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We propose a new STAcked and Reconstructed Graph Convolutional Networks (STAR-GCN) architecture to learn node representations for boosting the performance in recommender systems, especially in the cold start scenario. STAR-GCN employs a stack of GCN encoder-decoders combined with intermediate supervision to improve the final prediction performance. Unlike the graph convolutional matrix completion model with one-hot encoding node inputs, our STAR-GCN learns low-dimensional user and item latent factors as the input to restrain the model space complexity. Moreover, our STAR-GCN can produce node embeddings for new nodes by reconstructing masked input node embeddings, which essentially tackles the cold start problem. Furthermore, we discover a label leakage issue when training GCN-based models for link prediction tasks and propose a training strategy to avoid the issue. Empirical results on multiple rating prediction benchmarks demonstrate our model achieves state-of-the-art performance in four out of five real-world datasets and significant improvements in predicting ratings in the cold start scenario. The code implementation is available in https://github.com/jennyzhang0215/STAR-GCN.
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Zhang et al. (Sun,) studied this question.
synapsesocial.com/papers/6a03342959ea043e4c9e4582 — DOI: https://doi.org/10.24963/ijcai.2019/592
Jiani Zhang
Fujian Medical University
Xingjian Shi
Nanjing Forestry University
Shenglin Zhao
Chinese University of Hong Kong
Chinese University of Hong Kong
Hong Kong University of Science and Technology
Tencent (China)
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