2013
DOI: 10.1587/transinf.e96.d.1766
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Fast Iterative Mining Using Sparsity-Inducing Loss Functions

Abstract: SUMMARYApriori-based mining algorithms enumerate frequent patterns efficiently, but the resulting large number of patterns makes it difficult to directly apply subsequent learning tasks. Recently, efficient iterative methods are proposed for mining discriminative patterns for classification and regression. These methods iteratively execute discriminative pattern mining algorithm and update example weights to emphasize on examples which received large errors in the previous iteration. In this paper, we study a … Show more

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