Link Pattern Prediction with tensor decomposition in multi-relational networks

Sheng Gao, Ludovic Denoyer, P. Gallinari
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引用次数: 20

Abstract

We address the problem of link prediction in collections of objects connected by multiple relation types, where each type may play a distinct role. While traditional link prediction models are limited to single-type link prediction we attempt here to jointly model and predict the multiple relation types, which we refer to as the Link Pattern Prediction (LPP) problem. For that, we propose a tensor decomposition model to solve the LPP problem, which allows to capture the correlations among different relation types and reveal the impact of various relations on prediction performance. The proposed tensor decomposition model is efficiently learned with a conjugate gradient based optimization method. Extensive experiments on real-world datasets demonstrate that this model outperforms the traditional mono-relational model and can achieve better prediction quality.
基于张量分解的多关系网络链接模式预测
我们解决了由多个关系类型连接的对象集合中的链接预测问题,其中每个类型可能扮演不同的角色。传统的链路预测模型局限于单一类型的链路预测,本文尝试对多种关系类型进行联合建模和预测,我们称之为链路模式预测(link Pattern prediction, LPP)问题。为此,我们提出了一个张量分解模型来解决LPP问题,该模型可以捕获不同关系类型之间的相关性,并揭示各种关系对预测性能的影响。采用基于共轭梯度的优化方法有效地学习了所提出的张量分解模型。在实际数据集上的大量实验表明,该模型优于传统的单关系模型,可以达到更好的预测质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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