2022
DOI: 10.48550/arxiv.2206.02115
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Learning Binarized Graph Representations with Multi-faceted Quantization Reinforcement for Top-K Recommendation

Abstract: Learning vectorized embeddings is at the core of various recommender systems for user-item matching. To perform efficient online inference, representation quantization, aiming to embed the latent features by a compact sequence of discrete numbers, recently shows the promising potentiality in optimizing both memory and computation overheads. However, existing work merely focuses on numerical quantization whilst ignoring the concomitant information loss issue, which, consequently, leads to conspicuous performanc… Show more

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