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A Personalized Recommendation Algorithm Based on Time Factor and Reading Factor

机译:基于时间因素和阅读因素的个性化推荐算法

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摘要

With the rapid development of the Internet, the data in news, information, education and other application platforms are exploding, which has brought serious information overloading problems to Internet users. The recommendation algorithm is an effective solution to help Internet users select the valuable information from high volume data. Traditional recommendation algorithms ignore the change of users' interest over time and cannot provide users with effective and reasonable recommendation lists. To solve the above problems, this paper proposes a personalized recommendation method that time factor and reading factor into consideration. This method retrieves and compute time factor and reading factor in the process of user tag selection and then produce customized information recommendation list tailored for users. The experiment shows that the accuracy of our algorithm is higher than the traditional recommendation algorithm by considering time factor and reading factor.
机译:随着互联网的快速发展,新闻,信息,教育等应用平台中的数据呈爆炸式增长,给互联网用户带来了严重的信息超载问题。推荐算法是一种有效的解决方案,可以帮助Internet用户从大量数据中选择有价值的信息。传统的推荐算法忽略了用户兴趣随时间的变化,无法为用户提供有效,合理的推荐列表。针对上述问题,提出了一种考虑时间因素和阅读因素的个性化推荐方法。该方法在用户标签选择过程中检索并计算时间因素和阅读因素,然后生成针对用户的定制信息推荐列表。实验表明,在考虑时间因素和阅读因素的基础上,我们的算法的准确性高于传统推荐算法。

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