In large-scale recommender systems, the user-item networks are generally scale-free or expand exponentially. The latent features (also known as embeddings) used to describe the user and item are determined by how well the embedding space fits the data distribution. Hyperbolic space offers a spacious room to learn embeddings with its negative curvature and metric properties, which can well fit data with tree-like structures. Recently, several hyperbolic approaches have been proposed to learn high-quality representations for the users and items. However, most of them concentrate on developing the hyperbolic similitude by designing appropriate projection operations, whereas many advantageous and exciting geometric properties of hyperbolic space have not been explicitly explored. For example, one of the most notable properties of hyperbolic space is that its capacity space increases exponentially with the radius, which indicates the area far away from the hyperbolic origin is much more embeddable. Regarding the geometric properties of hyperbolic space, we bring up a Hyperbolic Regularization powered Collaborative Filtering(HRCF) and design a geometric-aware hyperbolic regularizer. Specifically, the proposal boosts optimization procedure via the root alignment and origin-aware penalty, which is simple yet impressively effective. Through theoretical analysis, we further show that our proposal is able to tackle the over-smoothing problem caused by hyperbolic aggregation and also brings the models a better discriminative ability. We conduct extensive empirical analysis, comparing our proposal against a large set of baselines on several public benchmarks. The empirical results show that our approach achieves highly competitive performance and surpasses both the leading Euclidean and hyperbolic baselines by considerable margins.
翻译:在大型建议系统中,用户项目网络一般没有比例化,或成倍扩大。用于描述用户和项目的潜伏特征(也称为嵌入式)由嵌入空间与数据分布的相匹配程度决定。双曲空间提供了一个宽敞的空间,可以学习其负曲线和度属性的嵌入,这可以与树形结构相匹配。最近,提出了几种双曲方法,以学习用户和项目的高质量表达方式。然而,它们大多侧重于通过设计适当的投影操作来发展超双曲相似度(也称为嵌入式),而超曲空间的许多有利和令人兴奋的地理测量特性则没有被明确探索。例如,超曲空间的一个最显著的特性是其能力随半径而突变,表明离超曲形结构结构远的区域更加容易被嵌入。关于超曲线空间的几何测量特性,我们提出了一种双向双向双向透析(HRCF)的双向双向双向透析,并设计了高正对准公共空间的双向双向超偏偏直径直径直等的精确度测量特性特性。具体来说,通过直径直径直径直径直径直径分析,从而展示了我们一系列的底底底底底底底底底底底底底分析,从而展示了我们的底分析,从而进一步展示了我们的底底底底线标法,从而进一步展示了我们。具体地展示了我们通过直判法,从而展示了我们直径直判法,从而展示了我们更精确法,从而展示了一种更精确法,从而展示了我们的底底底的理论法。