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A Novel FAHP Based Book Recommendation Method by Fusing Apriori Rule Mining

机译:基于FAHP基于FAHP的书籍推荐方法,融合了APRIORI规则挖掘

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摘要

Book recommendation is becoming increasingly significant library service, considering it improve access to relevant books by making personal suggestions based on previous examples of user's preference. Most existing approaches are either collaborative-filtering based, considering the data sparsity and cold-start problems, collaborative-filtering approaches suffer from many challenges. In this paper, we present a Fuzzy Analytical Hierarchy Process (FAHP) based method by fusing Apriori rule mining. Apparently, multiple factors (e.g., similar preference, professional background, education degree and book's publishing house etc.) may influence reader's borrowing decision. Therefore, we first adopt Apriori algorithm to develop association analysis for evaluating the relevance of books in terms of book-loan history. Second, FAHP takes the result of association between books and other subjective/objective factors into account and makes final recommendation according to an overall ranking result. A thorough experimental comparison, based on real-world data, illustrates advantage of our scheme over collaborative filtering approaches.
机译:本书推荐正在成为越来越重要的图书馆服务,考虑到通过基于前面的用户偏好的示例,通过提出个人建议来改善对相关书籍的访问。大多数现有方法是基于协作过滤的,考虑到数据稀疏和冷启动问题,协同过滤方法遭受许多挑战。在本文中,我们通过融合APRIORI规则挖掘来提出基于模糊的分析层次方法(FAHP)方法。显然,多个因素(例如,类似的偏好,专业背景,教育学位和书籍出版社等)可能影响读者的借贷决策。因此,我们首先采用APRiori算法来开发协会分析,以评估书籍与书籍贷款历史方面的相关性。其次,FAHP考虑了书籍与其他主观/客观因素之间的关联,并根据整体排名结果进行最终建议。基于真实数据的彻底实验比较说明了我们通过协同过滤方法的方案的优势。

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