首页> 外文会议>Ibero-American Conference on AI(IBERAMIA 2004); 20041122-26; Puebla(IT) >Collaborative Filtering Based on Modal Symbolic User Profiles: Knowing You in the First Meeting
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Collaborative Filtering Based on Modal Symbolic User Profiles: Knowing You in the First Meeting

机译:基于模态符号用户配置文件的协作过滤:第一次会议时认识您

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Recommender systems seek to furnish personalized suggestions automatically based on user preferences. These systems use information filtering techniques to recommend new items which has been classified according to one of the three approaches: Content Based Filtering, Collaborative Filtering or hybrid filtering methods. This paper presents a new hybrid filtering approach getting the better qualities of the kNN Collaborative Filtering method with the content filtering one based on Modal Symbolic Data. The main idea is comparing modal symbolic descriptions of users profiles in order to compute the neighborhood of some user in the Collaborative Filtering algorithm. This new approach outperforms, concerning the Find Good Items task measured by half-life utility metric, other three systems: content filtering based on Modal Symbolic Data, kNN Collaborative Filtering based on Pearson Correlation and hybrid Content-Boosted Collaborative approach.
机译:推荐系统试图根据用户的偏好自动提供个性化建议。这些系统使用信息过滤技术来推荐已根据以下三种方法之一分类的新项目:基于内容的过滤,协作过滤或混合过滤方法。本文提出了一种新的混合过滤方法,该方法在基于模态符号数据的内容过滤中获得了更好的kNN协同过滤方法的质量。主要思想是比较用户配置文件的模式符号描述,以便在“协同过滤”算法中计算某些用户的邻域。这种新方法的性能优于以半衰期效用度量标准衡量的“寻找好项目”任务,其他三个系统则是:基于模态符号数据的内容过滤,基于Pearson Correlation的kNN协同过滤以及混合式内容增强协作方法。

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