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A hybrid approach for personalized recommendation of news on the Web

机译:一种用于在网络上个性化推荐新闻的混合方法

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摘要

A hybrid method for personalized recommendation of news on the Web is presented, which provides Web users with an autonomous tool that is able to minimize repetitive and tedious Web surfing. The proposed approach classifies Web pages by calculating the respective weights of terms. A user's interest and preference models are generated by analyzing the user's navigational history. Based on the content of the Web pages and on a user's interest and preference models, the recommender system suggests news Web pages to the user who is likely interested in the related topics. Moreover, the technique of collaborative filtering, which aims to choose the trusted users, is employed to improve the performance of the recommender system. Experiments are carried out in order to demonstrate the effectiveness of the proposed method. In the experiments. Web news items are classified and recommended to Web users by matching the users' interests with the contents of the news.
机译:提出了一种用于在Web上个性化推荐新闻的混合方法,该方法为Web用户提供了一种自治工具,该工具能够最大程度地减少重复和繁琐的Web浏览。所提出的方法通过计算术语的权重对网页进行分类。通过分析用户的导航历史来生成用户的兴趣和偏好模型。基于网页的内容以及用户的兴趣和偏好模型,推荐器系统向可能对相关主题感兴趣的用户建议新闻网页。此外,旨在选择可信用户的协作过滤技术被用来提高推荐系统的性能。为了证明所提方法的有效性,进行了实验。在实验中。通过将用户的兴趣与新闻内容相匹配,可以对Web新闻项进行分类并推荐给Web用户。

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