Recommendation Algorithm Based on Knowledge Graph to Propagate User Preference

Zhisheng Yang, Jinyong Cheng
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引用次数: 6

Abstract

In recommendation algorithms, data sparsity and cold start problems are always inevitable. In order to solve such problems, researchers apply auxiliary information to recommendation algorithms to mine and obtain more potential information through users' historical records and then improve recommendation performance. This paper proposes a model ST_RippleNet, which combines knowledge graph with deep learning. In this model, users' potential interests are mined in the knowledge graph to stimulate the propagation of users' preferences on the set of knowledge entities. In the propagation of preferences, we adopt a triple-based multi-layer attention mechanism, and the distribution of users' preferences for candidate items formed by users' historical click information is used to predict the final click probability. In ST_RippleNet model, music data set is added to the original movie and book data set, and the improved loss function is applied to the model, which is optimized by RMSProp optimizer. Finally, tanh function is added to predict click probability to improve recommendation performance. Compared with the current mainstream recommendation methods, ST_RippleNet recommendation algorithm has very good performance in AUC and ACC, and has substantial improvement in movie, book and music recommendation.
基于知识图的用户偏好传播推荐算法
在推荐算法中,数据稀疏性和冷启动问题总是不可避免的。为了解决这些问题,研究人员将辅助信息应用到推荐算法中,通过用户的历史记录来挖掘和获取更多的潜在信息,从而提高推荐性能。本文提出了一种将知识图与深度学习相结合的ST_RippleNet模型。该模型在知识图中挖掘用户的潜在兴趣,刺激用户的偏好在知识实体集上传播。在偏好传播中,我们采用了基于三层的多层关注机制,利用用户历史点击信息形成的用户对候选项目的偏好分布来预测最终的点击概率。在ST_RippleNet模型中,将音乐数据集加入到原始的电影和书籍数据集中,并将改进的损失函数应用到模型中,通过RMSProp优化器对模型进行优化。最后,加入tanh函数预测点击概率,提高推荐性能。与目前主流推荐方法相比,ST_RippleNet推荐算法在AUC和ACC方面都有非常好的表现,在电影、书籍和音乐推荐方面也有实质性的提升。
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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