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10 / 31 Outline Perception workshop groups Signal detection theory Scheduling meetings
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Detection experiment Question –How sensitive is an observer to a sensory stimulus; for example, light?
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Detection experiment Question –How sensitive is an observer to (for example) light? Classic experiment –Yes/No task
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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
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Threshold
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Jane Nancy
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Summary of results Thresholds –Jane = 20 –Nancy = 25
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Summary of results Thresholds –Jane = 20 –Nancy = 25 False alarm rates –Jane = 51% –Nancy = 18.7%
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Look at one intensity level I = 25
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Jane’s Hit Rate P(H) =.84
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Nancy’s Hit Rate P(H) =.5
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Look at one intensity level I = 25 –Jane Hit rate: P(H) =.84
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Look at one intensity level I = 25 –Jane Hit rate: P(H) =.84 False alarm rate: P(FA) =.51
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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
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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
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Signal detection theory terms Hits - p(H) –Proportion of “yes” responses when signal is present
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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
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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
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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
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Relationships between terms P(H) + P(M) = 1
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Relationships between terms P(H) + P(M) = 1 P(FA) + P(CR) = 1
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Relationships between terms P(H) + P(M) = 1 P(FA) + P(CR) = 1 Only need to specify P(H) and P(FA)
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Extreme detection strategies Most liberal (always say yes)
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Extreme detection strategies Most liberal (always say yes) –P(H) = 1, P(FA) = 1
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Extreme detection strategies Most liberal (always say yes) –P(H) = 1, P(FA) = 1 Most conservative (always say no)
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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
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Signal Detection Theory
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Assume an internal measure of signal strength.
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Signal Detection Theory Assume an internal measure of signal strength (X). –E.g. firing rate of ganglion cell
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Signal Detection Theory Assume an internal measure of signal strength (X). –E.g. firing rate of ganglion cell X is corrupted by noise
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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
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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 = X 0 + N
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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 = X 0 + N When signal is present, X = X S + N
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o Firing rate when signal is present o Firing rate when signal is not present
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Criterion Set a criterion level, C
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Criterion Set a criterion level, C If X > C –Report a signal
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Criterion Set a criterion level, C If X > C –Report a signal If X < C –Report no signal
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o Firing rate when signal is present o Firing rate when signal is not present C=20, Liberal criterion
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Liberal criterion = High hit rate
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Liberal criterion = High false alarm rate
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o Firing rate when signal is present o Firing rate when signal is not present C=30, Conservative criterion
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Conservative criterion = Low hit rate
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Conservative criterion = Low false alarm rate
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Probability distribution on X (no signal)
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Probability distribution on X (signal)
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Liberal criterion
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Conservative criterion
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ROC curve
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A B C No signal Signal
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A B C
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A B C
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A B C No signal Signal
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A B C
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A B C
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Determinants of performance No signal Signal
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Determinants of performance XNXN XSXS No signal Signal
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Determinants of performance XNXN XSXS ∆X No signal Signal
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Determinants of performance XNXN XSXS 1. Difference in average strength of Signal measure ∆X = X S - X N ∆X No signal Signal
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Determinants of performance 1. Difference in average strength of Signal measure ∆X = X S - X N 2. Amount of noise ∆X No signal Signal
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Determinants of performance 1. Difference in average strength of Signal measure ∆X = X S - X N 2. Amount of noise 3. Sensitivity d’ = ∆X / ∆X No signal Signal
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D’ determines which ROC curve your data will fall on
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d’ =.83 d’ = 1.2 d’ = 2.5 D’ determines which ROC curve your data will fall on
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Criterion determines where your data will sit on an ROC curve
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Conservative criterion Liberal criterion Criterion determines where your data will sit on an ROC curve
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Measuring sensitivity
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Pick a stimulus level for a yes / no task
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Measuring sensitivity Pick a stimulus level for a yes / no task Measure hit rate and false alarm rate
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Measuring sensitivity Pick a stimulus level for a yes / no task Measure hit rate and false alarm rate Use p(H) and p(FA) to calculate d’
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Measuring sensitivity Pick a stimulus level for a yes / no task Measure hit rate and false alarm rate Use p(H) and p(FA) to calculate d’ d’ = absolute measure of sensitivity
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Blood test example Get a blood test for level of protein A.
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Blood test example Get a blood test for level of protein A. Doctor says that test is positive for liver cancer.
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Blood test example Get a blood test for level of protein A. Doctor says that test is positive for liver cancer. Doctor recommends surgery to collect tissue sample for biopsy.
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Blood test example Get a blood test for level of protein A. Doctor says that test is positive for liver cancer. Doctor recommends surgery to collect tissue sample for biopsy. What should you ask the doctor about the blood test?
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No cancer Cancer
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Liberal criterion No cancer Cancer
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Conservative criterion No cancer Cancer
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