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Half-Lives of EigenFlows for Spectral Clustering

机译:用于光谱聚类的特征流的半衰期

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Using a Markov chain perspective of spectral clustering we present an algorithm to automatically find the number of stable clusters in a dataset. The Markov chain's behaviour is characterized by the spectral properties of the matrix of transition probabilities, from which we derive eigenflows along with their halflives. An eigenflow describes the flow of probability mass due to the Markov chain, and it is characterized by its eigenvalue, or equivalently, by the halflife of its decay as the Markov chain is iterated. A ideal stable cluster is one with zero eigenflow and infinite half-life. The key insight in this paper is that bottlenecks between weakly coupled clusters can be identified by computing the sensitivity of the eigenflow's halflife to variations in the edge weights. We propose a novel EIGENCUTS algorithm to perform clustering that removes these identified bottlenecks in an iterative fashion.
机译:使用光谱群集的马尔可夫链透视透视我们介绍了一种算法,可以自动找到数据集中的稳定集群的数量。马尔可夫链的行为的特征在于过渡概率矩阵的光谱特性,我们从中衍生成突发。特征流描述了由于马尔可夫链引起的概率质量的流动,其特征在于其特征,或者等效地,由于马尔可夫链迭代,其衰减的半衰期。理想的稳定簇是零特征流和无限半衰期的聚类。本文的关键洞察力是通过计算特征流半衰期的敏感性来识别弱耦合簇之间的瓶颈,以计算边缘流的敏感性。我们提出了一种新颖的Eigencuts算法来执行群集,以迭代方式删除这些识别的瓶颈。

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