Graph convolution machine for context-aware recommender system

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作者
Jiancan Wu
Xiangnan He
Xiang Wang
Qifan Wang
Weijian Chen
Jianxun Lian
Xing Xie
机构
[1] University of Science and Technology of China,School of Information Science and Technology
[2] National University of Singapore,undefined
[3] Google Research,undefined
[4] Microsoft Research Asia,undefined
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context-aware recommender systems; graph convolution;
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摘要
The latest advance in recommendation shows that better user and item representations can be learned via performing graph convolutions on the user-item interaction graph. However, such finding is mostly restricted to the collaborative filtering (CF) scenario, where the interaction contexts are not available. In this work, we extend the advantages of graph convolutions to context-aware recommender system (CARS, which represents a generic type of models that can handle various side information). We propose Graph Convolution Machine (GCM), an end-to-end framework that consists of three components: an encoder, graph convolution (GC) layers, and a decoder. The encoder projects users, items, and contexts into embedding vectors, which are passed to the GC layers that refine user and item embeddings with context-aware graph convolutions on the user-item graph. The decoder digests the refined embeddings to output the prediction score by considering the interactions among user, item, and context embeddings. We conduct experiments on three real-world datasets from Yelp and Amazon, validating the effectiveness of GCM and the benefits of performing graph convolutions for CARS.
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