Recent advances in path-based explainable recommendation systems have attracted increasing attention thanks to the rich information provided by knowledge graphs. Most existing explainable recommendations only utilize static knowledge graphs and ignore the dynamic user-item evolutions, leading to less convincing and inaccurate explanations. Although there are some works that realize that modelling user's temporal sequential behaviour could boost the performance and explainability of the recommender systems, most of them either only focus on modelling user's sequential interactions within a path or independently and separately of the recommendation mechanism. In this paper, we propose a novel Temporal Meta-path Guided Explainable Recommendation leveraging Reinforcement Learning (TMER-RL), which utilizes reinforcement item-item path modelling between consecutive items with attention mechanisms to sequentially model dynamic user-item evolutions on dynamic knowledge graph for explainable recommendation. Compared with existing works that use heavy recurrent neural networks to model temporal information, we propose simple but effective neural networks to capture users' historical item features and path-based context to characterize the next purchased item. Extensive evaluations of TMER on two real-world datasets show state-of-the-art performance compared against recent strong baselines.
翻译:由于知识图表提供的丰富信息,基于路径的可解释建议系统最近的进展引起越来越多的关注。大多数现有的可解释建议仅使用静态知识图表,忽视用户项目动态演变,导致解释不那么可信和不准确。虽然有些工作认识到模拟用户的时序顺序行为可以提高建议系统的性能和可解释性,但大多数只是侧重于在路径内模拟用户的相继互动,或者独立和单独地在建议机制内进行。在本文件中,我们提出了一个新的Temoral Met-path 方向可解释建议“利用强化学习” (TMER-RL),在连续项目之间利用强化项目项目路径建模,同时注意机制在动态知识图上按顺序模拟动态用户项目演变,以便提出可解释的建议。与现有的工作相比,使用大量经常性神经网络模拟时间信息,我们建议简单而有效的神经网络来捕捉用户的历史项目特征和基于路径来描述下一个采购项目。两个真实世界数据集对TMER进行了广泛的评价,显示相对于最近强有力的基线的状态。