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A PLSA-Based Approach for Building User Profile and Implementing Personalized Recommendation

机译:基于PLSA的构建用户配置文件和实现个性化推荐方法

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This paper proposes a method based on Probability Latent Semantic Analysis (PLSA) to analyze web pages that are of interest to the user and the user query co-occurrence relationship, and utilize the latent factors between the two co-occurrence data for building user profile. To make the weight of web pages that user isn’t interested decay rapidly, a Fibonacci function is designed as the decay factor for representing the user’s interests more exactly. The personalized recommendation is implemented according to the score of web pages. The experimental results showed that our approach was more effective than the other typical approaches to construct user profile.
机译:本文提出了一种基于概率潜在语义分析(PLSA)的方法来分析用户对用户感兴趣的网页以及用户查询共同发生关系,并利用两个共同发生数据之间的潜在因子来构建用户配置文件。为了使用户不迅速衰减的网页重量,Fibonacci函数被设计为更准确地表示用户的兴趣的衰减因子。个性化推荐是根据网页的分数实施的。实验结果表明,我们的方法比构建用户简档的其他典型方法更有效。

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