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HyperML: A Boosting Metric Learning Approach in Hyperbolic Space for Recommender Systems

About

This paper investigates the notion of learning user and item representations in non-Euclidean space. Specifically, we study the connection between metric learning in hyperbolic space and collaborative filtering by exploring Mobius gyrovector spaces where the formalism of the spaces could be utilized to generalize the most common Euclidean vector operations. Overall, this work aims to bridge the gap between Euclidean and hyperbolic geometry in recommender systems through metric learning approach. We propose HyperML (Hyperbolic Metric Learning), a conceptually simple but highly effective model for boosting the performance. Via a series of extensive experiments, we show that our proposed HyperML not only outperforms their Euclidean counterparts, but also achieves state-of-the-art performance on multiple benchmark datasets, demonstrating the effectiveness of personalized recommendation in hyperbolic geometry.

Lucas Vinh Tran, Yi Tay, Shuai Zhang, Gao Cong, Xiaoli Li• 2018

Related benchmarks

TaskDatasetResultRank
RecommendationSports
nDCG@1034.576
19
RecommendationYelp--
16
Collaborative RankingMeetup
H@1067.304
12
RecommendationMovieLens 20M
nDCG@1064.042
6
RecommendationMovieLens 1M
nDCG@1056.197
6
RecommendationGoodbooks
nDCG@1051.088
6
RecommendationClothing
nDCG@1017.15
6
RecommendationCell phones
nDCG@1029.325
6
RecommendationGames
nDCG@1023.164
6
RecommendationAutomotive
nDCG@100.2474
6
Showing 10 of 10 rows

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