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Parameter-Free Structural Diversity Search

机译:无参数结构多样性搜索

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摘要

The problem of structural diversity search is to find the top-k vertices with the largest structural diversity in a graph. However, when identifying distinct social contexts, existing structural diversity models (e.g., t-sized component, t-core, and t-brace) are sensitive to an input parameter of t. To address this drawback, we propose a parameter-free structural diversity model. Specifically, we propose a novel notation of discriminative core, which automatically models various kinds of social contexts without parameter t. Leveraging on discriminative cores and h-index, the structural diversity score for a vertex is calculated. We study the problem of parameter-free structural diversity search in this paper. An efficient top-k search algorithm with a well-designed upper bound for pruning is proposed. Extensive experiment results demonstrate the parameter sensitivity of existing t-core based model and verify the superiority of our methods.
机译:结构多样性搜索的问题是找到图中最大结构多样性的前k个顶点。但是,当识别不同的社会环境时,现有的结构多样性模型(例如t大小的分量,t核心和t括号)对t的输入参数很敏感。为了解决这个缺点,我们提出了一种无参数的结构多样性模型。具体来说,我们提出了一种新的区分核心概念,该模型可以自动建模各种不带参数t的社会情境。利用区分核心和h指数,计算顶点的结构多样性分数。本文研究了无参数结构多样性搜索问题。提出了一种有效的top-k搜索算法,该算法具有设计合理的上限以进行修剪。大量的实验结果证明了现有基于t核的模型的参数敏感性,并证明了我们方法的优越性。

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