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A perturbation-based framework for link prediction via non-negative matrix factorization

机译:通过非负矩阵分解的链路预测基于扰动的框架

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Many link prediction methods have been developed to infer unobserved links or predict latent links based on the observed network structure. However, due to network noises and irregular links in real network, the performances of existed methods are usually limited. Considering random noises and irregular links, we propose a perturbation-based framework based on Non-negative Matrix Factorization to predict missing links. We first automatically determine the suitable number of latent features, which is inner rank in NMF, by Colibri method. Then, we perturb training set of a network by perturbation sets many times and get a series of perturbed networks. Finally, the common basis matrix and coefficients matrix of these perturbed networks are obtained via NMF and form similarity matrix of the network for link prediction. Experimental results on fifteen real networks show that the proposed framework has competitive performances compared with state-of-the-art link prediction methods. Correlations between the performances of different methods and the statistics of networks show that those methods with good precisions have similar consistence.
机译:已经开发了许多链路预测方法来基于观察到的网络结构推断出不观察到的链接或预测潜伏链路。然而,由于网络噪声和实际网络中的不规则链接,存在的方法的性能通常是有限的。考虑随机噪声和不规则链接,我们提出了一种基于非负矩阵分解的扰动的框架,以预测缺失的链接。我们首先通过Colibri方法自动确定适当的潜在特征,这是NMF中的内部等级。然后,我们通过扰动培训网络训练集多次并获得一系列扰动网络。最后,通过NMF获得这些扰动网络的常见基矩阵和系数矩阵,并形成网络的相似性矩阵以进行链路预测。十五个真实网络上的实验结果表明,与最先进的链路预测方法相比,该框架具有竞争性的性能。不同方法的性能与网络统计的相关性,表明那些具有良好精度的方法具有相似的一致性。

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