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Phys. Rev. Lett. 101, 058103 (2008) [4 pages]

Maximally Informative Stimuli and Tuning Curves for Sigmoidal Rate-Coding Neurons and Populations

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Mark D. McDonnell1,* and Nigel G. Stocks2,†
1Institute for Telecommunications Research, University of South Australia, SA 5095, Australia
2School of Engineering, University of Warwick, Coventry CV4 7AL, United Kingdom

Received 13 January 2008; published 1 August 2008

A general method for deriving maximally informative sigmoidal tuning curves for neural systems with small normalized variability is presented. The optimal tuning curve is a nonlinear function of the cumulative distribution function of the stimulus and depends on the mean-variance relationship of the neural system. The derivation is based on a known relationship between Shannon’s mutual information and Fisher information, and the optimality of Jeffrey’s prior. It relies on the existence of closed-form solutions to the converse problem of optimizing the stimulus distribution for a given tuning curve. It is shown that maximum mutual information corresponds to constant Fisher information only if the stimulus is uniformly distributed. As an example, the case of sub-Poisson binomial firing statistics is analyzed in detail.

© 2008 The American Physical Society

URL:
http://link.aps.org/doi/10.1103/PhysRevLett.101.058103
DOI:
10.1103/PhysRevLett.101.058103
PACS:
87.19.lc, 87.19.lo, 87.19.ls, 87.19.lt

*mark.mcdonnell@unisa.edu.au

n.g.stocks@warwick.ac.uk