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Micro-blog user community discovery using generalized SimRank edge weighting method

机译:使用广义Simrank边缘加权方法发现微博用户社区发现

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摘要

Community discovery is one of the most popular issues in analyzing and understanding a network. Previous research suggests that the discovery can be enhanced by assigning weights to the edges of the network. This paper proposes a novel edge weighting method, which balances both local and global weighting based on the idea of shared neighbor ranging between users and the interpersonal significance of the social network community. We assume that users belonging to the same community have similar relationship network structures. By controlling the measure of "neighborhood", this method can adequately adapt to real-world networks. Therefore, the famous similarity calculation method-SimRank-can be regarded as a special case of our method. According to the practical significance of social networks, we propose a new evaluation method that uses the communication rate to measure its divided demerit to better express users' interaction relations than the ordinary modularity Q. Furthermore, the fast Newman algorithm is extended to weighted networks. In addition, we use four real networks in the largest Chinese micro-blog website Sina. The results of experiments demonstrate that the proposed method easily meets the balancing requirements and is more robust to different kinds of networks. The experimental results also indicate that the proposed algorithm outperforms several conventional weighting methods.
机译:社区发现是分析和理解网络中最受欢迎的问题之一。以前的研究表明,可以通过将权重分配给网络的边缘来增强发现。本文提出了一种新颖的边缘加权方法,其基于用户与社交网络社区的共享邻居的想法余下的局部和全球加权。我们假设属于同一社区的用户具有类似的关系网络结构。通过控制“邻域”的测量,该方法可以充分适应现实世界网络。因此,着名的相似性计算方法-imrank-可以被视为我们方法的特殊情况。根据社交网络的实际意义,我们提出了一种新的评估方法,该方法使用通信率来测量其分割的偏差,以更好地表达用户的交互关系,而不是普通模块化Q.此外,快速的纽曼算法扩展到加权网络。此外,我们在最大的中国微博网站新浪使用四个真正的网络。实验结果表明,所提出的方法容易满足平衡要求,对不同类型的网络更加强大。实验结果还表明所提出的算法优于几种传统的加权方法。

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