructional tools and pedagogies exist as literally thousands of documents and websites (e.g., 6061 hits returned for “climate change” at http://serc.carleton.edu/serc/). However, despite this significant effort to communicate key concepts about climate change and encourage action, the public maintains misconceptions (Weber & Stern, 2011) and is generally slow to act (Ungar, 2000). Discussion of these decades of effort recognizes the need for more research into the effectiveness of climate change communication (Moser, 2010), as well as the complex factors that influence climate change understanding (Weber & Stern, 2011). Scientific findings are often best conveyed through a combination of words and visuals (Carney & Levin, 2002; Mayer, 1989; Trumbo, 1999). Environmental communication relies heavily on the benefits of visuals to convey complex relationships between Earth’s spheres, to generate affective responses to environmental issues, and to induce behavioural change. Technological advancements allow rapid production of visuals, incorporating cutting-edge science into materials designed for general public consumption. Indeed, images have an increasingly significant presence in textbooks (Smith & Elifson, 1985), journals (Roth, Bowen, & McGinn, 1999), and public media (Dimopoulos, Koulaidis, & Sklaveniti, 2003). However, the communication value of these visuals is highly dependent upon their design (Larkin & Simon, 1987; Mayer, 1989; Trumbo, 1999; Tufte, 1983). The vast majority of research related to public understanding or attitudes towards climate change focuses on the use of existing text or images. Imagery is recognized as an important component of persuasive discourse. For the case of climate change, imagery is clearly an important aspect of materials produced to persuasively encourage public understanding and action (Hansen & Machin, 2008). By far, research into the role of the visual in conveying climate change focuses on persuasive messaging. Similarly, visuals also play a significant role in transferring knowledge about environmental concerns, possible solutions, and the role that knowledge plays in environmental behaviors (Hines, Hungerford, & Tomera, 1987). Knowledge about environmental issues indirectly affects pro-environmental behavior, primarily in light of knowledge’s direct association with variables such as social and moral norms and internal attribution of environmental problems (Bamberg & Möser, 2007). A person’s understanding of underlying mechanisms of environmental problems and their relationship to other variables also affects their ability to properly assess the impacts of their actions. Accurate transfer of information is an essential first step to environmental behavior. Image design can be used to affect low-level image processes such as preattentive attributes that precede attention, or it can influence high-level image processes that call upon long-term and working memory. Images designed to communicate scientific information might take advantage of low-level image processing (e.g. color, size, shape, or orientation) to draw attention to desired locations; whereas, high-level strategies might use iconographic images familiar to the viewers, or incorporate layouts that are typical of a discipline. The impact of image design on low or high-level image processes depends on qualities of the viewer. Most low-level strategies are typically effective for most audiences because they rely on physical/neurological characteristics of human vision and perception (i.e. a red line will typically get more attention than a black one). Even these strategies though can be ineffective for some populations, such as the inability of a colorblind individual to distinguish color added for emphasis. Many recommendations for figure and graph design focus on the qualities of the visual without addressing qualities of the viewer. Unfortunately, guiding a viewer to specific line on a graph does not mean that they can then interpret that line’s meaning. Depending on the situation, a lack of viewer consideration may affect communication. When experts in a field are communicating with other experts, less attention has to be paid to the cognitive abilities that the viewer brings to the external representation because training equalizes the differences between the producer and the viewer of the image. Despite a general recognition that novices need more guidance in interpreting a visual, (Roth et al., 1999) found that textbooks often lacked supplementary information that journal articles showed: novices were given less assistance in image interpretation that that afforded to experts. We would argue that when the objective of an image is to convey scientific information to a lay audience, more attention has to be paid to the cognitive demands that are implicit in the external representation. In modifying the UNEP images we made a series of changes to improve both low and high-level image processing of the image by naïve viewers. A number of approaches can been used to study scientific visuals and their effectiveness. Analysis of use of images, particularly photos, by news media is common (Keith, Schwalbe, & Silcock, 2010), as is comparison of student drawings and common scientific models (Ainsworth, Prain, & Tytler, 2011). Use of survey, interview, and think-aloud methods are also normal mechanisms for inquiry into image effectiveness. Less common approaches utilizing new technologies, such as Tablet PCs, have begun to generate fundamental insights into human cognition about visuals (Forbus, Usher, Lovett, Lockwood, & Wetzel, J., 2008; Turner & Libarkin, 2011). Studies of scientific visualization using eye tracking techniques have only recently begun to generate evidence for the most effective elements of visual design. Ozcelik and colleagues (2009) report on the value of color coding in conveying scientific information in visuals. In this study, an individual’s ability to identify relationships between text and images, as conveyed through color, related to improved material retention. In addition, this work suggests that the ability to more quickly identify correspondence between text and images relates to more time spent on important, conceptual elements. Eye tracking research has not yet fully ventured into analysis of interactions with authentic climate data or visuals (Breslow, Ratwani, & Trafton, 2009). This work asks fundamental questions about the efficacy of current scientific visualizations for conveying climate change messages to a general public. In particular, we utilized eye tracking techniques to consider the visual salience of UNEP images to illustrate climate change to the global public. Similar analysis of redesigns of these images allows us to consider the extent to which participant attention, discourse and comprehension are influenced by visual design. This work hypothesizes that images designed with attention to information design principles that minimize cognitive load will improve visual communication of science to the public by scaffolding any cognitive deficits of the viewer. Therefore, we would predict more variation between scientists and non-scientists in how they engage with images requiring more complicated or involved cognitive tasks, as reflected in individual gaze plots and aggregate heat maps, as well as discourse. We would also predict those differences in performance to become minimized with images that have been designed with regard to the cognitive abilities of the viewer. Methodology Sampling and Design This study was conducted with an undergraduate student sample at a large Midwestern University in the USA. Participants (n=10) were volunteers recruited from students enrolled in entry-level geoscience or geography courses. The research design mimicked the viewing behavior of an individual engaging with climate change images outside of a formal educational context. As such, participants were encouraged to engage in spontaneous looking (SL) under the simple directive to identify the main message of an image. The SL condition was chosen to replicate the type of interaction with images expected during newspaper reading, internet searching, or television viewing. Although participants were prompted to identify the main message of each image, identification of a message was not required for subjects to move on in the experimental sequence. Procedure All participants were pre-screened one day to one week before the testing date. During pre-screening, participants were tested for color normal vision through random assignment of 10 test plates from the Ishihara test plate kit. Participants also completed: a) a brief demographic survey; and b) a test of climate change conceptions consisting of one open-ended and six multiple-choice items (Table 1). On the day of testing, participants individually engaged with eye-tracking stimuli. After reading and signing a consent form, participant gaze was calibrated on a Tobii T-60 eye tracker. After calibration, participants worked through the eye tracking experiment, viewing either the original UNEP images (“O” in Table 2) or revised images (“R” in Table 2). In all, four non-science majors and one faculty engaged with the UNEP images; five non-science majors, one undergraduate science major, and one graduate student engaged with the revised images. During viewing, participants were prompted with written instructions that were also read aloud by the interviewer: “Talk about what you see, and what you are thinking. You may spend as long as you like looking at the image until you feel you understand it. You may also decide that you do not understand the image, and choose to move on. When you feel like you understand the image or are simply ready to move on, click the left mouse button. You will be prompted to answer questions after each image.” After viewing each image, participants were prompted with written instructions, “What was the main message of the image you just viewed? Talk out loud.” Finally, participants responded to one or more multiple-choice questions about each image. Over the course of the experiment, participants viewed two control images to provide training in thinking aloud, and then viewed a set of experimental images. Instrumentation This study utilized six climate change concept inventory questions to establish preexperiment conceptual understanding of climate change. These six multiple-choice items derive from the Geoscience Concept Inventory community assessment and adhere to highest standards in validity and reliability of concept inventories (Table 1; Libarkin, Ward, Anderson, Kortemeyer, & Raeburn, 2011). Questions have undergone piloting with non-science majors, teachers, environmental journalists, and have been reviewed by expert scientists to establish validity and reliability. As such, these questions are a general measure of climate change literacy. After image viewing, participants also answered image-specific multiple-choice questions designed to measure the extent to which participants were able to extract image messages. Four common IPCC images were re-designed utilizing information design approaches strategies to improve low and high-level image processing. These four images conveyed: 1) the carbon cycle, including both reservoirs and processes (Carbon Cycle), 2) Earth’s temperature in the past and projected increase into the future (Temp Increase), 3) Cost, in units of Gross Domestic Product (GDP), for stabilization of carbon dioxide in Earth’s atmosphere (GDP), and 4) Earth’s temperature and carbon dioxide levels in the past (Temp+CO2). Images were titled to convey the most important message central to the image design. This aligns with work suggesting that text and image in public media often do not align in materials communicating climate change (Anne DiFrancesco & Young, 2011). The Tobii T-60 eye tracker (Fig. 2) is built into a 17-inch TFT monitor. Participants gaze at materials on the monitor without physical restriction. This allows collection of gaze data from participants in situations similar to real-world computerbased engagement with materials, such as reading of websites or online newspapers. During calibration, research participants sit comfortably and follow a dot as it moves across the monitor; occasionally recalibration is required to ensure a high degree of data accuracy. In general, this system is able to collect data regardless of eyewear or limited pupil exposure due to drooping eyelids, and allows participants freedom of natural head movement. The system collects 60 gaze samples per second. A suite of verbal data was also collected during this experiment. During eye tracking, participants were encouraged to think aloud and articulate what they were viewing. After image viewing, participants were prompted to describe the main message of each image. Finally, participants engaged in a retrospective interview while they viewed their own gaze behavior. This allowed the interviewer an opportunity to ask for feedback on specific images. Participants were asked one or more probing questions, as: What are your general thoughts about this image? Did you like or dislike the image? What parts of the image stood out in particular? Did you have any specific feelings as you viewed the image? Do you have any suggestions for improving the image? Think aloud and retrospective interview data were considered only in relation to areas of interest uncovered through analysis of eye tracks. These data were used as support for interpretations of participant SL interactions with images. Data Analysis Eye-tracking data were analyzed relative to traditional standards and using innovative approaches. Gaze plots of eye track data were analyzed to consider common patterns in individual eye movements during SL. Gaze plot analysis offers evidence of order in which elements are viewed, including elements viewed first or longest, elements that attract, or do not attract, attention and general sense of image comprehension. More specific analysis of element gaze order provides evidence of confusion; switching repeatedly back to specific explanatory elements such as legends, for example, suggests poor messaging. Kernel density analysis, with output often termed “heat maps” in eye tracking research, provides a spatial map of longest viewed elements across a study sample. This can indicate elements that are particularly attractive or visually salient. All analyses were performed using GIS technology (ESRI ArcGIS). This allows more complex analysis of spatial-temporal data sets than standard eye tracking approaches. ArcGIS is a suite of programs commonly used by geographers and geologists for analyzing spatial, temporally independent data. The potential of ArcGIS for analyzing temporally dependent spatial data has only recently been recognized, and as far as we know ArcGIS has never been applied to conduct routine analysis of eye tracking data. Although ArcGIS does not contain many standard tools for the analysis of temporally dependent data, GIS’s interface with Python allows production of clusters and cluster centroids based on unfiltered data exported from the Tobii Eyetracking Suite. Circles of variable radii were used to represent fixation time at each centroid, and lines were drawn between successive circles to illustrate gaze paths. Gaze was recorded sixty times per second. Each gaze point recorded by the eye tracker is attached to Cartesian coordinates (in pixels), a unique time stamp, and a metric relating the degree to which the system was able to constrain corneal position. Lack of corneal constraint is common with high Hz systems, and typically results from blinking or excess subject movement. We filtered out all points where both eyes had weak corneal constraint, indicating that neither eye could be found by the system. Data were then translated over the y-axis in order to map gaze points in ArcGIS, placing them in the 4th quadrant. This is the default position for static base maps, the role played by the images being viewed by participants. We further filtered data by eliminating points not representative of fixations. In this work, a fixation is considered as a temporal construct, and was set at a minimum value of 0.1 seconds. Gaze points were eliminated as saccades if they did not fall within a search radius of 30 pixels of at least 5 other gaze points in temporal sequence. Gaze points within each other’s search radius that were not eliminated were considered to be part of the same cluster. Clusters are thus separated by saccades and numbered in the order they occurred. Cluster centroids were calculated by fitting a minimum area circle that encloses all gaze point in the cluster, with at least two points necessarily defining the boundary. The unweighted centroid of this circle is defined as the centroid of the cluster. We then created a buffer around each centroid to create a circle of radius 4√n pixels, where n is the number of points within the cluster. Thus, the area of the representative circle is directly correlated with fixation time. Traditional gaze plots were thus generated in ArcGIS by connecting each generated circle in order. Heat maps are a common display mode utilized by eye tracking researchers. Heat maps visually grade the amount of fixation time spent by one or more participants on different parts of an image. In ArcGIS, heat maps can be generated through use of the kernel density function. The kernel density assigns a numerical value to each cell within a grid of a given resolution based on the density of points around the cell. The cell is assigned the summative value of all Gaussian functions centered at points that exist within a given search radius from each cell. These functions have a maximum value of one and decrease with distance, approaching a limit of zero near the edge of the search radius. We used a cell size of 0.1 pixels and a search radius equal to 1/30th of the minimum dimension of the image; this was chosen to account for variance in resolution among images. We then assigned a color gradient to each cell ranging from light to dark red, with light red representing lower values and dark red representing higher values. Results Socio-Demographic Characteristics A total of twelve participants engaged in one-hour eye tracking and interview sessions (Table 2). Participants were Caucasian (n=7), African-American (n=3), or Other (n=2). Non-scientist participants (n=9) were eight females and one male, had engaged in one to four undergraduate science or math courses (typical of USA non-science majors) and were 20-29 years of age (M=21.6; SD=3.0). All but one non-scientist participant had at least one parent with a B.S. or higher education level; one participant’s parents were both high school non-graduates. One undergraduate science major (20 years), one graduate student (29 years) and one professor of science (55 years) were utilized as an expert control. These experts were two females and one male, respectively, and had parental education levels ranging from high school to advanced graduate education. Additional details of participant demographics are provided in Table 2. Participants were asked to rate their level of comfort reading and interpreting graphs on a scale of “not at all comfortable” (coded 1), “somewhat comfortable” (coded 2), “comfortable” (coded 3), and “very comfortable” (coded 4). Non-scientist participants reported moderate comfort reading and interpreting graphs (M=2.6; SD=0.5). The undergraduate expert reported being comfortable with reading and interpreting graphs, while both the graduate and professional expert reported being very comfortable. Climate Change Literacy Participants’ responses to the open-ended question “What is climate change?” indicate a typical range of understanding of climate. It is important to note that climate change is a natural phenomenon, with some modern increase in global temperature resulting from human activities. Responses ranged from basic weather-related explanations to explanations that encompass the spatial and temporal nature of climate. Two responses were difficult to code, although one of these participants indicated that climate is “not just a weather thing.” One non-scientist indicated a purely weatherrelated concept, as indicated by the response, “Change in weather which could result in change in temperature.” Regional variations in weather were observed in two responses, as indicated by, “How cold or warm the atmosphere changes in different regions,” and “Shifts in weather patterns over large geographic area.” Two participants indicated the global nature of climate, as in “The change in temperature and precipitation patterns around the globe, likely do [sic] to human influence.” One of these participants and a second participant articulated the importance of time in their responses, as in “The change in weather over a period of time over the entire earth.” Finally, two participants related climate change to “greenhouse gases” or “GHGs” and two articulated that climate change is human caused, as in, “…caused by humans” and “likely do [sic] to human influence.” Climate change literacy scores for eleven (of n=12) responding participants ranged from 2-6. Scientists’ scores (M=4.7; SD=1.5) were one point higher on average than non-scientists’ scores (M=3.7; SD=2.0). Conceptual understanding of climate change by experts is not expected to be perfect, since being a scientist does not imply expertise in all areas of science. The undergraduate science major scored a 3, the graduate student scored a 5 and the professional scored a 6; a similar range of scores for non-scientists was observed, from 2-6 (Table 1; Fig. 1). All participants correctly chose a response indicating that “Global warming over the past 50 years is mostly caused by human activities” (Table 1). Most participants recognized that scientists generally agree that global warming is happening, although two non-scientists indicated a belief that scientists do not agree on whether or not global warming is occurring. Participants also generally recognized that carbon dioxide concentrations have been increasing exponentially over the past 500 years. Participants had much more difficulty responding to questions about the greenhouse effect and greenhouse gases. Overall, these data suggest a population that holds some overall understanding of climate change without deeper conceptual understanding of underlying processes. Eye Tracking Results Eye tracking data were analyzed to identify differences in the SL condition between a) expert and novice viewing behavior and b) viewing behavior with original and revised images. Data were analyzed to reveal features that were visually salient as well as viewing behavior suggestive of confusion. Time-on-task and verbal data were considered as support for eye tracking data. Expert-Novice Viewing Behavior Comparison of expert and novice gaze plots indicate that experts attend to images differently than novices (Fig. 3,4). In particular, expert gaze tends to be directed towards scientifically related content. Novice gaze is often less directed, with limited fixation on scientific features or movement of gaze between features. For example, expert gaze of the original Temp+CO2 image indicates that the expert (in this case an undergraduate scientist) recognizes the importance of graph axes in explaining plotted data. This participant also spends time moving between related highs and lows on the temperature and CO2 graphs. In contrast, most novices fixate randomly on data. As shown in Fig. 4, the gaze pattern does not suggest recognition of connections between the two data sets; rather, the novice is fixating on graphical elements in seemingly random order. In both cases, text elements, such as the title, receive significant attention. In addition, the novice fixates on the x-axis labels of the graph (Fig. 4); this is unusual for most novice gaze on graphical elements observed in this study. Original Versus Revised Images Individual gaze plots provide insight into potential confusion and underlying cognition potentially driving viewing behavior (Fig. 5, 6, 7, 8). Gaze plots relative to the original Carbon Cycle image (Fig. 5) indicate that participants generally viewed the image in a disjointed manner, with multiple undirected and repetitive views of the same features. This disjointed viewing was in evidence even for experts, as shown in Figure 5. In contrast, participants viewed the revised Carbon Cycle image (Fig. 6) almost cyclically, moving from specific features in generally uniform patterns. This cyclic viewing occurred regardless of expertise, as shown with the novice view illustrated in Fig. 6. More complex gaze patterns for other participants retained their cyclic nature, with repeated visits to features generally following the specified pathways shown within the image itself. Participant viewing of graphs (Fig. 7,8) was much more directed than viewing of abstract representations (Fig. 5,6), regardless of expertise level. Gaze plots of the “hockey stick curve” image indicate that participants view titles and data in most cases, and legends in some cases (Fig. 6). Interestingly, neither horizontal nor vertical scales attract much attention. As with more abstract representations (Fig. 5), viewing behavior is undirected and visual paths cross many times during viewing (Fig. 7). Viewing of the revised image illustrating just temperature change indicates that participants generally are directed in their viewing, moving from the data to one or both axes and to legends (Fig. 8). In the particular case shown, the participant gazes at the image title, the legend, and each point on the axes in turn. Note the similarity between this gaze pattern and the gaze pattern of an expert (scientist) viewing another graph (Fig. 9). This image highlights the data-driven gaze behavior of experts viewing graphs. Expert gaze moves from the data towards the horizontal and vertical axes. Aggregate analysis of viewing behavior across original and revised images illustrates differences in overall gaze behavior. Kernel density analysis of novice views of the original (Fig. 10) and revised (Fig. 11) Carbon Cycle images indicates that text elements consistently attract viewer gaze and fixation. In the original image, artistic elements, specifically the drawing of a vegetated hillside and a factory, also attract significant attention. Of note is the more diffuse nature of the heat map of aggregate fixations on the original image relative to the revised image. This indicates that the sample of participants interacted with the revised image more uniformly than the sample interacting with the original image. Comparison of kernel densities produced for the original (Fig. 12) and revised (Fig. 13) images relating temperature change over time and into the future (Temp Increase) illustrates striking similarities and differences in aggregate fixations across the two graphs. Fixations in both instances are concentrated on the most important parts of the temperature curve, the increase in temperature in the 20th century and projected increase into the future. In the original case (Fig. 12), this viewing is coupled by weak viewing of the two axes that contain the meaning for these data. In the revised case (Fig. 13), participants independently view each axis label as well as the legend. Viewing patterns in the revised context are similar cross all participants, as represented in Fig. 8. As noted in nearly all of our studies, text elements attract significant attention. In Figure 12, these text elements relate to many different messages, including the sole message conveyed in Figure 13, “Temperature increases in modern times”. The representation of multiple messages in a single image results in a diffuse gaze pattern (Fig. 12), while focus on a single message (Fig. 13) yields fixations specifically related to that single message. Discussion Eye tracking data can provide unique insight into the communication potential of images generated to explain climate change concepts. Viewing behavior across the suit of images studied here was highly variable across participants and images. While differences in behavior could result from individual differences in the sample studied, we can draw some general interpretations about the communication potential of the original and revised images. In general, we find that experts engage with both original and revised images with more purposeful gaze behavior than novices. Experts attend to scientifically important aspects of image, while novices may completely ignore important components, as with graph axes. Interestingly, both experts and novices attend to text elements in graphics, suggesting that messages conveyed visually should be supported by verbal cues. Differences in gaze behavior between the original and revised images were noted and suggest that an information-based approach to image design can yield novice gaze behavior that mimics that of experts. The revision of the Temp Increase image (Fig. 13) is particularly illustrative of this effect. Novice engagement with the original image (Fig. 12) was undirected, with gaze that moved disjointedly between image elements. Novices did not actively engage with data to identify meaning, but rather moved between text and colored elements in ways that suggested limited data-driven understanding. In contrast, novice engagement with the revised Temp Increase image was often purposeful (e.g., Fig 13). The observation of gaze behavior that moves between data and data-explanatory elements is exactly the behavior the image is intended to induce. Participant discourse suggests additional differences in interactions with images that is worth exploring in future research. For example, understanding of the original carbon cycle image (Fig. 5) may be more focused on carbon reservoirs than on the processes that move carbon. One participant viewing and describing this original image indicated, for example, described the carbon cycle in this way [italics and bold added]: “…I can see plants, I can see buildings, I can see water, I can see oil or gas deposits, so I would say the plants are taking in the carbon dioxide through the process of photosynthesis. Then … I would say the carbon dioxide is also being the soil takes part of it in and then let’s see, I mean I see fossil fuel emissions pretty much if we burn fossil fuels carbon dioxide is released.” This quote contains six different reservoirs (in italics) and two processes (in bold). In contrast, a participant viewing the revised carbon cycle image articulated a more balanced relationship between reservoirs and processes [italics and bold added], “This is the image of the carbon dioxide ...cycle showing that plants take it in, animals let off.... Showing the cycle of carbon dioxide and how it goes through the atmosphere. The main message was that water removes most carbon.” This difference in discourse across the two images suggests that the revised image (Fig. 6) could be more appropriate for encouraging a level of systems thinking of importance in understanding the carbon cycle. A second example of differences in image interactions suggested by participants’ words is found in the original and revised images conveying temperature change (Temp Increase; Fig. 12, 13). A participant viewing and describing the original image relied almost completely on prior learning to explain the image, “… the year 1000 to like the year 1900. But then you see from like the 21st Century from 2000 the temperature increases rapidly and I’ll say based on my learning in class and when we talk about global warming it is occurring and that would based off, yeah I would say based off of global warming you have…temperatures in recent years so if we are in the 21st Century the graph definitely shows more of what I think would be global warming, …that increase. Because when you see the year 1000 to 1900 just like it’s slightly changing…from the year 2000 rapid increase.” Very little of this quote relates to the image itself, except for the discussion of temperature change between 1900 and 2000 and the rate of change after 2000. This participant explicitly calls upon learning in class to explain the image’s content, and brings non-image related language, such as “global warming” into their description. In contrast, a participant viewing the revised image provided a description solely related to content in the image itself, “This is a line graph showing temperature increases in modern times from 1600 to 2000. Year along the Xaxis, temperature…on the Y-axis… The mean whole temperature stay relatively constant at about 56 degrees Fahrenheit for about 300 years and begin to climb in the 1900’s to about 56.5, levelled and increased a little bit and then have been increasing at a linear rate since then of about 2 degrees according to the projection. The main message of the image is the temperatures remained fairly steady on a global basis until 1600 to 1900 and then they begin to increase.” Certainly, these differences may arise from individual differences in participant perception resulting from image cueing or individual difference; regardless, they warrant further study. Support for some of our suggested revisions can also be found in participant’s own words. For example, a viewer of the original Temp+CO2 image (Fig. 5) suggested that “It might be interesting to see the two lines on just one graph so you could see exactly where they line up and where they don’t…” in response to the prompt, “Do you think there is any way to improve this image…?” This suggested revision is actually identical to the information design oriented revision made in this study (Fig. 6). Finally, participants were given an unlimited amount of time to view images. Non-scientists engaged with images for both very short and relatively long periods of time, while experts engaged with images in consistent ways (Table 3). In particular, some novices engaged with images for as little as seven seconds before moving on, while other novices engaged with the same images for over 100 seconds. Experts tended towards intermediate viewing times. The small sample size prohibits analysis of timeon-task to consider the efficiency of images for conveying information, although this is the focus of ongoing study with larger samples. Conclusions Scholars, reporters, and activists have long recognized the value of visuals in communication. The work presented here illustrates the importance of design in encouraging viewing behavior as intended by the designer, providing a first glimpse into the efficiency of climate change images as documented by eye tracking. This work illustrates the disconnect that exists between how experts and novices view the same image. Traditional images are excellent tools for conveyance of messages between experts, specifically between experts who bring a similar body of knowledge to image viewing. Images are viewed differently in the absence of that body of knowledge, and novices do not always interact with visual messages as intended. One powerful tool for assessing novice interaction with visuals is eye tracking. Current state-of-the-art in analysis of eye tracking data, however, does not live up to the potential of the data themselves. The application of GIS technologies to analysis of eye tracking data proved fruitful here, with potential for powerful application of statistical approaches already inherent to GIS programs. Future efforts to apply existing spatial analyses to eye tracking data such as those presented here should be explored. For example, quantitative analysis, rather than simple qualitative comparisons, of differences between expert and novice gaze paths is possible in GIS. This study suggests that 1) Images created by scientists are not necessarily effective mechanisms for knowledge transfer to novice populations; and 2) Re-designed images may, or may not, be more effective. Certainly, the re-design of the Temp Increase image (Fig. 13) generated viewing patterns that were overwhelmingly more directed than with the original image (Fig. 12), as well as discourse which suggested more expert-like understanding among novices. Other redesigns, such as the Carbon Cycle image (Fig. 11), generated viewing patterns that are not clearly more amenable to knowledge transfer than the original image (Fig. 10). The evaluation and production of images for communication with the general public is perhaps more complex than we as scientists have assumed. Consideration of the bodies of literature on learning, cognitive processing, graphic design, information design, and semiology together provide a useful roadmap for effective design of scientific images. We propose a process for creating visuals for scientific communication that includes three elements: 1. Establishing the objectives behind creating a visual. This requires that communicators recognize the value of information, consider which information is necessary for novice understanding of a process, and indeed which processes are necessary for overall novice understanding and action. For example, one might argue that understanding all of the reservoirs of carbon on Earth is not a necessary prerequisite for minimizing one’s own carbon footprint. 2. Creating a visual, or evaluating existing visuals, by considering the graphic elements inherent to the visual. This would include, for example, considering the appropriateness of the level of abstraction inherent to the image, required background knowledge of the viewer to correctly interpret the image, or recognizing the role of graphic components at drawing visual attention. 3. Documenting the interaction between the graphic and the intended viewer. This might include think-aloud discussions, eye tracking, focus groups, user testing or other approaches that document the true interaction between a viewer and a visual. For example, one should consider whether or not viewers are able to identify points and trends within a graphic and whether or not viewers recognize the meaning behind those points and trends. Most importantly, image designers must show that viewers grasp the intended objective of a visual. In the previous work, we show that in many cases viewers simply do not understand underlying objectives, or may leave with erroneous understanding. Ultimately, the message conveyed by a visual depends strongly on viewer interactions. Viewers cannot learn from an image when they do not fixate on the appropriate aspects of an image that are required to convey a scientific message. Similarly, encouragement of specific viewing patterns, such as the cyclic pattern exhibited by viewers of the revised Carbon Cycle image (Fig. 6) or the data-driven viewing observed for graph viewing (Fig. 8), is a necessary first step for acquiring an understanding of key scientific processes. The presence of multiple messages in a single image, as in Figure 12, can also result in undirected gaze patterns for novices unfamiliar with the knowledge base that experts bring to image viewing. Use of information design principles can engender those viewing patterns most likely to coincide with information transfer. Assessing what viewers know and can do in conjunction with image development is essential for knowledge transfer. We conclude that information design should play a key role in generating visuals for climate change communication. References Ainsworth, S., Prain, V., & Tytler, R. (2011). Drawing to Learn in Science. 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(D) Gases in the atmosphere that are produced as plants grow. (E) I do not know. 4. If human civilization had never developed on Earth, would there be a greenhouse effect? (A) Yes, the greenhouse effect is caused by naturally occurring gases. (B) Yes, the greenhouse effect is caused by plants giving off gases. (C) No, the greenhouse effect is caused by humans burning fossil fuels. (D) No, the greenhouse effect is caused by humans depleting ozone. (E) No, there is no conclusive evidence that a greenhouse effect exists. (F) I do not know. 5. Which of the following statements about global warming over the past 50 years most closely reflects your viewpoint? (A) Global warming over the past 50 years is mostly caused by human activities. (B) Global warming over the past 50 years is mostly caused by natural processes. (C) Global warming has not really occurred over the past 50 years. (D) I do not know. 6. Which description best represents your understanding of how the amount of carbon dioxide in the atmosphere has changed over the past 500 years? (A) No change. (B) Linear increase. (C) Linear decrease. (D) Exponential increase. (E) Exponential decrease. (F) I do not know. 7. Which of the following best describes the relationship between the greenhouse effect and global warming? (A) The greenhouse effect and global warming are likely the same thing. (B) Without the greenhouse effect, there would be almost no global warming. (C) Without global warming, there would be almost no greenhouse effect. (D) The greenhouse effect and global warming are likely unrelated. (E) There is no definite proof that either the greenhouse effect or global warming exists. (F) I do not know. Participant Responses* Students, n=8 (Scientists, n=3) See text. (A) (B) (C) (D) 6 (3) 0 2 0 (A) (B) (C) (D) (E) 3 (2) 3 1 (1) 1 0 (A) (B) (C) (D) (E) (F) 2 (1) 1 3 (1) 1 (1) 1 0 (A) (B) (C) (D) 8 (3) 0 0 0 (A) (B) (C) (D) (E) (F) 0 1 0 6 (3) 1 0 (A) (B) (C) (D) (E) (F) 2 (1) 5 (2) 1 0 0 0 *One student did not provide responses to the climate change concept inventory. Table 2. Participant demographics and prior knowledge. Undergraduate Male Guardian Female Guardian Comfort Reading and Climate Change Science Courses Educ. Level Educ. Level Interpreting Graphs Literacy 002 O F 21 O 4 B.S. B.S. 2 6 003 O F 20 C 2 M.S.+ B.S. 2 005 O F 21 C 1 M.S.+ M.S.+ 3 4 009 O F A 2 B.S. B.S. 2 4 001 R F 20 C 2 Some College H.S. 2 2 004 R F 21 C 3 M.S.+ B.S. 3 4 006 R F 29 C 3 Some H.S. Some H.S. 3 6 008 R M 20 A 1 B.S. Some College 3 5 010 R F 21 A 2 M.S.+ M.S.+ 3 2 4 M.S.+ M.S.+ 3 007* O F 20 O 3 011** O F 29 C 4 M.S.+ B.S. 4 6 012*** R M 55 C 4 H.S. H.S. 4 5 Notes: * undergraduate science major **graduate science student ***science faculty. Ethnicity: C=Caucasian, A = African-American/Black; O = Other or Mixed. Participant Image Set Gender Age Ethnicity Table 3. Time-on-task for original and revised images. Image Novice Time (sec) Expert Time (sec) Min Max Avg Min Max Avg Carbon Cycle – Original 14.3 98.5 50.4±35.8 44.1 47.1 45.6±2.1 Carbon Cycle – Revised 20.3 86.5 53.0±25.7 --- --- 72.3 GDP – Original 25.2 95.6 62.1±37.9 75.2 106.2 90.7±22.0 GDP - Revised 19.3 80.5 51.2±20.8 --- --- 121.3 Temp+CO2 – Original 34.7 89.8 59.7±22.9 41.0 74.6 57.8±23.7 Temp+CO2 – Revised 7.4 132.0 58.1±45.3 --- --- 35.8 Temp Increase – Original 24.2 96.1 53.6±33.2 34.9 75.0 55.0±28.3 Temp Increase - Revised 9.7 92.8 42.9±45.3 --- --- 56.3 Figure 1. Participant scores on climate change concept inventory. All participants exhibited some knowledge of climate change. Figure 2. The third author engaging with the Tobii T-60 eye tracker in the research lab. Figure 3. Individual gaze path for expert viewing the original Temp+CO2 image. This and subsequent gaze paths were generated in ArcGIS. Figure 4. Individual gaze path for novice viewing the original Temp+CO2 image. Figure 5. Individual gaze path for expert viewing the original image illustrating the Carbon Cycle. Figure 6. Individual gaze path for novice viewing the revised Carbon Cycle image. Figure 7. Individual gaze paths for novice viewing the original image Temp Increase image, sometimes called the “hockey stick curve.” Figure 8. Individual gaze paths for novice viewing the revised Temp Increase image. Figure 9. Partial gaze path for expert viewing the revised GDP image. Figure 10. Kernel density analysis across all novice participants (n=4) viewing the original image illustrating the Carbon Cycle. Kernel density analysis shown here and in subsequent images were generated in ArcGIS, and are equivalent to the standard heat map used in eye tracking reports. Figure 11. Kernel density analysis across all novice participants (n=4) viewing the revised Carbon Cycle image. Figure 12. Kernel density analysis across all novice participants (n=4) viewing the original Temp Increase image. Figure 13. Kernel density analysis across all novice participants (n=4) viewing the revised Temp Increase image.