论文标题

在多个两部分图上进行关系的协作对抗性学习

Collaborative Adversarial Learning for RelationalLearning on Multiple Bipartite Graphs

论文作者

Su, Jingchao, Chen, Xu, Zhang, Ya, Chen, Siheng, Lv, Dan, Li, Chenyang

论文摘要

关系学习旨在通过利用不同类型实体之间的相关性来进行关系推断。在多个二手图上探索关系学习一直引起人们的关注,因为其流行的应用(例如建议)。如何与很少观察到的链接进行有效的关系推断是多个两部分图的主要问题。大多数现有的方法试图通过学习共享表示形式来解决稀疏问题,以整合共享实体的多源数据中的知识。但是,它们只是从一个方面(例如分布,表示)对相关性进行建模,并且不能对共享实体的不同关系施加足够的约束。建模多域数据的一种有效方法是学习跨领域共享实体的联合分布。在本文中,我们提出的协作对手学习(CAL)明确对共享实体的共享实体分布进行了多个双方图。 CAL的目的是根据最大化观测值的关节对数似然的变化下限提出的。特别是,CAL由分布级和特征级别的比对组成,用于来自多个两部分图的知识。两级对齐是对共享实体不同关系的两个不同限制,并促进了更好的知识转移,以在多个两部分图上进行关系学习。在两个现实世界数据集上进行的广泛实验表明,所提出的模型的表现优于现有方法。

Relational learning aims to make relation inference by exploiting the correlations among different types of entities. Exploring relational learning on multiple bipartite graphs has been receiving attention because of its popular applications such as recommendations. How to make efficient relation inference with few observed links is the main problem on multiple bipartite graphs. Most existing approaches attempt to solve the sparsity problem via learning shared representations to integrate knowledge from multi-source data for shared entities. However, they merely model the correlations from one aspect (e.g. distribution, representation), and cannot impose sufficient constraints on different relations of the shared entities. One effective way of modeling the multi-domain data is to learn the joint distribution of the shared entities across domains.In this paper, we propose Collaborative Adversarial Learning (CAL) that explicitly models the joint distribution of the shared entities across multiple bipartite graphs. The objective of CAL is formulated from a variational lower bound that maximizes the joint log-likelihoods of the observations. In particular, CAL consists of distribution-level and feature-level alignments for knowledge from multiple bipartite graphs. The two-level alignment acts as two different constraints on different relations of the shared entities and facilitates better knowledge transfer for relational learning on multiple bipartite graphs. Extensive experiments on two real-world datasets have shown that the proposed model outperforms the existing methods.

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