Reading population codes: a neural implementation of ideal observers

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作者
Sophie Deneve
Peter E. Latham
Alexandre Pouget
机构
[1] University of Rochester,Brain and Cognitive Science Department
[2] University of California Los Angeles,Department of Neurobiology
来源
Nature Neuroscience | 1999年 / 2卷
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摘要
Many sensory and motor variables are encoded in the nervous system by the activities of large populations of neurons with bell-shaped tuning curves. Extracting information from these population codes is difficult because of the noise inherent in neuronal responses. In most cases of interest, maximum likelihood (ML) is the best read-out method and would be used by an ideal observer. Using simulations and analysis, we show that a close approximation to ML can be implemented in a biologically plausible model of cortical circuitry. Our results apply to a wide range of nonlinear activation functions, suggesting that cortical areas may, in general, function as ideal observers of activity in preceding areas.
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页码:740 / 745
页数:5
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