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10 / 31 Outline

10 / 31 Outline. Perception workshop groups Signal detection theory Scheduling meetings. Detection experiment. Question How sensitive is an observer to a sensory stimulus; for example, light?. Detection experiment. Question How sensitive is an observer to (for example) light?

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10 / 31 Outline

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  1. 10 / 31 Outline • Perception workshop groups • Signal detection theory • Scheduling meetings

  2. Detection experiment • Question • How sensitive is an observer to a sensory stimulus; for example, light?

  3. Detection experiment • Question • How sensitive is an observer to (for example) light? • Classic experiment • Yes/No task

  4. Detection experiment • Question • How sensitive is an observer to (for example) light? • Classic experiment • Yes/No task • Measure threshold intensity needed to have 50% hits

  5. Threshold

  6. Threshold

  7. Jane Nancy

  8. Summary of results • Thresholds • Jane = 20 • Nancy = 25

  9. Summary of results • Thresholds • Jane = 20 • Nancy = 25 • False alarm rates • Jane = 51% • Nancy = 18.7%

  10. Look at one intensity level • I = 25

  11. Jane’s Hit Rate P(H) = .84

  12. Nancy’s Hit Rate P(H) = .5

  13. Look at one intensity level • I = 25 • Jane • Hit rate: P(H) = .84

  14. Look at one intensity level • I = 25 • Jane • Hit rate: P(H) = .84 • False alarm rate: P(FA) = .51

  15. Look at one intensity level • I = 25 • Jane • Hit rate: P(H) = .84 • False alarm rate: P(FA) = .51 • Nancy • Hit rate: P(H) = .5

  16. Look at one intensity level • I = 25 • Jane • Hit rate: P(H) = .84 • False alarm rate: P(FA) = .51 • Nancy • Hit rate: P(H) = .5 • False alarm rate: P(FA) = .187

  17. Signal detection theory terms • Hits - p(H) • Proportion of “yes” responses when signal is present

  18. Signal detection theory terms • Hits - p(H) • Proportion of “yes” responses when signal is present • Misses - p(M) • Proportion of “no” responses when signal is present

  19. Signal detection theory terms • Hits - p(H) • Proportion of “yes” responses when signal is present • Misses - p(M) • Proportion of “no” responses when signal is present • False alarms - p(FA) • Proportion of “yes” responses when signal is not present

  20. Signal detection theory terms • Hits - p(H) • Proportion of “yes” responses when signal is present • Misses - p(M) • Proportion of “no” responses when signal is present • False alarms - p(FA) • Proportion of “yes” responses when signal is not present • Correct rejections - p(CR) • Proportion of “no” responses when signal is not present

  21. Relationships between terms • P(H) + P(M) = 1

  22. Relationships between terms • P(H) + P(M) = 1 • P(FA) + P(CR) = 1

  23. Relationships between terms • P(H) + P(M) = 1 • P(FA) + P(CR) = 1 • Only need to specify P(H) and P(FA)

  24. Extreme detection strategies • Most liberal (always say yes)

  25. Extreme detection strategies • Most liberal (always say yes) • P(H) = 1, P(FA) = 1

  26. Extreme detection strategies • Most liberal (always say yes) • P(H) = 1, P(FA) = 1 • Most conservative (always say no)

  27. Extreme detection strategies • Most liberal (always say yes) • P(H) = 1, P(FA) = 1 • Most conservative (always say no) • P(H) = 0, P(FA) = 0

  28. Signal Detection Theory

  29. Signal Detection Theory • Assume an internal measure of signal strength.

  30. Signal Detection Theory • Assume an internal measure of signal strength (X). • E.g. firing rate of ganglion cell

  31. Signal Detection Theory • Assume an internal measure of signal strength (X). • E.g. firing rate of ganglion cell • X is corrupted by noise

  32. Signal Detection Theory • Assume an internal measure of signal strength (X). • E.g. firing rate of ganglion cell • X is corrupted by noise • E.g. random variations in firing rate

  33. Signal Detection Theory • Assume an internal measure of signal strength (X). • E.g. firing rate of ganglion cell • X is corrupted by noise • E.g. random variations in firing rate • When signal is not present, X = X0 + N

  34. Signal Detection Theory • Assume an internal measure of signal strength (X). • E.g. firing rate of ganglion cell • X is corrupted by noise • E.g. random variations in firing rate • When signal is not present, X = X0 + N • When signal is present, X = XS + N

  35. o Firing rate when signal is present o Firing rate when signal is not present

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