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Fully Hyperbolic Graph Convolution Network for Recommendation

Liping Wang, Fenyu Hu, Shu Wu, Liang Wang

202126 citationsDOI

Abstract

Recently, Graph Convolution Network (GCN) based methods have achieved outstanding performance for recommendation. These methods embed users and items in Euclidean space, and perform graph convolution on user-item interaction graphs. However, real-world datasets usually exhibit tree-like hierarchical structures, which make Euclidean space less effective in capturing user-item relationship. In contrast, hyperbolic space, as a continuous analogue of a tree-graph, provides a promising alternative. In this paper, we propose a fully hyperbolic GCN model for recommendation, where all operations are performed in hyperbolic space. Utilizing the advantage of hyperbolic space, our method is able to embed users/items with less distortion and capture user-item interaction relationship more accurately. Extensive experiments on public benchmark datasets show that our method outperforms both Euclidean and hyperbolic counterparts and requires far lower embedding dimensionality to achieve comparable performance.

Topics & Concepts

Hyperbolic treeComputer scienceHyperbolic spaceEmbeddingConvolution (computer science)GraphEuclidean spaceTheoretical computer scienceCurse of dimensionalityEuclidean geometryBenchmark (surveying)AlgorithmMathematicsArtificial intelligenceHyperbolic functionHyperbolic manifoldArtificial neural networkCombinatoricsPure mathematicsGeometryGeodesyGeographyMathematical analysisRecommender Systems and TechniquesAdvanced Graph Neural NetworksCaching and Content Delivery
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