2012
DOI: 10.48550/arxiv.1206.1800
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Compressive neural representation of sparse, high-dimensional probabilities

Xaq Pitkow

Abstract: This paper shows how sparse, high-dimensional probability distributions could be represented by neurons with exponential compression. The representation is a novel application of compressive sensing to sparse probability distributions rather than to the usual sparse signals. The compressive measurements correspond to expected values of nonlinear functions of the probabilistically distributed variables. When these expected values are estimated by sampling, the quality of the compressed representation is limited… Show more

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