一种结合自关注机制和知识图谱的推荐算法

Jingjing Hou, Yuchen Jin, Yi-Wei Liu, Zhenhua Zhang, Qinghua Zhao
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引用次数: 0

摘要

针对推荐系统中存在的数据稀疏、推荐准确率低、推荐效果差等问题。本文提出了一种融合自关注机制和知识图谱的推荐算法。该算法主要包括推荐模块、知识图特征学习模块和自关注模块。在该算法推荐系统模块中,以用户和项目为输入,将输入的项目向量和实体向量嵌入到自关注模块中,增强了这两个向量的特征表示。知识图谱特征表示模块将三元组中的头部实体和关系映射到一个连续的向量空间中,并通过分数函数计算出相应的值。推荐模块和知识图表示模型通过嵌入在自关注机制中的交叉压缩单元连接起来。最后,利用损失函数计算各模块的损耗。在三个不同的公开数据集上的实验表明:引入的嵌入式关注机制模块可以很好地解决推荐系统的准确率问题;其次,嵌入式注意力机制交叉压缩单元模块对推荐系统进行了增强,在横向和纵向上对向量进行压缩。最后,通过对比其他算法的实验,本文提出的方法提高了推荐系统的推荐精度和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Recommendation Algorithm Incorporating Self-Attention Mechanism and Knowledge Graph
To address the problems of sparse data, low recommendation accuracy and poor recommendation effect in recommendation systems. In this paper, we propose a recommendation algorithm that fuses the self-attention mechanism and knowledge graph. The algorithm mainly includes recommendation module, knowledge graph feature learning, and self-attention. In this algorithm recommendation system module, a user and an item are input, and the input item vector and entity vector are embedded in the self-attention module, so that the feature representation of these two vectors is enhanced. The knowledge graph feature representation module maps the head entities and relations in the triad into a continuous vector space, and calculates the corresponding values through the score function. The recommendation module and the knowledge graph representation model are connected through the cross-compression unit embedded in the self-attentive mechanism. Finally, the loss of each module is calculated by a loss function. Experiments on three different publicly available datasets show that: the embedded attention mechanism module introduced can well solve the accuracy problem of the recommendation system; Secondly, the embedded attention mechanism cross-compression unit module enhances the recommendation system in which vectors are compressed in horizontal and vertical directions. Finally, through experiments comparing other algorithms, the proposed method improves the recommendation accuracy and effectiveness in the recommendation system.
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