Keita Tsuji, F. Yoshikane, Sho Sato, Hiroshi Itsumura
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引用次数: 18
摘要
我们提出了一种通过机器学习模块推荐图书的方法,该模块基于几个特征,包括图书馆借阅记录。我们在使用(a)支持向量机(SVM)、(b)随机森林(Random Forest)和(c) Adaboost的方法中评估了最有效的方法,以及(1)图书馆借阅记录、(2)图书名称、(3)日本十进分类法类别、(4)出版年份和(5)图书借阅频率等相关特征的最有效组合。我们对40名T大学的学生进行了实验。我们的方法推荐的书籍和我们使用的借阅记录都是从T大学图书馆获得的。结果表明,基于特征(1)、(2)、(3)、(5)的支持向量机推荐的图书被受试者评价为最优。我们的方法优于之前的方法,例如Tsuji et al.(2013)提出的方法,并且在性能上与网站Amazon.co.jp的推荐相当。
Book Recommendation Using Machine Learning Methods Based on Library Loan Records and Bibliographic Information
We propose a method to recommend books through machine learning modules based on several features, including library loan records. We evaluated the most effective method among ones using (a) a Support Vector Machine (SVM), (b) Random Forest and (c) Adaboost, as well as the most effective combination of relevant features among (1) library loan records, (2) book titles, (3) Nippon Decimal Classification categories, (4) publication year and (5) frequencies at which books were borrowed. We performed an experiment involving 40 subjects who are students at T University. The books that our methods recommended and the loan records that we used were obtained from the T University Library. The results show that books recommended by the SVM based on features (1), (2), (3) and (5) were rated most favorably by the subjects. Our method outperforms preceding ones, such as the method proposed by Tsuji et al. (2013), and is comparable in performance to the recommendation by the website Amazon.co.jp.