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MCS
2000
Springer

Combining Fisher Linear Discriminants for Dissimilarity Representations

13 years 8 months ago
Combining Fisher Linear Discriminants for Dissimilarity Representations
Abstract Investigating a data set of the critical size makes a classification task difficult. Studying dissimilarity data refers to such a problem, since the number of samples equals their dimensionality. In such a case, a simple classifier is expected to generalize better than the complex one. Earlier experiments [9,3] confirm that in fact linear decision rules perform reasonably well on dissimilarity representations. For the Pseudo-Fisher linear discriminant the situation considered is the most inconvenient since the generalization error approaches its maximum when the size of a learning set equals the dimensionality [10]. However, some improvement is still possible. Combined classifiers may handle this problem better when a more powerful decision rule is found. In this paper, the usefulness of bagging and boosting of the Fisher linear discriminant for dissimilarity data is discussed and a new method based on random subspaces is proposed. This technique yields only a single linear pa...
Elzbieta Pekalska, Marina Skurichina, Robert P. W.
Added 25 Aug 2010
Updated 25 Aug 2010
Type Conference
Year 2000
Where MCS
Authors Elzbieta Pekalska, Marina Skurichina, Robert P. W. Duin
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