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融合电影流行性与观影时间的协同过滤算法

钱泽俊 刘润然

网络安全与数据治理2024,Vol.43Issue(2):54-63,10.
网络安全与数据治理2024,Vol.43Issue(2):54-63,10.DOI:10.19358/j.issn.2097-1788.2024.02.009

融合电影流行性与观影时间的协同过滤算法

Collaborative filtering algorithm combining movie popularity and viewing time

钱泽俊 1刘润然1

作者信息

  • 1. 杭州师范大学 阿里巴巴商学院, 浙江 杭州 311121
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摘要

Abstract

As the core of the collaborative filtering recommendation algorithm,similarity evaluation is still difficult to fully utilize evaluation data in all dimensions,despite researchers constantly improving it.In this paper,aiming at this challenge,the mutual influence between users and movies is taken as the starting point,the possible self-consistent logic between the two is explored,and a formula called Movie Popularity Weight(MPW)calculation formula is proposed to calculate the weight of movies.Then,taking the viewing time of users as the research object,the relationship between the change of viewing preference and the viewing time sequence of users is explored,and combined with the theory of Kendall correlation coefficient,a formula called Consistency in Viewing Sequence(CVS)calculation formula is proposed.Finally,the traditional similarity algorithm is improved by using the above research content,and the improved similarity algorithm is validated by using two datasets,one is the Netflix Prize dataset,while the other one is built based on publicly available data from Douban.com called Douban Movie K5 dataset.The experimental result shows that the improved similarity algorithm has higher recommendation accuracy.

关键词

推荐算法/协同过滤/相似度算法/电影流行度/观影时间

Key words

recommendation algorithm/collaborative filtering/similarity algorithm/movie popularity/viewing time

分类

信息技术与安全科学

引用本文复制引用

钱泽俊,刘润然..融合电影流行性与观影时间的协同过滤算法[J].网络安全与数据治理,2024,43(2):54-63,10.

网络安全与数据治理

2097-1788

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