VALTChessVA IntroAppsWrap-up 1/25 User-Centric Visual Analytics Remco Chang Tufts University Department of Computer Science.

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VALTChessVA IntroAppsWrap-up 1/25 User-Centric Visual Analytics Remco Chang Tufts University Department of Computer Science

VALTChessVA IntroAppsWrap-up 2/25 Human + Computer Human vs. Artificial Intelligence Garry Kasparov vs. Deep Blue (1997) – Computer takes a “brute force” approach without analysis – “As for how many moves ahead a grandmaster sees,” Kasparov concludes: “Just one, the best one” Artificial vs. Augmented Intelligence Hydra vs. Cyborgs (2005) – Grandmaster + 1 chess program > Hydra (equiv. of Deep Blue) – Amateur + 3 chess programs > Grandmaster + 1 chess program

VALTChessVA IntroAppsWrap-up 3/25 Visual Analytics = Human + Computer Visual analytics is "the science of analytical reasoning facilitated by visual interactive interfaces.“ 1 By definition, it is a collaboration between human and computer to solve problems. 1. Thomas and Cook, “Illuminating the Path”, 2005.

VALTChessVA IntroAppsWrap-up 4/25 Example: What Does (Wire) Fraud Look Like? Financial Institutions like Bank of America have legal responsibilities to report all suspicious wire transaction activities (money laundering, supporting terrorist activities, etc) Data size: approximately 200,000 transactions per day (73 million transactions per year) Problems: – Automated approach can only detect known patterns – Bad guys are smart: patterns are constantly changing – Data is messy: lack of international standards resulting in ambiguous data Current methods: – 10 analysts monitoring and analyzing all transactions – Using SQL queries and spreadsheet-like interfaces – Limited time scale (2 weeks)

VALTChessVA IntroAppsWrap-up 5/25 WireVis: Financial Fraud Analysis In collaboration with Bank of America – Develop a visual analytical tool (WireVis) – Visualizes 7 million transactions over 1 year – Beta-deployed at WireWatch A new class of computer science problem: – Little or no data to train on – The data is messy and requires human intelligence Design philosophy: “combating human intelligence requires better (augmented) human intelligence” R. Chang et al., Scalable and interactive visual analysis of financial wire transactions for fraud detection. Information Visualization,2008. R. Chang et al., Wirevis: Visualization of categorical, time-varying data from financial transactions. IEEE VAST, 2007.

VALTChessVA IntroAppsWrap-up 6/25 WireVis: A Visual Analytics Approach Heatmap View (Accounts to Keywords Relationship) Strings and Beads (Relationships over Time) Search by Example (Find Similar Accounts) Keyword Network (Keyword Relationships)

VALTChessVA IntroAppsWrap-up 7/25 Applications of Visual Analytics Political Simulation – Agent-based analysis – With DARPA Global Terrorism Database – With DHS Bridge Maintenance – With US DOT – Exploring inspection reports Biomechanical Motion – Interactive motion comparison R. Chang et al., Two Visualization Tools for Analysis of Agent-Based Simulations in Political Science. IEEE CG&A, 2012

VALTChessVA IntroAppsWrap-up 8/25 Applications of Visual Analytics Where When Who What Original Data Evidence Box R. Chang et al., Investigative Visual Analysis of Global Terrorism, Journal of Computer Graphics Forum, Political Simulation – Agent-based analysis – With DARPA Global Terrorism Database – With DHS Bridge Maintenance – With US DOT – Exploring inspection reports Biomechanical Motion – Interactive motion comparison

VALTChessVA IntroAppsWrap-up 9/25 Applications of Visual Analytics R. Chang et al., An Interactive Visual Analytics System for Bridge Management, Journal of Computer Graphics Forum, To Appear. Political Simulation – Agent-based analysis – With DARPA Global Terrorism Database – With DHS Bridge Maintenance – With US DOT – Exploring inspection reports Biomechanical Motion – Interactive motion comparison

VALTChessVA IntroAppsWrap-up 10/25 Applications of Visual Analytics R. Chang et al., Interactive Coordinated Multiple-View Visualization of Biomechanical Motion Data, IEEE Vis (TVCG) Political Simulation – Agent-based analysis – With DARPA Global Terrorism Database – With DHS Bridge Maintenance – With US DOT – Exploring inspection reports Biomechanical Motion – Interactive motion comparison

VALTChessVA IntroAppsWrap-up 11/25 Talk Outline Discuss 3 Visual Analytics problems from a User-Centric perspective: 1.One optimal visualization for every user? 2.Can a user’s reasoning process be recorded and stored? 3.Can such reasoning processes and knowledge be expressed quantitatively?

VALTChessVA IntroAppsWrap-up 12/25 1. Analysis of Visualization Designs: Is there an optimal visualization?

VALTChessVA IntroAppsWrap-up 13/25 What’s the Best Visualization for You? Jürgensmann and Schulz, “Poster: A Visual Survey of Tree Visualization”. InfoVis, 2010.

VALTChessVA IntroAppsWrap-up 14/25 Experiment Procedure 4 visualizations on hierarchical visualization – From list-like view to containment view 250 participants using Amazon’s Mechanical Turk Questionnaire on “locus of control” (LOC) – Definition of LOC: the degree to which a person attributes outcomes to themselves (internal LOC) or to outside forces (external LOC) R. Chang et al., How Locus of Control Influences Compatibility with Visualization Style, IEEE VAST V1 V2 V3 V4

VALTChessVA IntroAppsWrap-up 15/25 Results Personality Factor: Locus of Control – (internal => faster/better with containment) – (external => faster/better with list)

VALTChessVA IntroAppsWrap-up 16/25 2. Study of Expert Users’ Interactions: Does Interaction Logs Contain Knowledge?

VALTChessVA IntroAppsWrap-up 17/25 What is in a User’s Interactions? Goal: determine if a user’s reasoning and intent are reflected in a user’s interactions. Analysts Grad Students (Coders) Logged (semantic) Interactions Compare! (manually) Strategies Methods Findings Guesses of Analysts’ thinking WireVis Interaction-Log Vis

VALTChessVA IntroAppsWrap-up 18/25 What’s in a User’s Interactions From this experiment, we find that interactions contains at least: – 60% of the (high level) strategies – 60% of the (mid level) methods – 79% of the (low level) findings R. Chang et al., Recovering Reasoning Process From User Interactions. CG&A, R. Chang et al., Evaluating the Relationship Between User Interaction and Financial Visual Analysis. VAST, 2009.

VALTChessVA IntroAppsWrap-up 19/25 3. Quantifying Domain Knowledge: Can Knowledge be Represented Quantitatively?

VALTChessVA IntroAppsWrap-up 20/25 Iterative Interactive Analysis

VALTChessVA IntroAppsWrap-up 21/25 Direct Manipulation of Visualization Linear distance function: Optimization:

VALTChessVA IntroAppsWrap-up 22/25 Results Tells the users what dimension of data they care about, and what dimensions are not useful! Blue: original data dimension Red: randomly added dimensions X-axis: dimension number Y-axis: final weights of the distance function Using the “Wine” dataset (13 dimensions, 3 clusters) – Assume a linear (sum of squares) distance function Added 10 extra dimensions, and filled them with random values

VALTChessVA IntroAppsWrap-up 23/25 Summary

VALTChessVA IntroAppsWrap-up 24/25 Summary While Visual Analytics have grown and is slowly finding its identity, There is still many open problems that need to be addressed. I propose that one research area that has largely been unexplored is in the understanding and supporting of the human user.

VALTChessVA IntroAppsWrap-up 25/25