结合知识图谱的协同过滤混合推荐算法

Qi Guo, Yong Shao, Changshun Yan, Yuliang Shi
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引用次数: 0

摘要

如今,在数字经济蓬勃发展,视频成为数据爆炸的主要载体的背景下,提升视频行业推荐算法的精度成为一个突出的研究领域。利用TransR模型将电影知识图构建到关系空间中,获得电影实体及其关系,更好地反映电影之间的多重关系,从而计算电影之间的语义相似度,然后利用基于Pearson系数的协同过滤算法计算用户行为的相似度。将两个相似度线性融合,最终生成Top-N推荐的最终推荐列表。对比实验结果表明,该算法在查全率、查准率和平均绝对误差(MAE)等主要指标上均有提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative filtering hybrid recommendation algorithm incorporating knowledge graph
Nowadays, in the context of the booming digital economy and video becoming the main carrier of data explosion, enhancing the precision of recommendation algorithms in the video industry has emerged as a prominent area of investigation. By using the TransR model to construct the movie knowledge graph into the relationship space to obtain the movie entities and their relationships, the multiple relationships between movies are better reflected, so as to calculate the semantic similarity between movies, and then the collaborative filtering algorithm based on Pearson coefficient calculates the similarity of user behavior, and the two similarities are linearly fused to finally generate the final recommendation list for Top-N recommendation. Comparative experimental results show that the algorithm has improved in the main indexes, such as recall, accuracy, and mean absolute error (MAE).
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