HGCF: Hyperbolic Graph Convolution Networks for Collaborative Filtering

Jianing Sun, Zhaoyue Cheng, S. Zuberi, Felipe Pérez, M. Volkovs
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引用次数: 76

Abstract

Hyperbolic spaces offer a rich setup to learn embeddings with superior properties that have been leveraged in areas such as computer vision, natural language processing and computational biology. Recently, several hyperbolic approaches have been proposed to learn robust representations for users and items in the recommendation setting. However, these approaches don’t capture the higher order relationships that typically exist in the recommendation domain. Graph convolutional neural networks (GCNs) on the other hand excel at capturing higher order information by applying multiple levels of aggregation to local representations. In this paper we combine these frameworks in a novel way, by proposing a hyperbolic GCN model for collaborative filtering. We demonstrate that our model can be effectively learned with a margin ranking loss, and show that hyperbolic space has desirable properties under the rank margin setting. At test time, inference in our model is done using the hyperbolic distance which preserves the structure of the learned space. We conduct extensive empirical analysis on three public benchmarks and compare against a large set of baselines. Our approach achieves highly competitive results and outperforms leading baselines including the Euclidean GCN counterpart. We further study the properties of the learned hyperbolic embeddings and show that they offer meaningful insights into the data. Full code for this work is available here: https://github.com/layer6ai-labs/HGCF.
协同过滤的双曲图卷积网络
双曲空间为学习在计算机视觉、自然语言处理和计算生物学等领域中利用的具有优越特性的嵌入提供了丰富的设置。最近,人们提出了几种双曲线方法来学习推荐设置中用户和项目的鲁棒表示。然而,这些方法不能捕获推荐领域中通常存在的高阶关系。另一方面,图卷积神经网络(GCNs)擅长通过对局部表示应用多级聚合来捕获高阶信息。在本文中,我们以一种新颖的方式结合了这些框架,提出了一个双曲GCN模型用于协同过滤。我们证明了我们的模型可以有效地学习与边际排序损失,并表明双曲空间具有理想的性质下的排名边际设置。在测试时,我们的模型使用双曲距离进行推理,该距离保留了学习空间的结构。我们对三个公共基准进行了广泛的实证分析,并与大量基线进行了比较。我们的方法取得了极具竞争力的结果,并优于领先的基线,包括欧几里得GCN对应。我们进一步研究了学习到的双曲嵌入的性质,并表明它们为数据提供了有意义的见解。完整的代码可以在这里找到:https://github.com/layer6ai-labs/HGCF。
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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