1 ITM 734 Introduction to Human Factors in Information Systems Cindy Corritore Information Visualization.

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Presentation transcript:

1 ITM 734 Introduction to Human Factors in Information Systems Cindy Corritore Information Visualization

corritore, 734 overview increasingly common to actually have all of the data potentially available  how to map and use it becomes harder and harder challenges: world of the computer and data and world of the human  bridge between the intuitive, creative, experience and the digital, analytical Solution: Involve the user!

Corritore, 2005 challenges

Corritore, 2005 challenge 1 1. growing volume of data with declining information content  provision of data ever cheaper and available  our ability to consume information largely unchanged Key Issues: exploring, navigation, browsing, immersion/involvement of human and their perceptional apparatus

Corritore, 2005 challenge 1 interactive visualization interface for exploration of network fault data (network alarm data)  experienced network administrator looks for trends/patterns  interactive with filters

Corritore, 2005 challenge 1 large information spaces

Corritore, 2005 challenge 2 2. convert appropriate data to relevant data: analysis and interpretation  summarize and compress without signif. loss of content  complex data analysis tools and models for analysis hard to use  goal: human involvement in processing and analysis of data –experience and intuition

Corritore, 2005 challenge 2 visual correlation between lightning strikes & network alarms  time series movie

Corritore, 2005 challenge 3 managing abstract problems/intangibles against increasingly short timescales  build a building - can see the progress; intangibles hard to visualize  better informed decisions  goal: retain overview of abstract problem while providing for immediate visibility of changes

Corritore, 2005 challenge 3 software development  each sphere a module (diameter - size)  lines are func. calls  change requests mapped to rate of spin

Corritore, 2005 challenge 4 communicate a vision - wide audience and increasingly conceptual  wider, less specialist audience; mix of technical, business, customer  hence, must provide a shared experience picture is worth 1,000 words

Corritore, 2005 Goal: let human observe, manipulate, search, navigate, explore, filter, discover, understand, and interact with large volumes of data rapidly

Corritore, 2005 data types 1D  lists, words  - Alice in Wonderland  fisheye – 2D  map data (gis)  google earth (street view) moving 2D to 3D  smartmoney.com -

Corritore, 2005 data types 3D  scientific visualization (molecules, etc)  ThemeView - SPIRE_Help/galaxy.html - shows documents and their relationshipshttp://in-spire.pnl.gov/IN- SPIRE_Help/galaxy.html –galaxy view –themeview  task manager – task manager

Corritore, 2005 data types 3D and file systems

Corritore, 2005 data types multi-dimensional  n-dimensional space – examples?  Spotfire – Decision GalleryDecision Gallery  Homefinder temporal  time lines (stock markets, health care) – HCI Lab for HemodialysisHemodialysis –Each row is a dialysis session with 50 parameters, time is X axis for session, z is time over sessions, Y is value of parameters

Corritore, 2005 data types temporal  variables over time River metaphor: look for themes in a document collection over time  Each attribute is mapped to a “current” in the “river”, flowing along the timeline Current width ~= strength of theme River width ~= global strength Color mapping (similar themes – same color family) Time line

Corritore, 2005 A company’s patent activity Event

Corritore, 2005 critique Strong points: Intuitive exploration of temporal changes and relations Evalutation + improvements Applicable to general attributes Weak points: Limited number of themes / attributes Interpolated values / outer attributes misleading No ability to reorder currents Performance issues

Corritore, 2005 spiral Example Spokes (months) and spiral guide lines (years) Planar spiral Distinguishable patterns (rainy season / 1984) Chimpanzees Monthly food consumption

Corritore, 2005 data types more temporal –  Time Searcher ( deos/ts2_HCILsoh2005R.html) – moviehttp:// deos/ts2_HCILsoh2005R.html  lifelines – (IE) mo/chi.html mo/chi.html

Corritore, 2005 data types trees  hierarchies (file structure)  Magnifind – on desktop  lexusnexus – had one :(  Cop - o/Visualization.htm o/Visualization.htm  Visual Thesaurus Visual Thesaurus

Corritore, 2005 challenges multiple data input combine visual and text show relationships large information spaces – overview then details collaboration? navigation must be accurate all elements must be interactive new paradigms ……

C.L. Corritore24 2D visualization Pad - 2D visualization tool (turn down colors)  widgets  presentation Counterpoint (show presentation BIB 2004)