使用无监督学习方法的社区检测

Akansha Mittal, Anurag Goel
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引用次数: 0

摘要

社区是指网络中相互之间具有高度连通性、与同一网络中其他节点之间具有低连通性的一组节点。社区检测是过去多年来一个著名的研究问题。社区检测的应用已遍及社会网络、交通网络、遗传网络、引文网络、网页网络等多个领域。在这项工作中,研究了几种无监督学习技术,即Louvain算法、K-means聚类算法和高斯混合模型,以识别社交网络中的社区。结果表明,Louvain算法优于其他两种无监督学习技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Community Detection using Unsupervised Learning Approach
A community is referred to as a set of nodes in a network that has a high degree of connectivity with each other and a low degree of connectivity with other nodes in the same network. Community Detection is a renowned research problem for the past many years. The applications of Community Detection is spread across several domains like social networks, transportation networks, genetic networks, citation networks, web networks etc. In this work, several unsupervised learning techniques namely Louvain Algorithm, K-means clustering Algorithm and Gaussian Mixture Model have been examined to identify communities in social networks. The results demonstrated that the Louvain Algorithm outperforms the other two unsupervised learning techniques.
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