Using Theories of Decision-Making Under Uncertainty to Improve Data Visualization

Using Theories of Decision-Making Under Uncertainty to Improve Data Visualization

Simons Institute via YouTube Direct link

design applications: aggregation choices

17 of 18

17 of 18

design applications: aggregation choices

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Using Theories of Decision-Making Under Uncertainty to Improve Data Visualization

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  1. 1 Intro
  2. 2 data summaries for inductive inference
  3. 3 objective: perceptual accuracy?
  4. 4 good perception = rational judgment?
  5. 5 objective: pattern finding
  6. 6 optimizing for pattern finding encourages NHST?
  7. 7 minimize error in effect size judgment/decisions
  8. 8 non-robust strategies → illusion of predictability
  9. 9 The distance heuristic
  10. 10 when optimizing for PoS isn't enough...
  11. 11 challenges in learning from experiments
  12. 12 when does a better visualization matter?
  13. 13 defining a decision problem (from Kale et al. 2020)
  14. 14 dead in the water (Gelman and Weakliem 2009)
  15. 15 post-experiment: rank behavioral agents with vis
  16. 16 post-experiment: rank heuristics
  17. 17 design applications: aggregation choices
  18. 18 what characterizes a good interfaces problem?

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