基于DQN和知识图的推理路径推荐系统

Wenyi Xu, Xiaofeng Gao, Yin Sheng, Guihai Chen
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引用次数: 7

摘要

推荐系统是一个热门的研究领域。在信息爆炸的时代,用户需要一个可靠的推荐系统。有一定数量的方法来做推荐工作。强化学习是推荐系统中常用的方法之一。在本文中,我们使用强化学习向目标用户推荐物品,并取得了相当好的效果。为了提供更好的用户体验,我们为推荐项目添加了说明。通过知识图谱实现解释。我们使用TransE来嵌入目标用户和项目,并帮助管理用户和项目的信息。我们的方法KGDQN结合了知识图和强化学习,可以确定合适的推荐项目,并找到从目标用户到推荐项目的推理路径。对冗余边进行修剪,DQN模型呈现一个奖励函数,该函数给出了推荐项目的结果和推荐的解释路径。在Amazon数据集上进行的实验表明,KGDQN具有优越的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recommendation System with Reasoning Path Based on DQN and Knowledge Graph
Recommendation system is a popular research field. In the age of information explosion, a reliable recommendation system is necessary for users. There are a certain number of approaches to do recommendation work. Reinforcement learning is one of the methods used in recommendation system. In this paper, we use reinforcement learning to recommend items to target users, and achieved a rather good result. To give a better user experience, we have added explanations for recommended items. The explanation is realized by Knowledge Graph. We use TransE to embed target users and items, and it helps manage the information of users and items. Our method KGDQN combines Knowledge Graph and reinforcement learning, which can decide the proper recommendation items, and find the reasoning paths from target users to recommended items. Redundant edges are pruned and the DQN model renders a reward function which gives back the result of recommended items, and the explanation paths of the recommendation. Experiments are conducted on Amazon datasets which show the superior performance of KGDQN
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