IRLGOct 7, 2021

Recent Advances in Heterogeneous Relation Learning for Recommendation

arXiv:2110.03455v134 citations
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners in recommender systems, but is incremental as it synthesizes existing work without new results.

This survey reviews the development of recommendation frameworks focusing on heterogeneous relational learning, which maps diverse dependencies between users and items into latent representations to preserve structural and relational properties.

Recommender systems have played a critical role in many web applications to meet user's personalized interests and alleviate the information overload. In this survey, we review the development of recommendation frameworks with the focus on heterogeneous relational learning, which consists of different types of dependencies among users and items. The objective of this task is to map heterogeneous relational data into latent representation space, such that the structural and relational properties from both user and item domain can be well preserved. To address this problem, recent research developments can fall into three major lines: social recommendation, knowledge graph-enhanced recommender system, and multi-behavior recommendation. We discuss the learning approaches in each category, such as matrix factorization, attention mechanism and graph neural networks, for effectively distilling heterogeneous contextual information. Finally, we present an exploratory outlook to highlight several promising directions and opportunities in heterogeneous relational learning frameworks for recommendation.

Foundations

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