基于块信息增强的非负矩阵分解的链路预测

Qian Yang, Enming Dong, Zheng Xie
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引用次数: 12

摘要

用于网络链路预测的低秩矩阵近似通常是全局最优方法,使用的局部信息很少。然而,链接更有可能出现在密集的块中。还发现,由于同一块中的实体具有相似的值,因此块结构表示矩阵的局部特征。因此,我们将凸非负矩阵分解的链路预测方法与块检测相结合,利用全局和局部信息预测潜在的链路。我们提出了一个概率潜变量模型,实验表明,我们的方法比原始方法具有更好的预测精度(例如,在空手道俱乐部网络中,当缺失环节占5%时,AUC=0.861991提高了10%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Link prediction via nonnegative matrix factorization enhanced by blocks information
Low rank matrices approximations which have been used in networks link prediction are usually global optimal methods and use little local information. However, links are more likely to be found within dense blocks. It is also found that the block structure represents the local feature of matrices because entities in the same block have similar values. So we combines link prediction method by convex nonnegative matrix factorization with block detection to predict potential links using both of global and local information. A probabilistic latent variable model is presented by us and the experiments show that our method gives better prediction accuracy than original method alone (For example, AUC=0.861991 is higher 10% on Karate club network with 5% missing links.).
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