Multi-Component Graph Convolutional Collaborative Filtering
November 25, 2019 ยท Declared Dead ยท ๐ AAAI Conference on Artificial Intelligence
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Authors
Xiao Wang, Ruijia Wang, Chuan Shi, Guojie Song, Qingyong Li
arXiv ID
1911.10699
Category
cs.LG: Machine Learning
Cross-listed
cs.IR,
stat.ML
Citations
125
Venue
AAAI Conference on Artificial Intelligence
Last Checked
4 months ago
Abstract
The interactions of users and items in recommender system could be naturally modeled as a user-item bipartite graph. In recent years, we have witnessed an emerging research effort in exploring user-item graph for collaborative filtering methods. Nevertheless, the formation of user-item interactions typically arises from highly complex latent purchasing motivations, such as high cost performance or eye-catching appearance, which are indistinguishably represented by the edges. The existing approaches still remain the differences between various purchasing motivations unexplored, rendering the inability to capture fine-grained user preference. Therefore, in this paper we propose a novel Multi-Component graph convolutional Collaborative Filtering (MCCF) approach to distinguish the latent purchasing motivations underneath the observed explicit user-item interactions. Specifically, there are two elaborately designed modules, decomposer and combiner, inside MCCF. The former first decomposes the edges in user-item graph to identify the latent components that may cause the purchasing relationship; the latter then recombines these latent components automatically to obtain unified embeddings for prediction. Furthermore, the sparse regularizer and weighted random sample strategy are utilized to alleviate the overfitting problem and accelerate the optimization. Empirical results on three real datasets and a synthetic dataset not only show the significant performance gains of MCCF, but also well demonstrate the necessity of considering multiple components.
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