Modelling stochastic resonance in humans: the influence of lapse rate
Jeroen J.A. van Boxtel

TL;DR
This paper develops a model incorporating lapse rate to study stochastic resonance in human perception, revealing how internal noise and lapse rate influence performance and the occurrence of stochastic resonance.
Contribution
The model uniquely includes lapse rate in stochastic resonance analysis, linking it to performance metrics and explaining reduced efficiency in noise paradigms.
Findings
Lapse rate enables stochastic resonance in performance metrics.
High lapse rates suppress stochastic resonance effects.
Internal noise can mask stochastic resonance in experiments.
Abstract
Adding noise to a sensory signal generally decreases human performance. However noise can improve performance too, due to a process called stochastic resonance (SR). This paradoxical effect may be exploited in psychophysical experiments, to provide additional insights into how the sensory system deals with noise. Here, I develop a model for stochastic resonance to study the influence of noise on human perception, in which the biological parameter of `lapse rate' was included. I show that the inclusion of lapse rate allows for the occurrence of stochastic resonance in terms of the performance metric d'. At the same time, I show that high levels of lapse rate cause stochastic resonance to disappear. It is also shown that noise generated in the brain (i.e., internal noise) may obscure any effect of stochastic resonance in experimental settings. I further relate the model to a standard…
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Taxonomy
TopicsNeural dynamics and brain function · stochastic dynamics and bifurcation
