A Hyperbolic-to-Hyperbolic User Representation with Multi-aspect for Social Recommendation

Hang Zhang, Hao Wang, Guifeng Wang, Jia-Yin Liu, Qi Liu
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Abstract

Social recommender systems play a key role in solving the problem of information overload. In order to better extract latent hierarchical property in the data, they usually explore the user-user connections and user-item interactions in hyperbolic space. Existing methods resort tangent spaces to realize some operations (e.g., matrix multiplication) on hyperbolic manifolds. However, frequently projecting between the hyperbolic space and the tangent space will destroy the global structure of the manifold and reduce the accuracy of predictions. Besides, decisions made by users are often influenced by multi-aspect potential preferences, which are usually represented as a vector for each user. To this end, we design a novel hyperbolic-to-hyperbolic user representation with multi-aspect social recommender system, namely H2HMSR, which directly works in hyperbolic space. Extensive experiments on three public datasets demonstrate that our model can adequately extract social information of users with multi-aspect preferences and outperforms hyperbolic and Euclidean counterparts.
面向社会推荐的双曲-双曲多面向用户表示
社会推荐系统是解决信息过载问题的关键。为了更好地提取数据中潜在的层次属性,他们通常在双曲空间中探索用户-用户连接和用户-项目交互。现有的方法利用切空间来实现双曲流形上的一些运算(如矩阵乘法)。然而,频繁地在双曲空间和切线空间之间进行投影会破坏流形的整体结构,降低预测的准确性。此外,用户的决策往往受到多方面潜在偏好的影响,这些偏好通常被表示为每个用户的向量。为此,我们设计了一种新颖的双曲-双曲多面向用户表示的社会推荐系统,即H2HMSR,它直接工作在双曲空间中。在三个公共数据集上的大量实验表明,我们的模型可以充分提取具有多方面偏好的用户的社会信息,并且优于双曲和欧几里得模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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