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Ontology-based library recommender system using MapReduce

机译:使用MapReduce的基于本体的图书馆推荐系统

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Recommender systems have been proven useful in numerous contemporary applications and helping users effectively identify items of interest within massive and potentially overwhelming collections. Among the recommender system techniques, the collaborative filtering mechanism is the most successful; it leverages the similar tastes of similar users, which can serve as references for recommendation. However, a major weakness for the collaborative filtering mechanism is its performance in computing the pairwise similarity of users. Thus, the MapReduce framework was examined as a potential means to address this performance problem. This paper details the development and employment of the MapReduce framework, examining whether it improves the performance of a personal ontology based recommender system in a digital library. The results of this extensive performance study show that the proposed algorithm can scale recommender systems for all-pairs similarity searching.
机译:事实证明,推荐系统在众多现代应用中很有用,可帮助用户有效地识别大量且可能不堪重负的收藏中的关注项。在推荐系统技术中,协同过滤机制是最成功的。它利用了相似用户的相似品味,可以作为推荐的参考。但是,协作过滤机制的主要缺点是其在计算用户的成对相似性方面的性能。因此,MapReduce框架被视为解决此性能问题的一种潜在手段。本文详细介绍了MapReduce框架的开发和使用,研究了它是否可以改善数字图书馆中基于个人本体的推荐系统的性能。这项广泛的性能研究结果表明,该算法可以扩展推荐系统用于全对相似性搜索。

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