Literature DB >> 10636946

Learning overcomplete representations.

M S Lewicki1, T J Sejnowski.   

Abstract

In an overcomplete basis, the number of basis vectors is greater than the dimensionality of the input, and the representation of an input is not a unique combination of basis vectors. Overcomplete representations have been advocated because they have greater robustness in the presence of noise, can be sparser, and can have greater flexibility in matching structure in the data. Overcomplete codes have also been proposed as a model of some of the response properties of neurons in primary visual cortex. Previous work has focused on finding the best representation of a signal using a fixed overcomplete basis (or dictionary). We present an algorithm for learning an overcomplete basis by viewing it as probabilistic model of the observed data. We show that overcomplete bases can yield a better approximation of the underlying statistical distribution of the data and can thus lead to greater coding efficiency. This can be viewed as a generalization of the technique of independent component analysis and provides a method for Bayesian reconstruction of signals in the presence of noise and for blind source separation when there are more sources than mixtures.

Mesh:

Year:  2000        PMID: 10636946     DOI: 10.1162/089976600300015826

Source DB:  PubMed          Journal:  Neural Comput        ISSN: 0899-7667            Impact factor:   2.026


  53 in total

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8.  Two Independent Frontal Midline Theta Oscillations during Conflict Detection and Adaptation in a Simon-Type Manual Reaching Task.

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9.  Sample skewness as a statistical measurement of neuronal tuning sharpness.

Authors:  Jason M Samonds; Brian R Potetz; Tai Sing Lee
Journal:  Neural Comput       Date:  2014-02-20       Impact factor: 2.026

10.  Natural image coding in V1: how much use is orientation selectivity?

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Journal:  PLoS Comput Biol       Date:  2009-04-03       Impact factor: 4.475

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