可视化重叠双聚类和布尔矩阵分解

Thibault Marette, Pauli Miettinen, S. Neumann
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引用次数: 0

摘要

在二部图中寻找(双)聚类是一种流行的数据分析方法。分析人员通常希望可视化集群,这很简单,只要集群是不相交的。然而,许多现代算法发现重叠簇,使可视化更加复杂。本文研究了二部图中重叠簇的\emph{给定聚类}的可视化问题以及布尔矩阵分解的可视化问题。我们概念化了三个不同的目标,任何良好的可视化都应该满足:(1)集群元素的接近性,(2)来自同一集群的元素的大连续区域,以及(3)可视化中的大不间断区域,无论集群成员如何。我们提供了捕获这些目标的目标函数和优化这些目标函数的算法。有趣的是,在真实世界数据集的实验中,我们发现这些相互竞争的目标之间的最佳权衡是通过一种新颖的启发式方法实现的,该方法在局部目标是将具有相似集群成员的行和列放在彼此旁边。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualizing Overlapping Biclusterings and Boolean Matrix Factorizations
Finding (bi-)clusters in bipartite graphs is a popular data analysis approach. Analysts typically want to visualize the clusters, which is simple as long as the clusters are disjoint. However, many modern algorithms find overlapping clusters, making visualization more complicated. In this paper, we study the problem of visualizing \emph{a given clustering} of overlapping clusters in bipartite graphs and the related problem of visualizing Boolean Matrix Factorizations. We conceptualize three different objectives that any good visualization should satisfy: (1) proximity of cluster elements, (2) large consecutive areas of elements from the same cluster, and (3) large uninterrupted areas in the visualization, regardless of the cluster membership. We provide objective functions that capture these goals and algorithms that optimize these objective functions. Interestingly, in experiments on real-world datasets, we find that the best trade-off between these competing goals is achieved by a novel heuristic, which locally aims to place rows and columns with similar cluster membership next to each other.
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