利用集成扩展链路预测

Liang Duan, C. Aggarwal, Shuai Ma, Renjun Hu, J. Huai
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引用次数: 22

摘要

一个有$n$个节点的网络包含O(n2)条可能的链路。即使对于中等规模的网络,通常也很难以有意义的方式评估链接的所有成对可能性。此外,尽管链接预测与缺失值估计问题(如协同过滤)密切相关,但由于潜在因素方法在非常大的网络上的计算复杂性,通常难以使用复杂的模型(如潜在因素方法)。由于这种计算复杂性,大多数已知的链接预测方法都是为了评估特定链接子集上的链接倾向而设计的,而不是为了在整个网络上执行全局搜索。然而,在实践中,对整个网络进行详尽的搜索是必要的。在本文中,我们提出了一种集成的方法来扩展链路预测,该方法能够将传统的链路预测问题分解成更小的子问题。这些子问题都是通过使用潜在因素模型来解决的,这种模型可以在中等规模的网络上有效地实现。此外,启用集成的方法在性能方面有几个优势。我们展示了在非常大的网络上使用基于集合的潜在因素模型的优势。实验结果证明了该方法的有效性和可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scaling up Link Prediction with Ensembles
A network with $n$ nodes contains O(n2) possible links. Even for networks of modest size, it is often difficult to evaluate all pairwise possibilities for links in a meaningful way. Furthermore, even though link prediction is closely related to missing value estimation problems, such as collaborative filtering, it is often difficult to use sophisticated models such as latent factor methods because of their computational complexity over very large networks. Due to this computational complexity, most known link prediction methods are designed for evaluating the link propensity over a specified subset of links, rather than for performing a global search over the entire networks. In practice, however, it is essential to perform an exhaustive search over the entire networks. In this paper, we propose an ensemble enabled approach to scaling up link prediction, which is able to decompose traditional link prediction problems into subproblems of smaller size. These subproblems are each solved with the use of latent factor models, which can be effectively implemented over networks of modest size. Furthermore, the ensemble enabled approach has several advantages in terms of performance. We show the advantage of using ensemble-based latent factor models with experiments on very large networks. Experimental results demonstrate the effectiveness and scalability of our approach.
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