Abstract

We study the problem of pattern-based subspace clustering. Unlike traditional clustering methods that focus on grouping objects with similar values on a set of dimensions, clustering by pattern similarity finds objects that exhibit a coherent pattern of rises and falls in subspaces. Applications of pattern-based subspace clustering include DNA micro-array data analysis, automatic recommendation systems and target marketing systems. Our goal is to devise pattern-based clustering methods that are capable of (1) discovering useful patterns of various shapes, and (2) discovering all significant patterns. We argue that previous solutions in pattern-based subspace clustering do not satisfy both requirements. Our approach is to extend the idea of Order-Preserving Submatrix (or OPSM). We devise a novel algorithm for mining OPSM, show that OPSM can be generalized to cover most existing pattern-based clustering models, and propose a number of extension to the original OPSM model.

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