基于兴趣量化和项目聚类的电视推荐算法

Chao Cheng, Xingjun Wang, Zhiyong Li, Yuxi Lin
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引用次数: 0

摘要

推荐系统(RSs)是为用户提供有用项目建议的软件工具和技术。随着互联网的日益发展和信息的爆炸,推荐系统已经成为许多应用中不可缺少的组成部分。本文提出了一种基于分解模型的推荐算法,并将其应用于电视系统。为了量化用户对节目的兴趣/偏好,定义了一种新颖而合理的符号——用户兴趣指数,有助于提高推荐效果。用户和程序的矢量化来源于项目聚类。最后,我们采用top-K推荐策略,并对算法的性能进行了评估。实验结果表明,该算法在查准率和查全率上都有较好的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new TV recommendation algorithm based on interest quantification and item clustering
Recommender Systems(RSs) are software tools and techniques providing suggestions for items to be of use to a user. With the increasing development of Internet and explosion of information, recommender system has been an indispensable component in many applications. In this paper, a recommendation algorithm based on factorization model is proposed, which is applied to TV system. To quantize users' interest/preference to programs, a novel and rational notation, user interest index, is defined and helps improve recommendation effect. The vectorization of users and programs are derived from item clustering. Finally, we adopted top-K recommendation strategy, and evaluated the performance of our algorithm. According to experiment results, we found that the algorithm performs well on precision and recall rate.
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