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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A convergence theorem for graph shift-type algorithms
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A convergence theorem for graph shift-type algorithms

机译:图移位型算法的收敛定理

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摘要

The Robust Graph mode seeking by Graph Shift (Liu and Tan, 2010) (RGGS) algorithm represents a recent promising approach for discovering dense subgraphs in noisy data. However, there are no theoretical foundations for proving the convergence of the RGGS algorithm, leaving the question as to whether an algorithm works for solid reasons. In this paper, we propose a generic theoretical framework consisting of three key Graph Shift (GS) components: the simplex of a generated sequence set, the monotonic and continuous objective function and closed mapping. We prove that the GS-type algorithms built on such components can be transformed to fit Zangwill's theory, and the sequence set generated by the GS procedures always terminates at a local maximum, or at worst, contains a subsequence which converges to a local maximum of the similarity measure function. The framework is verified by theoretical analysis and experimental results of several typical GS-type algorithms. (C) 2015 Elsevier Ltd. All rights reserved.
机译:通过Graph Shift(Liu and Tan,2010)(RGGS)算法寻求的鲁棒图模式代表了一种在噪声数据中发现密集子图的有前途的方法。但是,没有任何理论基础可证明RGGS算法的收敛性,还存在一个问题,即算法是否有充分的理由是一个问题。在本文中,我们提出了一个通用的理论框架,该框架由三个关键的图移(GS)组件组成:生成序列集的单纯形,单调和连续目标函数以及封闭映射。我们证明了可以对基于此类组件的GS型算法进行转换以适应Zangwill的理论,并且GS程序生成的序列集总是在局部最大值处终止,或者在最坏的情况下,包含会收敛到局部最大值的子序列。相似性度量函数。通过理论分析和几种典型GS型算法的实验结果验证了该框架。 (C)2015 Elsevier Ltd.保留所有权利。

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