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Human Logging for Evaluating InfoVis Nathalie Riche, Microsoft Research
April 5, 2010 nath@microsoft.com 2 System Logging Accuracy Time Tasks Observations Interviews Insights Human Logging
Insights Units of discovery Aha! Moments Answers to questions users did not even know they had April 5, 2010 nath@microsoft.com 3
 Investigating 		Physiological Computing April 5, 2010 nath@microsoft.com 4
April 5, 2010 nath@microsoft.com 5 © http://events.goldenpalace.com/press/
April 5, 2010 nath@microsoft.com 6 Eye tracking Pupil dilation Heart Rate Respiration Skin conductance Muscle activity Brain activity
April 5, 2010 nath@microsoft.com 7 Pupil dilation Eye tracking
April 5, 2010 nath@microsoft.com 8 Heart Rate Respiration Skin temperature Skin conductance (GSR) Excitement Stress High mental effort
April 5, 2010 nath@microsoft.com 9 Muscle activity ElectroMyoGraphy (EMG) Pleasure Frustration
April 5, 2010 nath@microsoft.com 10 Brain activity © http://whoyoucallingaskeptic.wordpress.com/2008/07/08/esp/
April 5, 2010 nath@microsoft.com 11 Brain activity ElectroEncephaloGram(EEG) functional Near InfraRed (fNIR) Cognitive load Aha! moment
New perspectives o Insights o Analysis strategies o Cognitive load nath@microsoft.com Many Thanks to Desney Tan, Scott Counts, and Ed Cutrell for their insights on the topic! Challenges Stimuli o Analysis o Validationo

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Beyond system logging: human logging for evaluating information visualization.

  • 1. Human Logging for Evaluating InfoVis Nathalie Riche, Microsoft Research
  • 2. April 5, 2010 nath@microsoft.com 2 System Logging Accuracy Time Tasks Observations Interviews Insights Human Logging
  • 3. Insights Units of discovery Aha! Moments Answers to questions users did not even know they had April 5, 2010 nath@microsoft.com 3
  • 4. Investigating Physiological Computing April 5, 2010 nath@microsoft.com 4
  • 5. April 5, 2010 nath@microsoft.com 5 © http://events.goldenpalace.com/press/
  • 6. April 5, 2010 nath@microsoft.com 6 Eye tracking Pupil dilation Heart Rate Respiration Skin conductance Muscle activity Brain activity
  • 7. April 5, 2010 nath@microsoft.com 7 Pupil dilation Eye tracking
  • 8. April 5, 2010 nath@microsoft.com 8 Heart Rate Respiration Skin temperature Skin conductance (GSR) Excitement Stress High mental effort
  • 9. April 5, 2010 nath@microsoft.com 9 Muscle activity ElectroMyoGraphy (EMG) Pleasure Frustration
  • 10. April 5, 2010 nath@microsoft.com 10 Brain activity © http://whoyoucallingaskeptic.wordpress.com/2008/07/08/esp/
  • 11. April 5, 2010 nath@microsoft.com 11 Brain activity ElectroEncephaloGram(EEG) functional Near InfraRed (fNIR) Cognitive load Aha! moment
  • 12. New perspectives o Insights o Analysis strategies o Cognitive load nath@microsoft.com Many Thanks to Desney Tan, Scott Counts, and Ed Cutrell for their insights on the topic! Challenges Stimuli o Analysis o Validationo

Hinweis der Redaktion

  1. Controlled experiments