基于中图分类法的个性化图书推荐系统

H. Zhang, Yingyuan Xiao, Zhongjing Bu
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引用次数: 4

摘要

随着高校图书馆的不断建设和发展,如何从海量的图书中发掘出有趣的图书已成为人们关注的问题。本文开发了一个基于中图分类法的个性化图书推荐系统CLCM。CLCM使用上下关系模型(ULLRM)来描述特色词,并融合显性和隐性反馈模型(DRFM)来更新用户的偏好。图书查询的可视化提高了查询的效率。实验结果表明,在高校图书馆中,CLCM的性能明显优于目前最先进的方法。
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Personalized Book Recommender System Based on Chinese Library Classification
with the continuous construction and development of university library, how to find interesting books from the massive books is becoming a concerned problem. In this paper, we develop a personalized book recommender system based on Chinese Library Classification Method named CLCM. CLCM uses Upper and Lower Level Relations Model (ULLRM) to describe the characteristic words and fuses the Dominant and Recessive Feedback Model (DRFM) to update the users' preferences. And visualization of book inquiry improves the efficiency of inquiring. The experimental results show that CLCM performs much better than the state-of-the art approaches in the university library.
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