1 / 68

Lecture 12: Interaction and Analysis User Interface Methods and Tasks

Lecture 12: Interaction and Analysis User Interface Methods and Tasks. October 19, 2010 COMP 150-12 Topics in Visual Analytics. Lecture Outline. Decision Matrix (. Interaction and Analysis Definition Interaction with data and problem Relationship between interaction and problem-solving

lamar
Télécharger la présentation

Lecture 12: Interaction and Analysis User Interface Methods and Tasks

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Lecture 12:Interaction and AnalysisUser Interface Methods and Tasks October 19, 2010 COMP 150-12Topics in Visual Analytics

  2. Lecture Outline Decision Matrix ( • Interaction and Analysis • Definition • Interaction with data and problem • Relationship between interaction and problem-solving • Types of analysis problems • Analytical methods • Interaction with visual interfaces • Basic interaction types • Sample interaction methods • Interaction with other people • Collaborative analysis (CSCW) • Can interaction exist without visualization? • Design flow of interactive visualization tools

  3. Interaction Elements • A few existing taxonomies • Low-level interaction techniques

  4. Interaction Elements • A few existing taxonomies • Dimensions of Interaction Techniques • Tweedie (1997) • Spence (2007) • Interaction Operations • Ward and Yang (2004) • User Tasks • Zhou and Feiner (1998) • Amar, Eagan, Stasko (2005)

  5. Interaction Types • Yi, Kang, and Stasko (2007) • Select: • Mark something as interesting • Explore: • Show me something else • Reconfigure: • Show me a different arrangement • Encode: • Show me a different representation • Abstract/Elaborate: • Show me more or less detail • Filter • Show me something conditionally • Connect • Show me related items

  6. 1. Select • Select: mark something as interesting • Dust & Magents • http://www.cc.gatech.edu/gvu/ii/dnm/

  7. 1. Select • Select: mark something as interesting • TableLens

  8. 1. Select • Questions: • What are you selecting? One item at a time? • Selecting of a value? • Selecting of a range? • Selecting of a position on the screen?

  9. 2. Explore • Show me something else • Scroll bars • Panning • Direct-Walk • Hyperlink traversal • Visual Thesaurus (http://www.visualthesaurus.com/)

  10. 3. Reconfigure • Show me a different arrangement • Sorting in TableLens

  11. 3. Reconfigure • Show me a different arrangement • Baseline adjustment in a stacked histogram

  12. 3. Reconfigure • Show me a different arrangement • Geotime

  13. 3. Reconfigure • Show me a different arrangement • Data Mountain

  14. 3. Reconfigure • Show me a different arrangement • Reducing occlusion (jitter)

  15. 4. Encode • Show me a different representation • Spotfire, Tableau, Xmdv (switching visualization) • Changing color encoding • Changing other encodings: • Size, orientation, font, shape, etc.

  16. 5. Abstract / Elaborate • Show me more or less detail • SequoiaView (Cushion Treemap) – drill up/down

  17. 5. Abstract / Elaborate • Show me more or less detail • Sunburst

  18. 5. Abstract / Elaborate • Show me more or less detail • SeeIT (tool tips)

  19. 5. Abstract / Elaborate • Show me more or less detail • Probes

  20. 5. Abstract / Elaborate • Show me more or less detail • Zooming in geographical visualizations

  21. 6. Filter • Show me something conditionally • Dynamic HomeFinder

  22. 6. Filter • Show me something conditionally • Attribute Explorer

  23. 6. Filter • Show me something conditionally • Name Voyager • http://www.babynamewizard.com/name-voyager

  24. 7. Connect • Show me related items • Highlight associations and relationships • Show hidden data items that are relevant to a specific item

  25. 7. Connect • Show me related items • Coordinated Multiple Views (CMV) • Brushing and Linking

  26. 7. Connect • Show me related items • Snap-Together Visualization

  27. 7. Connect • Show me related items • Snap-Together Visualization (system architecture)

  28. 7. Connect • Show me related items • Collaborative Brushing and Linking • http://www.youtube.com/watch?v=E9izFMJ5yms

  29. Discussion • Other interactions?

  30. Discussion • Other interactions? • Undo, redo? • Change configurations and settings of a system/visualization?

  31. Discussion • Interactions that encode multiple goals • Pad++ • (http://www.youtube.com/watch?v=62KcJ09k7cE) • Magic Lens

  32. Discussion • Higher-level concepts • Compare?

  33. Discussion • Higher-level concepts • Compare? • Filter data to compare items of interest • Reconfigure to compare two subsets • Encode variables for adding contrast

  34. Questions?

  35. Discussion • Was that really a taxonomy of interactions? Or was it a taxonomy of visualizations? • Are the two separable?

  36. Interaction Or Visualization • If someone asks you to design a system to analyze the census, where do you start?

  37. Interaction-Centric? • Can we consider interactions first before thinking of visual representations? • What if interactions == analysis tasks?

  38. Case Study: Brushing and Linking • The linchpin in most visualizations that utilize multiple coordinated views. • Spotfire, GeoVISTA, JIGSAW, etc. • However, when used in a collaborative environment, it’s purpose becomes slightly different even though the implementation is (mostly) the same. [Isenberg et al. 2009] • Hypothesis: the nature of Brushing and Linking is to coordinate between different perspectives of the same data elements, especially for data of high dimensionality. • It is now easier to consider a system design around this…

  39. Analytic Activity in Information Visualization • Wehrend and Lewis (1990) • Identify • Locate • Distinguish • Categorize • Cluster • Distribution • Rank • Compare • Within and between relations • Associate • Correlate

  40. Analytic Activity in Information Visualization • Roth and Mattis (1990) • Display functions • Vary presentation of data based on whether users desire exact value lookup, comparison, or correlation • Distribution functions • How to distribute a dataset within the presentation

  41. Analytic Activity in Information Visualization • Zhou and Feiner (1998) • Two Intents: • Inform • Elaboration and summarization of data • Enable • Data exploration and derivation of relationships

  42. Analytic Activity in Information Visualization • Card and Pirolli (2005)

  43. Analytic Activity in Information Visualization • Amar, Eagan, Stasko (2005) • Retrieve value • Filter • Compute derived value • Find extremum • Sort • Determine range • Characterize distribution • Find anomalies • Cluster • Correlate

  44. Analytic Activity in Information Visualization • Amar, Eagan, Stasko (2005) • Retrieve value • What are the values of attributes X, Y, Z in the data points A, B, C? • Filter • Which funds under-performed the S&P 500 last year? • Compute derived value • What is the average income of CS grad students? • Find extremum • Which car has the highest MPG? • Sort • Order the cars by horse power

  45. Analytic Activity in Information Visualization • Amar, Eagan, Stasko (2005) • Determine range • What is the length of this film? Who are the actors in this movie? • Characterize distribution • What is the age distribution of shoppers who purchase cars with 40+ MPG? • Find anomalies • Who are the outliers? • Cluster • Which cars are similar to each other in MPG, horse power, and price? • Correlate • Is there a relationship between horse power and MPG?

  46. Higher-level Tasks • What do we want to do in analysis? • Decision making under uncertainty • Better understand a domain or a problem • Identify the trends of a phenomenon • Forecast the future • Etc. • Gaps from high to low level to interaction level? • What’s missing?

  47. Questions?

  48. Interaction Costs • Lam (2008), survey of 484 papers • Decision costs to form goals • System-power costs to form system operations • Multiple input mode costs to form physical sequences • Physical-motion costs to execute sequences • Visual-cluttering costs to perceive state • View-change costs to interpret perception • State-change costs to evaluate interpretation

  49. Interaction Costs

  50. 1. Decision costs to form goals • When interfaces become more powerful and display more data points, users usually need to • decide to focus on a subset of data, and • interface options

More Related