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一种基于上下文信息的个性化推荐模型
引用本文:王树锋,;王文,;费贤举.一种基于上下文信息的个性化推荐模型[J].常州工学院学报,2014(2):27-31.
作者姓名:王树锋  ;王文  ;费贤举
作者单位:[1]常州工学院计算机信息工程学院,江苏常州213002; [2]常州工学院,江苏常州213002; [3]常州市软件技术与应用重点实验室(常州工学院),江苏常州213002
基金项目:2012年常州市科技项目(CJ20120009);常州工学院2012年度校级科研基金项目(YN1203);常州工学院2013年度校级科研基金项目(YN1316)
摘    要:个性化推荐为解决互联网信息过载问题提供了新的思路。为有效地构建用户模型和改进个性化推荐的效果,提出了一种挖掘非结构化文本中上下文信息的新模型,将得到的上下文信息嵌入用户模型信息中,丰富了用户模型。实验结果表明,该模型应用于客户对旅馆评论的上下文数据中,能够大大改善推荐的性能。

关 键 词:推荐模型  上下文信息  Labeled-LDA算法  kNN算法

An Personalized Recommendation Model Based on Context Information
Affiliation:WANG Shufeng, WANG Wen, FEI Xianju ( ( School of Computer Information Engineering, Changzhou Institute of Technology, Changzhou 213002 ; 2. Changzhou Institute of Technology,Changzhou 213002; 3. Changzhou Key Laboratory of Software Technology and Application, Changzhou Institute of Technology Changzhou 213002 )
Abstract:The incredible growth of information on the Internet is giving more choices but at the same time creating one of the biggest challenges of the Internet,that is,the efficient processing of this growing volume of in-formation.Recently recommender systems have emerged to help users overcome the exponentially growing infor-mation overload problem.In order to form user profiles and improve efficiency of personalized recommendation, an new idea is exploring new data sources such as context information which is one useful data source.This paper has presented a novel approach for mining the contextual information from unstructured text and uses it to produce context-aware recommendations.This method is used to mine hidden contextual information from customers′re-views of hotels dataset and the results indicate that using the contextual information can improve the performance of the recommender system in term of hit ratio.
Keywords:recommend model  contextual information  Labeled-LDA  kNN
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