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Community detection using meta-heuristic approach: Bat algorithm variants

机译:使用元启发式方法的社区检测:Bat算法的变体

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In the present world, it is hard to overlook - the omnipresence of `network'. Be it the study of internet structure, mobile network, protein interactions or social networks, they all religiously emphasizes on network and graph studies. Social network analysis is an emerging field including community detection as its key task. A community in a network, depicts group of nodes in which density of links is high. To find the community structure modularity metric of social network has been used in different optimization approaches like greedy optimization, simulated annealing, extremal optimization, particle swarm optimization and genetic approach. In this paper we have not only introduced modularity metrics but also hamiltonian function (potts model) amalgamated with meta-heuristic optimization approaches of Bat algorithm and Novel Bat algorithm. By utilizing objective functions (modularity and hamiltonian) with modified discrete version of Bat and Novel Bat algorithm we have devised four new variants for community detection. The results obtained across four variants are compared with traditional approaches like Girvan and Newman, fast greedy modularity optimization, Reichardt and Bornholdt, Ronhovde and Nussinov, and spectral clustering. After analyzing the results, we have dwelled upon a promising outcome supporting the modified variants.
机译:在当今世界,很难忽视-网络的无处不在。无论是对互联网结构,移动网络,蛋白质相互作用还是社交网络的研究,他们都虔诚地侧重于网络和图形研究。社交网络分析是一个新兴领域,其中以社区检测为主要任务。网络中的社区描述了链路密度高的节点组。为了找到社交网络的社区结构模块化度量,已将其用于贪婪优化,模拟退火,极值优化,粒子群优化和遗传方法等不同的优化方法中。在本文中,我们不仅介绍了模块化度量,而且还介绍了与Bat算法和Novel Bat算法的元启发式优化方法相结合的哈密顿函数(potts模型)。通过将目标函数(模量和哈密顿函数)与Bat的改进离散版本和Novel Bat算法结合使用,我们为社区检测设计了四个新变体。将通过四个变体获得的结果与传统方法(如Girvan和Newman,快速贪婪的模块化优化,Reichardt和Bornholdt,Ronhovde和Nussinov以及光谱聚类)进行比较。在分析了结果之后,我们对支持修改后的变体的有希望的结果进行了阐述。

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