Abstract

A simple stimulus evokes responses from a large population of neurons in many cortical areas. However, although many neurons are active, not all contribute equally to perception or motor planning. Studies of motion discrimination show that an animal's perceptual decisions are well correlated with responses from a relatively small fraction of MT neurons. There are similar findings in other systems. Such a subset of neurons is labeled informative, and arguably is the basis of a perceptual decision [1,2]. In this study, we use a simple model of two (or two pools of) competing neurons to find the location of the neurons in the context of error-minimization for a broad range of discrimination tasks. Although the peak and the maximum slope of a tuning curve are typically emphasized in sensory coding theories, the quantitative interaction described here requires one to consider the entire tuning curve. We start the analysis with a fine discrimination task, but the theory is general enough for a continuum of discrimination tasks, from fine to coarse. The results point out that (1) nearly any place on a tuning curve (between the peak and 1.4 tuning widths from the peak) can be an optimal position for a particular discrimination problem; (2) multiplicative noise does not alter the location of the most informative neuron, while additive noise slightly alters the location; (3) the maximum slope of a neuron's tuning curve is generally suboptimal for a fine discrimination task. In fact, the optimal stimulus location for fine discrimination is farther into the tail of a tuning curve under most conditions; (4) even as the optimal stimulus position on a tuning curve is shifting with the task, the most informative neuron remains unchanged over a broad range of discrimination. Finally, we show practically how use the theory to bring order to what appears as discouragingly noisy data (see Figure ​Figure11). Figure 1 Reinterpreting experimental observations. (A) A single neuron's performance (expressed as discriminability, di′) to a discrimination task (± 3° motion discrimination) is typically expressed as a function of a neuron's tuned position ...

Highlights

  • A simple stimulus evokes responses from a large population of neurons in many cortical areas

  • The peak and the maximum slope of a tuning curve are typically emphasized in sensory coding theories, the quantitative interaction described here requires one to consider the entire tuning curve

  • We start the analysis with a fine discrimination task, but the theory is general enough for a continuum of discrimination tasks, from fine to coarse

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Summary

Introduction

A simple stimulus evokes responses from a large population of neurons in many cortical areas. We use a simple model of two (or two pools of) competing neurons to find the location of the “most informative” neurons in the context of error-minimization for a broad range of discrimination tasks.

Results
Conclusion

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