Multi-task regularization of generative similarity models
SIMBAD'11 Proceedings of the First international conference on Similarity-based pattern recognition
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We investigate parameter-based and distribution-based approaches to regularizing the generative, similarity-based classifier called local similarity discriminant analysis classifier (local SDA). We argue that regularizing distributions rather than parameters can both increase the model flexibility and decrease estimation variance while retaining the conceptual underpinnings of the local SDA classifier. Experiments with four benchmark similarity-based classification datasets show that the proposed regularization significantly improves classification performance compared to the local SDA classifier, and the distribution-based approach improves performance more consistently than the parameter-based approaches. Also, regularized local SDA can perform significantly better than similarity-based SVM classifiers, particularly on sparse and highly nonmetric similarities.