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COLT
1998
Springer

Cross-Validation for Binary Classification by Real-Valued Functions: Theoretical Analysis

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Cross-Validation for Binary Classification by Real-Valued Functions: Theoretical Analysis
This paper concerns the use of real-valued functions for binary classification problems. Previous work in this area has concentrated on using as an error estimate the `resubstitution' error (that is, the empirical error of a classifier on the training sample) or its derivatives. However, in practice, cross-validation and related techniques are more popular. Here, we devise new holdout and cross-validation estimators for the case where real-valued functions are used as classifiers, and we analyse theoretically the accuracy of these. Contents
Martin Anthony, Sean B. Holden
Added 05 Aug 2010
Updated 05 Aug 2010
Type Conference
Year 1998
Where COLT
Authors Martin Anthony, Sean B. Holden
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