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Biclustering in data mining

机译:数据挖掘中的集群化

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Biclustering consists in simultaneous partitioning of the set of samples and the set of their attributes (features) into subsets (classes). Samples and features classified together are supposed to have a high relevance to each other. In this paper we review the most widely used and successful biclustering techniques and their related applications. This survey is written from a theoretical viewpoint emphasizing mathematical concepts that can be met in existing biclustering techniques.
机译:分类包括将样本集及其属性(特征)集同时划分为子集(类)。归类在一起的样本和特征应该具有很高的相关性。在本文中,我们回顾了最广泛使用和成功的双聚类技术及其相关应用。这项调查是从理论观点出发的,强调了可以在现有的双聚类技术中满足的数学概念。

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