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Personalized service system based on hybrid filtering for digital library

机译:基于混合过滤的数字图书馆个性化服务系统

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摘要

Personalized service systems are an effective way to help users obtain recommendations for unseen items, within the enormous volume of information available based on their preferences. The most commonly used personalized service system methods are collaborative filtering, content-based filtering, and hybrid filtering. Unfortunately, each method has its drawbacks. This paper proposes a new method which unified partition-based collaborative filtering and meta-information filtering. In partition-based collaborative filtering the user-item rating matrix can be partitioned into low-dimensional dense matrices using a matrix clustering algorithm. Recommendations are generated based on these low-dimensional matrices. Additionally, the very low ratings problem can be solved using meta-information filtering. The unified method is applied to a digital resource management system. The experimental results show the high efficiency and good performance of the new approach.
机译:个性化服务系统是一种有效的方法,可以帮助用户在根据其偏好获得的大量可用信息中获得针对看不见物品的推荐。最常用的个性化服务系统方法是协作过滤,基于内容的过滤和混合过滤。不幸的是,每种方法都有其缺点。本文提出了一种基于分区的协同过滤和元信息过滤统一的新方法。在基于分区的协同过滤中,可以使用矩阵聚类算法将用户项目评分矩阵划分为低维密集矩阵。根据这些低维矩阵生成建议。此外,可以使用元信息过滤来解决极低评分的问题。该统一方法应用于数字资源管理系统。实验结果表明,该方法具有较高的效率和良好的性能。

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