Collaborative Adversarial Learning for RelationalLearning on Multiple Bipartite Graphs

07/16/2020
by   Jingchao Su, et al.
0

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.

READ FULL TEXT
research
06/27/2019

Adversarial Representation Learning on Large-Scale Bipartite Graphs

Graph representation on large-scale bipartite graphs is central for a va...
research
04/03/2022

Virtual Relational Knowledge Graphs for Recommendation

Incorporating knowledge graph as side information has become a new trend...
research
11/16/2022

UniRel: Unified Representation and Interaction for Joint Relational Triple Extraction

Relational triple extraction is challenging for its difficulty in captur...
research
04/28/2020

Out-of-Sample Representation Learning for Multi-Relational Graphs

Many important problems can be formulated as reasoning in multi-relation...
research
09/10/2018

Inferring Influence Networks from Longitudinal Bipartite Relational Data

Longitudinal bipartite relational data characterize the evolution of rel...
research
05/06/2017

Analogical Inference for Multi-Relational Embeddings

Large-scale multi-relational embedding refers to the task of learning th...
research
06/28/2023

Representation Learning via Variational Bayesian Networks

We present Variational Bayesian Network (VBN) - a novel Bayesian entity ...

Please sign up or login with your details

Forgot password? Click here to reset