Scale adjustments for classifiers in high-dimensional, low sample size settings
Distance-based classifiers are generally considered to be effective at discriminating between populations that differ in location. Indeed, nearest-neighbour methods and the support vector machine are frequently used in very high-dimensional problems involving gene expression data, where it is believed that elevated levels of expression convey much of the information for classification. However, one problem inherent to distance-based classifiers is that scale differences can mask location differences. In consequence, such classifiers can have poor performance if the information for classification accumulates through a large number of relatively small location differences in data components, rather than via large differences. In this paper, we show that a simple adjustment for scale, applicable to a variety of distance-based classifiers, can remedy the problem. For some classifiers, such as those based on the support vector machine or the centroid method, scale corrections are important primarily in the case of small training-sample sizes. However, for other classifiers, including those based on nearest-neighbour and average-distance methods, scale adjustments are helpful more generally. Copyright 2009, Oxford University Press.
Year of publication: |
2009
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Authors: | Chan, Yao-Ban ; Hall, Peter |
Published in: |
Biometrika. - Biometrika Trust, ISSN 0006-3444. - Vol. 96.2009, 2, p. 469-478
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Publisher: |
Biometrika Trust |
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