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CS 5764 Information Visualization Dr. Chris North
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Today 1.What is Information Visualization? 2.Who cares? 3.What will I learn? 4.How will I learn it?
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1. What is Information Visualization? The use of computer-supported, interactive, visual representations of abstract data to amplify cognition –Card, Mackinlay, Shneiderman
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The Big Problem Data Human How? Data Transfer
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The Big Problem Data Human How? Data Transfer Vision: Aural: Smell: Haptics Taste esp
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Human Vision Highest bandwidth sense Fast, parallel Pattern recognition Pre-attentive Extends memory and cognitive capacity (Multiplication test) People think visually Brain = 8 lbs, vision = 3 lbs Impressive. Lets use it!
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Find the Red Square:
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Pre-attentive
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Which state has highest Income? Avg? Distribution? Relationship between Income and Education? Outliers?
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Per Capita Income College Degree %
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%
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Visual Representation Matters! Text vs. Graphics What if you could only see 1 state’s data at a time? (e.g. Census Bureau’s website) What if I read the data to you? Graphics vs. Graphics depends on user tasks, data, …
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History: Static Graphics Minard, 1869
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The Big Problem Data Human visualization Data Transfer
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The Bigger Problem Data Human interactive visualization Data Transfer
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Interactive Graphics Homefinder
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Search Forms Avoid the temptation to design only a form-based search engine More tasks than just “search” How do I know what to “search” for? What if there’s something better that I don’t know to search for? Hides the data Only supports Q&A How can search be integrating with visualization?
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User Tasks Easy stuff: Min, max, average, % These only involve 1 data item or value Hard stuff: Patterns, trends, distributions, changes over time, outliers, exceptions, relationships, correlations, multi-way, combined min/max, tradeoffs, clusters, groups, comparisons, context, anomalies, data errors, Paths, … Excel can do this Visualization can do this!
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More than just “data transfer” Glean higher level knowledge from the data Learn = data insight Reveals data Reveals knowledge that is not necessarily “stored” in the data Insight! Hides data Hampers knowledge Nothing learned No insight
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Some Philosophy… bigger picture: Insight Vs. statistics, data mining, … Formal vs informal even bigger: Visual Analytics Interaction as central Perception -> cognition Visualization in context
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Class Motto Show me the data!
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2. Who Cares?
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Presentation is everything
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My Philosophy: Optimization Visualization = the best of both Impressive computation + impressive cognition Computer Serial Symbolic Static Deterministic Exact Binary, 0/1 Computation Programmed Follow instructions Amoral Human Parallel Visual Dynamic Non-deterministic Fuzzy Gestalt, whole, patterns Understanding Free will Creative Moral
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3. What Will I Learn? Design interactive visualizations Critique existing designs and tools Develop visualization software Empirically evaluate designs Understand current state-of-art An HCI focus A visualization = a user interface for data *
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Topics Information Types: Multi-D 1D, 2D, 3D spatial Hierarchies/Trees Networks/Graphs Document collections Analytics: Analytic theories Analytic methods Strategies: Design Principles Interaction strategies Navigation strategies Visual Overviews Multiple Views Empirical Evaluation Development Theory High-Resolution Displays
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