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Kernel framework based on non-negative matrix factorization for networks reconstruction and link prediction

机译:基于非负矩阵分解的内核框架用于网络重构和链路预测

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摘要

Link prediction aims to extract missing informations, identify spurious interactions and potential informations in complex networks. Similarity-based methods, maximum likelihood methods and probabilistic models are the mainstreaming classes algorithms for link prediction. Meanwhile, low rank matrix approximation has been widely used in networks analysis and it can extract more useful features hidden in the original data through some kernel-induced nonlinear mapping. In this paper, based on the non-negative matrix factorization (NMF), we propose a kernel framework for link prediction and network reconstruction by using different kernels which could get both global and local information of the network through kernel mapping. In detailed, we map the adjacency matrix of the network to another feature space by two kernel functions, the Linear Kernel and Covariance Kernel, which have the principled interpretations for the network analysis and link predication. We test the AUC and Precision of widely used methods on a series of real world networks with different proportions of the training sets, experimental results show that our proposed framework has more robust and accurate performance compared with state-of-the-art methods. Remarkably, our approach also has the potential to address the problem of link prediction using small fraction of training set. (C) 2017 Elsevier B.V. All rights reserved.
机译:链接预测旨在提取丢失的信息,识别复杂网络中的虚假交互和潜在信息。基于相似度的方法,最大似然方法和概率模型是用于链接预测的主流类算法。同时,低秩矩阵逼近已被广泛用于网络分析中,并且可以通过一些核诱导的非线性映射来提取隐藏在原始数据中的更多有用特征。本文基于非负矩阵分解(NMF),提出了一种使用不同内核进行链路预测和网络重构的内核框架,该内核框架可以通过内核映射获取网络的全局和局部信息。详细地讲,我们通过两个内核函数(线性内核和协方差内核)将网络的邻接矩阵映射到另一个特征空间,这两个函数对网络分析和链接预测具有原则性的解释。我们在一系列不同比例的训练集的现实世界网络上测试了AUC和Precision的广泛使用方法,实验结果表明,与最新方法相比,我们提出的框架具有更强大,更准确的性能。值得注意的是,我们的方法还具有使用一小部分训练集解决链接预测问题的潜力。 (C)2017 Elsevier B.V.保留所有权利。

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