Publikationsansicht

Effective Input Variable Selection for Function Approximation (2008)

Abstract
Abstract. Input variable selection is a key preprocess step in any I/O modelling problem. Normally, better generalization performance is obtained when unneeded parameters coming from irrelevant or redundant variables are eliminated. Information theory provides a robust theoretical framework for performing input variable selection thanks to the concept of mutual information. Nevertheless, for continuous variables, it is usually a more difficult task to determine the mutual information between the input variables and the output variable than for classification problems. This paper presents a modified approach for variable selection for continuous variables adapted from a previous approach for classification problems, making use of a mutual information estimator based on the k-nearest neighbors. 1

Details der Publikation
Download http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.72.1840
Quelle http://www.dice.ucl.ac.be/~verleyse/papers/icann06ljh.pdf
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Typ text
Sprache Englisch
Verknüpfungen 10.1.1.11.2062, 10.1.1.32.9645, 10.1.1.28.576