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首页> 外文期刊>IEEE Transactions on Emerging Topics in Computational Intelligence >Strong Social Graph Based Trust-Oriented Graph Pattern Matching With Multiple Constraints
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Strong Social Graph Based Trust-Oriented Graph Pattern Matching With Multiple Constraints

机译:基于强大的社交图基于信任的图形模式与多个约束匹配

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摘要

Online social network is popular and graph pattern matching (GPM) has been significant in many social network based applications, such as experts finding and social position detection. However, the existing GPM methods do not consider the multiple constraints of the social contexts in GPM, which are commonly found in various applications, or they do not consider the changes of graph structure in the index maintenance of GPM, leading to low efficiency. In this paper, we first propose a multi-constrained simulation based on the bounded graph simulation, and propose a multi-constrained graph pattern matching (MC-GPM) problem. To improve the efficiency of MC-GPM in large social graphs, we propose a new concept, strong social graph (SSG), that contains the users who have strong social connections. Then, we propose an SSG-index method to index the reachability, the graph patterns, and the social contexts of social graphs. Finally, we propose an incremental algorithm to maintain the SSG-index, which can greatly save the execution time when faced with the change of the structures of SSGs. Moreover, by combining SSG-index, we develop a heuristic algorithm, called SSG-MGPM, to identify MC-GPM results effectively and efficiently. An empirical study over five real-world social graphs has demonstrated the superiority of our approach in terms of efficiency and effectiveness.
机译:在线社交网络是流行的,图表模式匹配(GPM)在许多社交网络的基于社交应用中具有重要意义,例如专家发现和社会地位检测。然而,现有的GPM方法不考虑GPM中的社会上下文的多个约束,这些内容通常在各种应用中发现,或者他们不考虑GPM指数维护中图形结构的变化,导致低效率。在本文中,我们首先基于界线图模拟提出了多约束模拟,并提出了一种多约束图案匹配(MC-GPM)问题。为了提高大型社交图中MC-GPM的效率,我们提出了一个新的概念,强大的社会图(SSG),其中包含具有强大社会联系的用户。然后,我们提出了一个SSG-Index方法来索引可达性,图形模式和社会图的社会背景。最后,我们提出了一种增量算法来维护SSG-Index,它可以大大节省在面对SSG结构的变化时的执行时间。此外,通过组合SSG索引,我们开发了一种称为SSG-MGPM的启发式算法,以有效且有效地识别MC-GPM结果。在五个现实世界的社会图中的实证研究表明,在效率和有效性方面都证明了我们的方法的优势。

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