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基于智能多agent的推荐系统
引用本文:王卫平,赵明,刘迎意,王选.基于智能多agent的推荐系统[J].计算机系统应用,2010,19(2):1-5.
作者姓名:王卫平  赵明  刘迎意  王选
作者单位:中国科学技术大学,管理学院,安徽,合肥,230026
摘    要:针对传统推荐系统存在的用户评分稀疏性和系统扩展性问题,提出了一种基于智能多agent的推荐系统MASRS。首先采用余弦公式处理用户一项评分矩阵得到用户初始邻居集;然后将用户评分映射到相应项的属性值上,生成用户一属性值偏好矩阵UPm,并基于此矩阵进行用户相似性度量,得到用户产品推荐集,该方法有效缓解用户评分稀疏性问题;通过智能多agent架构推荐系统,使大量复杂计算在线下进行,从而改善系统存在的扩展性问题。同时实验表明新系统在推荐精度上收敛性更好。

关 键 词:推荐系统  稀疏性  用户一属性值偏好矩阵  智能多agent
收稿时间:2009/5/19 0:00:00

A Recommendation System Based on Intelligence Multi-Agent
WANG Wei-Ping,ZHAO Ming,LIU Ying-Yi and WANG Xuan.A Recommendation System Based on Intelligence Multi-Agent[J].Computer Systems& Applications,2010,19(2):1-5.
Authors:WANG Wei-Ping  ZHAO Ming  LIU Ying-Yi and WANG Xuan
Affiliation:WANG Wei-Ping,ZHAO Ming,LIU Ying-Yi,WANG Xuan(School of Management,University of Science , Technology of China,Hefei 230026,China)
Abstract:Traditional recommendation system has the problem of sparse user ratings and system scalability. This paper proposes a recommendation system based on intelligence multi-agent. At first, the cosine similarity measure has been used to handle user-item rating matrix, thus the initial neighbor set for target users can be gained. Then, user ratings have been mapped to relevant item attributes for generating user-attributes value preference matrix UPm of each user. Thus, user similarity can be computed based on UPm and rating sparsity has been alleviated simultaneously. The recommendation system of intelligence multi-agent makes calculating an online processing, and thus improves the system scalability. Experimental results show that the new system achieves a better accuracy in recommended convergence.
Keywords:recommendation system  sparsity  user-attributes value preference matrix  intelligence multi-agent
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