测试图的聚类结构

A. Czumaj, Pan Peng, C. Sohler
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引用次数: 29

摘要

研究了在有界度模型的性质检验框架下图的聚类结构识别问题。给定一个参数ε,定义一个d有界度图是(k, φ)可聚类的,如果它可以划分为不超过k个部分,使得诱导子图在每个部分上的(内)电导至少为φ,并且每个部分的(外)电导最多为cd,kε4φ2,其中cd,k仅依赖于d,k。我们的主要结果是一个运行时间为~O(√n·poly(φ,k,1/ε))的次线性算法,该算法以一个最大度以d为界的图为输入,参数k,φ, ε,且概率至少为2/3,当图为(k,φ)-可聚类时接受图,当图为ε-远离(k,φ *)-可聚类时拒绝图,当图为φ* = c'd,kφ2 ε4}/log n时,其中c'd,k仅依赖于d,k。通过测试图展开所需查询数Ω(√n)的下界,对应于我们问题中的k=1,我们的算法对于多对数因子是渐近最优的。
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Testing Cluster Structure of Graphs
We study the problem of recognizing the cluster structure of a graph in the framework of property testing in the bounded degree model. Given a parameter ε, a d-bounded degree graph is defined to be (k, φ)-clusterable, if it can be partitioned into no more than k parts, such that the (inner) conductance of the induced subgraph on each part is at least φ and the (outer) conductance of each part is at most cd,kε4φ2, where cd,k depends only on d,k. Our main result is a sublinear algorithm with the running time ~O(√n ⋅ poly(φ,k,1/ε)) that takes as input a graph with maximum degree bounded by d, parameters k, φ, ε, and with probability at least 2/3, accepts the graph if it is (k,φ)-clusterable and rejects the graph if it is ε-far from (k, φ*)-clusterable for φ* = c'd,kφ2 ε4}/log n, where c'd,k depends only on d,k. By the lower bound of Ω(√n) on the number of queries needed for testing graph expansion, which corresponds to k=1 in our problem, our algorithm is asymptotically optimal up to polylogarithmic factors.
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