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Research on Communities Detection in Social Network

机译:社交网络中的社区检测研究

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摘要

During the evolution of social network, there is a social network phenomenon that small communities also become important. Generally, each community has its own characteristics of internal correlation and relation. Accurate division of whole social networks into multiple small communities may help improve the quality of social network services as whole. With the comparison among substantial community detection algorithms, we present a Label Propagation Algorithm (LPA), which has proven to be more efficient for large scale community detection and widely used. Random (node) access orders within the algorithm severely hamper its robustness, consequently, and the stability of the identified community structure. In this paper, we propose a Precedential Label Propagation Algorithm (PLPA) which counteracts for the introduced randomness by increasing propagation preference. The experiment results verify the PLP is more robust than LP.
机译:在社交网络的演变过程中,存在着一种社交网络现象,即小社区也变得很重要。通常,每个社区都有其自身的内部关联和关系特征。将整个社交网络正确划分为多个小社区可能有助于提高整个社交网络服务的质量。通过大量社区检测算法之间的比较,我们提出了一种标签传播算法(LPA),它已被证明对于大规模社区检测更为有效,并得到了广泛使用。因此,算法中的随机(节点)访问顺序严重影响了其健壮性以及所标识的社区结构的稳定性。在本文中,我们提出了一种先行标签传播算法(PLPA),该算法通过增加传播偏好来抵消引入的随机性。实验结果证明,PLP比LP更健壮。

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