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A FOAF-based Framework for E- Commerce Recommender Service System

机译:基于FOAF的电子商务推荐服务系统框架

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摘要

Recommender service systems have been widely and successfully applied in e-commerce to provide personalized recommendations to customers nowadays. The tremendous growth in the amount of available information and the number of visitors to websites poses some challenges for recommender service systems such as poor prediction accuracy, scalability, and dynamic changes of users. To address these issues and increase the performance of the systems, an e-commerce recommender service system framework based on FOAF (Friend of A Friend) is proposed in this paper. FOAF provides a RDF/XML vocabulary to describe individual users and their relationships with other users. A FOAF profile could allow a system to better understand users' personalized needs. Once the system extracts each user's preferences that are represented by FOAF document format, it can classify users with respect to their own preferences on real time, and also, it can recommend items in which some users are interested to a target user who has the highest similarity with them in the same group. Experimental results show that the proposed framework helps to reduce the recommendation time, while improving accuracy.
机译:推荐服务系统已广泛且成功地应用于电子商务中,以为当今的客户提供个性化的推荐。可用信息量和网站访问者数量的巨大增长给推荐服务系统带来了一些挑战,例如较差的预测准确性,可伸缩性和用户的动态变化。为了解决这些问题并提高系统的性能,本文提出了一个基于FOAF(朋友之友)的电子商务推荐服务系统框架。 FOAF提供了一个RDF / XML词汇表来描述单个用户及其与其他用户的关系。 FOAF配置文件可以使系统更好地了解用户的个性化需求。一旦系统提取了由FOAF文档格式表示的每个用户的首选项,它就可以根据他们自己的首选项对用户进行实时分类,并且还可以向那些具有最高兴趣的目标用户推荐一些用户感兴趣的项目与他们在同一组中的相似性。实验结果表明,该框架有助于减少推荐时间,同时提高准确性。

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