Social network analysis emerged as an important research topic in sociology decades ago, and it has also attracted scientists from various fields of study like psychology, anthropology, geography and economics. In recent years, a significant number of researches has been conducted on using social network analysis to design e-commerce recommender systems. Most of the current recommender systems are designed for B2C e-commerce websites. This paper focuses on building a recommendation algorithm for C2C e-commerce business model by considering special features of C2C e-commerce websites. In this paper, we consider users and their transactions as a network; by this mapping, link prediction technique which is an important task in social network analysis could be used to build the recommender system. The proposed tow-level recommendation algorithm, rather than topology of the network, uses nodes features like: category of items, ratings of users, and reputation of sellers. The results show that the proposed model can be used to predict a portion of future trades between users in a C2C commercial network.
翻译:社会网络分析是社会学几十年前出现的一个重要研究课题,它也吸引了心理学、人类学、地理学、经济学等不同研究领域的科学家。近年来,对利用社会网络分析设计电子商务建议系统进行了大量研究。目前大多数推荐者系统是为B2C电子商务网站设计的。本文件侧重于通过考虑C2C电子商务网站的特征,为C2C电子商务模式建立建议算法。本文将用户及其交易视为一个网络;通过这一绘图,可以将社会网络分析中的一项重要任务即社会网络分析中的预测技术连接起来,用于建立推荐者系统。拟议的forw级建议算法,而不是网络的地形学,使用节点特征,如:项目类别、用户的评级和销售者的声誉。结果显示,拟议的模型可以用来预测C2C商业网络用户之间未来贸易的一部分。