基于合并的分支定界最优聚类

P. Fränti, O. Virmajoki
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引用次数: 2

摘要

我们提出了一种通过一系列合并步骤来构造最优聚类的方法。我们将基于合并的聚类构造为最小冗余搜索树,然后利用分支定界技术搜索最优聚类。无论使用何种目标函数,都能找到最优聚类。我们还考虑了基于所提出的分支定界技术的两个次优多项式时间变量。然而,所有的变体都是缓慢的,只是理论上的兴趣。我们讨论了结果的原因。
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Optimal clustering by merge-based branch-and-bound
We present a method to construct optimal clustering via a sequence of merge steps. We formulate the merge-based clustering as a minimum redundancy search tree, and then search the optimal clustering by a branch-and-bound technique. Optimal clustering is found regardless of the objective function used. We also consider two suboptimal polynomial time variants based on the proposed branch-and-bound technique. However, all variants are slow and has merely theoretical interest. We discuss the reasons for the results.
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