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Link Prediction by Incidence Matrix Factorization

机译:通过入射矩阵分解的链路预测

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Link prediction suffers from the data sparsity problem. This paper presents and validates our hypothesis that, for sparse networks, incidence matrix factorization (IMF) could perform better than adjacency matrix factorization (AMF), which has been used in many previous studies. A key observation supporting the hypothesis is that IMF models a partially-observed graph more accurately than AMF. A technical challenge for validating our hypothesis is that, unlike AMF approach, there does not exist an obvious method to make predictions using a factorized incidence matrix. To this end, we newly develop an optimization-based link prediction method adopting IMF. We have conducted thorough experiments using synthetic and realworld datasets to investigate the relationship between the sparsity of a network and the performance of the aforementioned two methods. The experimental results show that IMF performs better than AMF as networks become sparser, which strongly validates our hypothesis.
机译:链路预测遭受数据稀疏问题。本文介绍并验证了我们的假设,即对于稀疏网络,发病矩阵分解(IMF)可以比在许多先前的研究中使用的邻接矩阵分解(AMF)更好。支持假设的关键观察是IMF比AMF更精确地模拟部分观察的图。验证我们的假设的技术挑战是,与AMF方法不同,不存在使用分解发生率矩阵进行预测的明显方法。为此,我们新开发了采用IMF的基于优化的链路预测方法。我们使用合成和Realworld数据集进行了彻底的实验,以研究网络的稀疏性与上述两种方法的性能之间的关系。实验结果表明,随着网络变得稀疏,IMF比AMF更好,这强烈验证了我们的假设。

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