Abstract
In a 2-alternative forced-choice (2AFC) discrimination task, observers choose which of two stimuli has the higher value. The psychometric function for this task gives the probability of a correct response for a given stimulus difference, . This paper proves four theorems about the psychometric function. Assuming the observer applies a transducer and adds noise, Theorem 1 derives a convenient general expression for the psychometric function. Discrimination data are often fitted with a Weibull function. Theorem 2 proves that the Weibull “slope” parameter, , can be approximated by , where is the of the Weibull function that fits best to the cumulative noise distribution, and depends on the transducer. We derive general expressions for and , from which we derive expressions for specific cases. One case that follows naturally from our general analysis is Pelli's finding that, when , . We also consider two limiting cases. Theorem 3 proves that, as sensitivity improves, 2AFC performance will usually approach that for a linear transducer, whatever the actual transducer; we show that this does not apply at signal levels where the transducer gradient is zero, which explains why it does not apply to contrast detection. Theorem 4 proves that, when the exponent of a power-function transducer approaches zero, 2AFC performance approaches that of a logarithmic transducer. We show that the power-function exponents of 0.4–0.5 fitted to suprathreshold contrast discrimination data are close enough to zero for the fitted psychometric function to be practically indistinguishable from that of a log transducer. Finally, Weibull reflects the shape of the noise distribution, and we used our results to assess the recent claim that internal noise has higher kurtosis than a Gaussian. Our analysis of for contrast discrimination suggests that, if internal noise is stimulus-independent, it has lower kurtosis than a Gaussian.
Highlights
On each trial of a 2-alternative forced-choice (2AFC) discrimination task, observers are presented with two stimuli, one with stimulus value x~xp, and one with value x~xpzDx, where x represents a value along some stimulus dimension, such as contrast, luminance, frequency, sound intensity, etc., and Dx represents a positive increment in x
In Theorem 2, we show that, to a good approximation, b can be partitioned into a product of two factors, bNoise and bTransducer. bNoise estimates the b of the Weibull function that fits best to the noise cumulative distribution function (CDF), while bTransducer depends on the transducer function
For a variety of commonly used transducers and noise distributions, the true psychometric function was well fit by a Weibull function
Summary
For a nonzero pedestal, as the exponent of a power function transducer approaches zero, bTransducer approaches that for a logarithmic transducer, whatever the Weber fraction This seems a remarkable finding, because the expressions for bTPorawnesrdfuucnerc, xp=0 and bTlorgansducer (given by Equations (67) and (70), respectively) appear quite different. For a given threshold level, the whole 2AFC psychometric function for the power-function transducer and nonzero pedestal (given by Equation (69)) approaches that for a log transducer (Equation (71)) as the exponent, b, in Equation (69) approaches zero. Discussion of Theorem 4 Theorem 4 shows that, for nonzero pedestals, 2AFC performance with a power function transducer approaches that of a log transducer as the power-function exponent approaches zero.
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.