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首页> 外文期刊>Neural Network World >COMPARATIVE ANALYSIS OF QUALITY METRICS FOR COMMUNITY DETECTION IN SOCIAL NETWORKS USING GENETIC ALGORITHM
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COMPARATIVE ANALYSIS OF QUALITY METRICS FOR COMMUNITY DETECTION IN SOCIAL NETWORKS USING GENETIC ALGORITHM

机译:基于遗传算法的社交网络社区检测质量指标比较分析

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Web 2.0 has led to the expansion and evolution of web-based communities that enable people to share information and communicate on shared platforms. The inclination of individuals towards other individuals of similar choices, decisions and preferences to get related in a social network prompts the development of groups or communities. The identification of community structure is one of the most challenging task that has received a lot of attention from the researchers. Network community structure detection can be expressed as an optimisation problem. The objective function selected captures the instinct of a community as a group of nodes in which intra-group connections are much denser than inter-group connections. However, this problem often cannot be well solved by traditional optimisation methods due to the inherent complexity of network structure. Therefore, evolutionary algorithms have been embraced to deal with community detection problem. Many objective functions have been proposed to capture the notion of quality of a network community. In this paper, we assessed the performance of four important objective functions namely Modularity, Modularity Density, Community Score and Community Fitness on real-world benchmark networks, using Genetic Algorithm (GA). The performance measure taken to assess the quality of partitions is NMI (Normalized mutual information). From the experimental results, we found that the communities' identified by these objectives have different characteristics and modularity density outperformed the other three objective functions by uncovering the true community structure of the networks. The experimental results provide a direction to researchers on choosing an objective function to measure the quality of community structure in various domains like social networks, biological networks, information and technological networks.
机译:Web 2.0导致了基于Web的社区的扩展和发展,使人们能够在共享平台上共享信息和进行通信。在社交网络中,个人倾向于具有相似选择,决定和偏爱的其他个人,以建立联系,这促使群体或社区的发展。社区结构的识别是最具挑战性的任务之一,受到了研究人员的广泛关注。网络社区结构检测可以表示为优化问题。选择的目标函数将社区的本能捕获为一组节点,其中组内连接比组间连接密集得多。但是,由于网络结构固有的复杂性,传统的优化方法通常无法很好地解决该问题。因此,进化算法已被用来处理社区检测问题。已经提出了许多目标功能来捕获网络社区的质量概念。在本文中,我们使用遗传算法(GA)评估了在现实基准网络上四个重要目标函数(模块化,模块化密度,社区得分和社区适应度)的性能。用来评估分区质量的性能指标是NMI(标准化互信息)。从实验结果中,我们发现由这些目标确定的社区具有不同的特征,并且通过揭示网络的真实社区结构,模块化密度优于其他三个目标功能。实验结果为研究人员选择目标函数以衡量社会网络,生物网络,信息和技术网络等各个领域的社区结构质量提供了指导。

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