Small sample size generalization

  • Duin R
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Abstract

The generalization of linear classifiers is considered for training sample sizes smaller than the feature size. It is shown that there exists a good linear classifier, that is better than the Nearest Mean classifier for sample sizes for which Fisher’s linear discriminant cannot be used. The use and performance of this small sample size classifier is illustrated by some examples.Keywords: linear discriminants, classification error, small sample size

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APA

Duin, R. P. W. (1995). Small sample size generalization. 9th Scandinavian Conference on Image Analysis, (May), 1–8. Retrieved from papers://5860649b-6292-421d-b3aa-1b17a5231ec5/Paper/p20113

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