2019
DOI: 10.1109/access.2018.2890480
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Improving Recommendations by Embedding Multi-Entity Relationships With Latent Dual-Metric Learning

Abstract: Recently, latent vector embedding has become a research hotspot, with its great representative ability to measure the latent relationships among different views. However, most researches utilize the inner product of latent vectors as the representation of relationships, and they develop some embedding models based on this theory. In this paper, we take deep insight into the existing embedding models and find that utilizing the inner product may increase several problems: 1) in latent space, the inner product a… Show more

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References 26 publications
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