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A variable neighborhood search method for generalized blockmodeling of two-mode binary matrices

机译:用于双模二元矩阵广义块建模的变量邻域搜索方法

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摘要

The clustering of two-mode proximity matrices is a challenging combinatorial optimization problem that has important applications in the quantitative social sciences. We focus on one particular type of problem related to the clustering of a two-mode binary matrix, which is relevant to the establishment of generalized blockmodels for social networks. In this context, clusters for the rows of the two-mode matrix intersect with clusters of the columns to form blocks, which should ideally be either complete (all Is) or null (all Os). A new procedure based on variable neighborhood search is presented and compared to an existing two-mode K-means clustering algorithm. The new procedure. generally provided slightly greater explained variation; however, both methods yielded exceptional recovery of cluster structure. (C) 2007 Elsevier Inc. All rights reserved.
机译:双模邻近矩阵的聚类是一个具有挑战性的组合优化问题,在定量社会科学中具有重要的应用。我们关注与双模二进制矩阵的聚类有关的一种特殊类型的问题,这与社交网络的通用块模型的建立有关。在这种情况下,双模矩阵行的簇与列的簇相交以形成块,理想情况下,块应为完整(全为1)或为空(全为O)。提出了一种基于可变邻域搜索的新过程,并将其与现有的两模式K均值聚类算法进行了比较。新程序。通常提供稍大的解释变化;然而,两种方法均能使团簇结构异常恢复。 (C)2007 Elsevier Inc.保留所有权利。

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