Personalized News Recommendation Based on Collaborative Filtering

Florent Garcin, Kai Zhou, B. Faltings, Vincent Schickel
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引用次数: 53

Abstract

Because of the abundance of news on the web, news recommendation is an important problem. We compare three approaches for personalized news recommendation: collaborative filtering at the level of news items, content-based system recommending items with similar topics, and a hybrid technique. We observe that recommending items according to the topic profile of the current browsing session seems to give poor results. Although news articles change frequently and thus data about their popularity is sparse, collaborative filtering applied to individual articles provides the best results.
基于协同过滤的个性化新闻推荐
由于网络上新闻的丰富性,新闻推荐成为一个重要的问题。我们比较了个性化新闻推荐的三种方法:新闻项目层面的协同过滤,基于内容的系统推荐具有相似主题的项目,以及混合技术。我们观察到,根据当前浏览会话的主题配置文件推荐项目似乎效果不佳。尽管新闻文章变化频繁,因此关于其受欢迎程度的数据很少,但将协作过滤应用于单个文章可以提供最佳结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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