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改进的FP-growth关联规则算法及其在图书推荐系统中的应用
引用本文:刘敏娜,吴建卫. 改进的FP-growth关联规则算法及其在图书推荐系统中的应用[J]. 微型电脑应用, 2014, 0(12): 45-47
作者姓名:刘敏娜  吴建卫
作者单位:咸阳师范学院 咸阳,712000
基金项目:自然科学基金(面上项目),陕西省科学技术研究发展计划项目
摘    要:在FP-growth关联规则算法的基础上提出了基于动态二维数组的算法,引入可变二维数组结构,动态的将事务数据库存入该数组中,可以大大提高数据挖掘的效率。并以图书馆管理系统中的图书借阅数据作为训练数据,使用改进的FP-growth算法实现了高校图书推荐系统,本系统能够从图书馆图书借阅记录中挖掘和发现读者借阅行为中隐含的规律,得到读者与图书的频繁项集,从而可以实现对不同身份的读者推荐不同类型的图书功能。

关 键 词:数据挖掘  关联规则算法  FP-growth算法  频繁项集  高校图书推荐系统

The Improve and Application of FP-Growth Algorithm of Association Rules
Liu Minna,Wu Jianwei. The Improve and Application of FP-Growth Algorithm of Association Rules[J]. Microcomputer Applications, 2014, 0(12): 45-47
Authors:Liu Minna  Wu Jianwei
Affiliation:(Institute of Graphics and Image Processing, Xianyang Normal University, Xianyang 712000, China)
Abstract:Based on the algorithm of FP-growth, the paper proposed a dynamic two-dimensional array. The algorithm leads in the variable two-dimensional array structure and stores the dramatic transaction database into the array. It significantly improves the efficiency of data mining, meanwhile, by using library’s managing systems’ book lending data as a training data. The paper uses the improved FP - growth algorithm and has accomplished to the book recommendation system in colleges and universities. From the lending record in the library, this system can explore and find the rules from readers’ behavior as well as frequent itemsets between readers and books, thus it manages to recommend different types of books to readers of different identity.
Keywords:Data Mining  Association Rules Algorithm  FP-Growth Algorithm  Frequent Item Sets  Book Recommendation Sys-tem
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