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Spectral partitioning, eigenvalue bounds, and circle packings for graphs of bounded genus

机译:有界属图的谱分割,特征值界和圆包

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摘要

In this paper, we address two longstanding questions about finding good separators in graphs of bounded genus and degree: 1. It is a classical result of Gilbert, Hutchinson, and Tarjan [12] that one can find asymptotically optimal separators on these graphs if he is given both the graph and an embedding of it onto a low genus surface. Does there exist a simple, efficient algorithm to find these separators given only the graph and not the embedding? 2. In practice, spectral partitioning heuristics work extremely well on these graphs. Is there a theoretical reason why this should be the case? We resolve these two questions by showing that a simple spectral algorithm finds separators of cut ratio O(sqrt(g/n)) and vertex bisectors of size O(sqrt(gn)) in these graphs, both of which are optimal. As our main technical lemma, we prove an O(g/n) bound on the second smallest eigenvalue of the Laplacian of such graphs and show that this is tight, thereby resolving a conjecture of Spielman and Teng. While this lemma is essentially combinatorial in nature, its proof comes from continuous mathematics, drawing on the theory of circle packings and the geometry of compact Riemann surfaces.
机译:在本文中,我们解决了两个长期的问题,这些问题是在有界属和度图中找到良好的分隔符:1. Gilbert,Hutchinson和Tarjan [12]的经典结果是,如果他能在这些图上找到渐近最优分隔符既给出了图,又将其嵌入到低类曲面上。是否存在一种简单,有效的算法来查找仅提供图形而不嵌入的分隔符? 2.在实践中,频谱划分试探法在这些图中非常有效。有理论上的理由为什么会这样?我们通过显示一个简单的频谱算法在这些图中找到割比O(sqrt(g / n))和大小为O(sqrt(gn))的顶点平分线的分隔符来解决这两个问题,这两个都是最佳的。作为我们的主要技术引理,我们证明了这类图的拉普拉斯算子第二最小特征值的O(g / n)界,并证明这是紧的,从而解决了Spielman和Teng的猜想。尽管该引理本质上是组合的,但它的证明来自连续数学,它是根据圆堆积理论和紧凑的黎曼曲面的几何学得出的。

著录项

  • 作者

    Kelner Jonathan 1980-;

  • 作者单位
  • 年度 2005
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
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