Sequential recommendation (SR) learns users' preferences by capturing the sequential patterns from users' behaviors evolution. As discussed in many works, user-item interactions of SR generally present the intrinsic power-law distribution, which can be ascended to hierarchy-like structures. Previous methods usually handle such hierarchical information by making user-item sectionalization empirically under Euclidean space, which may cause distortion of user-item representation in real online scenarios. In this paper, we propose a Poincar\'{e}-based heterogeneous graph neural network named PHGR to model the sequential pattern information as well as hierarchical information contained in the data of SR scenarios simultaneously. Specifically, for the purpose of explicitly capturing the hierarchical information, we first construct a weighted user-item heterogeneous graph by aliening all the user-item interactions to improve the perception domain of each user from a global view. Then the output of the global representation would be used to complement the local directed item-item homogeneous graph convolution. By defining a novel hyperbolic inner product operator, the global and local graph representation learning are directly conducted in Poincar\'{e} ball instead of commonly used projection operation between Poincar\'{e} ball and Euclidean space, which could alleviate the cumulative error issue of general bidirectional translation process. Moreover, for the purpose of explicitly capturing the sequential dependency information, we design two types of temporal attention operations under Poincar\'{e} ball space. Empirical evaluations on datasets from the public and financial industry show that PHGR outperforms several comparison methods.
翻译:序列建议 (SR) 通过从用户行为演变中获取顺序模式来学习用户偏好。 正如许多著作所讨论的, 斯洛伐克共和国的用户- 项目互动通常同时呈现内在的权力法分布, 可以升至等级式结构。 以前的方法通常通过在 Euclidean 空间下的经验化用户- 项目分门化处理这种等级信息, 这可能会在真实的在线情景中造成用户- 项目表达方式的扭曲。 在本文中, 我们提议一个基于 Poincar\ { e} 的基于 Poincar\ { { e} 的混合图形神经网络, 来模拟顺序模式信息以及SR 假设情景数据中包含的等级信息。 具体地说, 为了明确获取等级信息, 我们首先通过将所有用户- 项目互动从全球视角中分离出来, 来构建一个加权的用户- 项目- 分门化组合图。 然后, 全球代表的输出结果将被用来补充本地直接的项目- 均匀图形变变。 通过定义一个新的超偏向内部产品操作, 全球和本地的图形表达方式学习是直接在 Pincar\ “ comcar” lical deal deal deal deal” practal deal deal deal devidududuction press press 中进行。