用卢万算法和莱顿算法识别具有模块化度量的群落

IF 0.6 Q3 MULTIDISCIPLINARY SCIENCES
Siti Haryanti Hairol Anuar, Zuraida Abal Abas, Norhazwani Md Yunos, M. Mukhtar, Tedy Setiadi, A. S. Shibghatullah
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引用次数: 0

摘要

在过去的 20 年里,复杂网络分析研究,尤其是群落检测方面的研究成果大幅增加。人们提出了许多识别群落结构的方法。由于信息的复杂性,每种群落识别算法都有其优缺点。其中,优化方法受到广泛关注。本文重点对两种基于聚类技术、使用模块化度量的社群检测算法进行了实证研究:卢万算法和莱顿算法。在这方面,卢万算法已被证明会在社区中产生不良连接,并在迭代执行时断开连接。因此,莱顿算法旨在连续解决这些弱点。研究人员详细总结了这两种算法的性能比较及其概念,以及最先进算法的逐步学习过程。这项研究对未来网络分析跨学科数据科学的研究具有重要意义和益处。首先,它证明了莱顿方法在模块化度量和运行时间方面优于卢万算法。其次,论文展示了这两种算法在合成网络和真实网络中的应用。实验取得了成功,因为它发现了更好的性能,而未来的工作则需要证实和验证这些发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Communities with Modularity Metric Using Louvain and Leiden Algorithms
Over the past 20 years, there has been a significant increase in publication in complex network analysis research, especially in community detection. Many methods were proposed to identify community structure. Each community identification algorithm has strengths and weaknesses due to the complexity of information. Among them, the optimisation methods are widely focused on. This paper focuses on an empirical study of two community detection algorithms based on agglomerative techniques using modularity metric: Louvain and Leiden. In this regard, the Louvain algorithm has been shown to produce a bad connection in the community and disconnected when executed iteratively. Therefore, the Leiden algorithm is designed to successively resolve the weaknesses. Performance comparisons between the two and their concept were summarised in detail, as well as the step-by-step learning process of the state-of-the-art algorithms. This study is important and beneficial to the future study of interdisciplinary data sciences of network analysis. First, it demonstrates that the Leiden method outperformed the Louvain algorithm in terms of modularity metric and running time. Second, the paper displays the use of these two algorithms on synthetic and real networks. The experiment was successful as it identified better performance, and future work is required to confirm and validate these findings.
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来源期刊
Pertanika Journal of Science and Technology
Pertanika Journal of Science and Technology MULTIDISCIPLINARY SCIENCES-
CiteScore
1.50
自引率
16.70%
发文量
178
期刊介绍: Pertanika Journal of Science and Technology aims to provide a forum for high quality research related to science and engineering research. Areas relevant to the scope of the journal include: bioinformatics, bioscience, biotechnology and bio-molecular sciences, chemistry, computer science, ecology, engineering, engineering design, environmental control and management, mathematics and statistics, medicine and health sciences, nanotechnology, physics, safety and emergency management, and related fields of study.
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