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      Bayesian inference with probabilistic population codes.

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          Abstract

          Recent psychophysical experiments indicate that humans perform near-optimal Bayesian inference in a wide variety of tasks, ranging from cue integration to decision making to motor control. This implies that neurons both represent probability distributions and combine those distributions according to a close approximation to Bayes' rule. At first sight, it would seem that the high variability in the responses of cortical neurons would make it difficult to implement such optimal statistical inference in cortical circuits. We argue that, in fact, this variability implies that populations of neurons automatically represent probability distributions over the stimulus, a type of code we call probabilistic population codes. Moreover, we demonstrate that the Poisson-like variability observed in cortex reduces a broad class of Bayesian inference to simple linear combinations of populations of neural activity. These results hold for arbitrary probability distributions over the stimulus, for tuning curves of arbitrary shape and for realistic neuronal variability.

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          Author and article information

          Journal
          Nat Neurosci
          Nature neuroscience
          Springer Science and Business Media LLC
          1097-6256
          1097-6256
          Nov 2006
          : 9
          : 11
          Affiliations
          [1 ] Department of Brain and Cognitive Sciences, Meliora Hall, University of Rochester, Rochester, New York 14627, USA.
          Article
          nn1790
          10.1038/nn1790
          17057707
          e7bb94c5-871e-4bb2-b6f5-d5a29692695b
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