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Detecting Communities in Networks Using Competitive Hopfield Neural Network

机译:使用竞争性Hopfield神经网络检测网络中的社区

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Community detection finds its applications in the biological networks and social networks, like predicting functional modules of proteins, recommending items to the users based on their interests, and exploring potential relationships among persons. Modularity is a widely-used criterion for evaluating the quality of the detected community structures. Due to modularity maximization is an NP-hard problem, developing the approximate algorithms with good accuracy and computational complexity is challenging and of great significance. In this paper, a novel algorithm based on competitive Hopfield neural network (CHNN for short) for maximizing modularity is proposed, where a new energy function and a two-dimensional topology is designed, and the winner-takes-all strategy for updating the outputs of neurons in each row of CHNN is adopted. Moreover, the convergence of the proposed algorithm is proved. The algorithm is capable of converging fast and achieving good modularity. Experimental results on multiple empirical and synthetic networks show the proposed algorithm can effectively and efficiently identify the community structures of the networks, and has the competitive performance compared to several other baseline algorithms for community detection.
机译:社区检测可在生物网络和社交网络中找到其应用,例如预测蛋白质的功能模块,根据用户的兴趣向用户推荐商品以及探索人与人之间的潜在关系。模块化是评估检测到的社区结构质量的广泛使用的标准。由于模块化的最大化是一个NP难题,因此开发具有良好准确性和计算复杂度的近似算法具有挑战性,并且具有重要意义。提出了一种基于竞争Hopfield神经网络(简称CHNN)的最大化模块化的新算法,设计了新的能量函数和二维拓扑结构,并采用了赢者通吃的策略更新输出。在CHNN的每一行中采用神经元的数量。此外,证明了所提算法的收敛性。该算法能够快速收敛并实现良好的模块化。在多个经验和综合网络上的实验结果表明,与其他几种用于社区检测的基线算法相比,该算法可以有效,高效地识别网络的社区结构,并具有竞争优势。

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