首页> 外文会议>9th ACM/IEEE joint conference on digital libraries 2009 >CARES: A Ranking-Oriented CADAL Recommender System
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CARES: A Ranking-Oriented CADAL Recommender System

机译:CARES:面向排名的CADAL推荐系统

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摘要

A recommender system is useful for a digital library to suggest the books that are likely preferred by a user. Most recommender systems using collaborative filtering approaches leverage the explicit user ratings to make personalized recommendations. However, many users are reluctant to provide explicit ratings, so ratings-oriented recommender systems do not work well. In this paper, we present a recommender system for CADAL digital library, namely CARES, which makes recommendations using a ranking-oriented collaborative filtering approach based on users' access logs, avoiding the problem of the lack of user ratings. Our approach employs mean AP correlation coefficients for computing similarities among users' implicit preference models and a random walk based algorithm for generating a book ranking personalized for the individual. Experimental results on real access logs from the CADAL web site show the effectiveness of our system and the impact of different values of parameters on the recommendation performance.
机译:推荐器系统对于数字图书馆建议用户可能喜欢的书籍很有用。使用协作过滤方法的大多数推荐器系统会利用明确的用户评分来进行个性化推荐。但是,许多用户不愿意提供明确的评分,因此面向评分的推荐系统效果不佳。在本文中,我们提出了一种用于CADAL数字图书馆的推荐系统CARES,该系统基于用户访问日志使用面向排名的协同过滤方法进行推荐,从而避免了用户评分不足的问题。我们的方法采用平均AP相关系数来计算用户的隐式偏好模型之间的相似性,并采用基于随机游走的算法来生成针对个人的个性化图书排名。来自CADAL网站的真实访问日志的实验结果显示了我们系统的有效性以及不同参数值对推荐性能的影响。

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