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Markov Chains and Spectral Clustering

机译:马尔可夫链和光谱聚类

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The importance of Markov chains in modeling diverse systems, including biological, physical, social and economic systems, has long been known and is well documented. More recently, Markov chains have proven to be effective when applied to internet search engines such as Google's PageRank model [7], and in data mining applications wherein data trends are sought. It is with this type of Markov chain application that we focus our research efforts. Our starting point is the work of Fiedler who in the early 70's developed a spectral partitioning method to obtain the minimum cut on an undirected graph (symmetric system). The vector that results from the spectral decomposition, called the Fiedler vector, allows the nodes of the graph to be partitioned into two subsets. At the same time that Fiedler proposed his spectral approach, Stewart proposed a method based on the dominant eigenvectors of a Markov chain - a method which was more broadly applicable to nonsymmetric systems. Enlightened by these, somewhat orthogonal, results and combining them together, we show that spectral partitioning can be viewed in the framework of state clustering on Markov chains. Our research results to date are two-fold. First, we prove that the second eigenvector of the signless Laplacian provides a heuristic solution to the NP-complete state clustering problem which is the dual of the minimum cut problem. Second, we propose two clustering techniques for Markov chains based on two different clustering measures
机译:Markov链在模拟各种系统中的重要性,包括生物,物理,社会和经济系统,长期以来一直被众所周知并充分记录。最近,在应用于互联网搜索引擎之类的互联网搜索引擎等谷歌的PageRank模型[7]中,并在数据挖掘应用程序中,Markov链条已经证明是有效的。这是我们将研究努力集中的Markov链应用程序。我们的出发点是Fiedler的工作,他们在70年代初期开发了一种光谱分区方法,以获得未经向图(对称系统)的最小切割。由频谱分解导致称为Fiedler向量的矢量允许图形的节点划分为两个子集。同时,Fiedler提出了他的光谱方法,Stewart提出了一种基于Markov链的显性特征向量的方法 - 一种更广泛适用于非对称系统的方法。由此开发,有些正交,结果并将它们组合在一起,我们表明可以在马尔可夫链上的状态集群框架中查看光谱分区。我们迄今为止的研究结果是两倍。首先,我们证明了偶尔拉普里亚人的第二个特征向量为NP完全状态聚类问题提供了启发式解决方案,这是最小削减问题的双重问题。其次,基于两种不同的聚类措施,为马尔可夫链提出了两种聚类技术

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