基于犹豫度的物品协同过滤算法改进

X. Mu, Yan Chen, Shenjun Qin
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摘要

随着互联网上的信息量呈指数级增长,寻找高效和有价值的信息变得越来越困难。协同过滤在web服务个性化和推荐系统中起着非常重要的作用。本文提出了犹豫度来提高基于Item的协同过滤的准确率,并将三种犹豫度引入到相似性计算中,结果表明,预测准确率可提高25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improvement of Item-Based Collaborative Filtering Algorithm Based on Hesitation Degree
with an exponentially growing amount of information being added to the Internet, finding efficient and valuable information is becoming more difficult. Collaborative Filtering acts a very important role in web service personalization and Recommender System. In this paper, Hesitation Degree was proposed to improve the accuracy of Item based collaboration filtering, three kinds of Hesitation Degree were introduced into similarity computation, and the results show that the prediction accuracy can be improved by 25 percents.
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