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Multilevel spectral hypergraph partitioning with arbitrary vertex sizes

机译:具有任意顶点大小的多级谱超图划分

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This paper presents a new spectral partitioning formulation which directly incorporates vertex size information by modifying the Laplacian of the graph. Modifying the Laplacian produces a generalized eigenvalue problem, which is reduced to the standard eigenvalue problem. Experiments show that the scaled ratio-cut costs of results on benchmarks with arbitrary vertex size improve by 22% when the eigenvectors of the Laplacian in the spectral partitioner KP are replaced by the eigenvectors of our modified Laplacian. The inability to handle vertex sizes in the spectral partitioning formulation has been a limitation in applying spectral partitioning in a multilevel setting. We investigate whether our new formulation effectively removes this limitation by combining it with a simple multilevel bottom-up clustering algorithm and an iterative improvement algorithm for partition refinement. Experiments show that in a multilevel setting where the spectral partitioner KP provides the initial partitions of the most contracted graph, using the modified Laplacian in place of the standard Laplacian is more efficient and more effective in the partitioning of graphs with arbitrary-size and unit-size vertices; average improvements of 17% and 18% are observed for graphs with arbitrary-size and unit-size vertices, respectively. Comparisons with other ratio-cut based partitioners on hypergraphs with unit-size as well as arbitrary-size vertices, show that the multilevel spectral partitioner produces either better results or almost identical results more efficiently.
机译:本文提出了一种新的频谱划分公式,该公式通过修改图的拉普拉斯算子直接合并顶点大小信息。修改拉普拉斯算子会产生广义特征值问题,该问题被简化为标准特征值问题。实验表明,当光谱分割器KP中的拉普拉斯特征向量被我们改进的拉普拉斯特征向量取代时,在任意顶点大小的基准上,缩放结果的比例削减成本提高了22%。在频谱划分公式中无法处理顶点大小已成为在多级设置中应用频谱划分的限制。我们研究了我们的新公式是否通过与简单的多级自底向上聚类算法和用于分区细化的迭代改进算法相结合来有效消除此限制。实验表明,在多级设置中,频谱分区器KP提供了最收缩图的初始分区,使用修改后的拉普拉斯算子代替标准拉普拉斯算子可以更有效地分割具有任意大小和单位的图。大小顶点;对于具有任意尺寸和单位尺寸顶点的图形,观察到的平均改进分别为17%和18%。与具有单位大小和任意大小的顶点的超图上其他基于比率削减的分区器的比较表明,多级频谱分区器可以产生更好的结果或几乎相同的结果。

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