A collaborative filtering recommendation algorithm using user implicit demographic information

Xiaoyun Wang, Chaofei Zhou
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引用次数: 3

Abstract

With development of network technology and society, people enjoy the e-commerce shopping convenience while also deeply troubled by the "information overload" problem. Recommendation systems help the customers find suitable products they need from a large number of commodities. Among the recommendation systems, the most widely used algorithm is collaborative filtering (CF) recommendation algorithm. In order to improve the recommendation quality, many scholars combined demographic information with CF algorithm, but they did not take into account the user implicit demographic information. However, there is a gap between explicit demographic information and implicit demographic information. To solve this problem, we propose a way to mine the user implicit demographic information. Then we introduce uncertain multiple attribute decision making method into our algorithm to find out a set of initial items. Finally, we recommend items users might like in the set of initial items according to the similarity. Experiments show that this method is more reasonable and more accurate to make recommendations for the target users.
一种基于用户隐式人口统计信息的协同过滤推荐算法
随着网络技术和社会的发展,人们在享受电子商务购物便利的同时,也深受“信息超载”问题的困扰。推荐系统帮助客户从大量的商品中找到适合自己需要的产品。在推荐系统中,应用最广泛的算法是协同过滤(CF)推荐算法。为了提高推荐质量,许多学者将人口统计信息与CF算法相结合,但没有考虑到用户隐含的人口统计信息。然而,显性人口信息和隐性人口信息之间存在着差距。为了解决这个问题,我们提出了一种挖掘用户隐式人口统计信息的方法。然后在算法中引入不确定多属性决策方法,求出一组初始项。最后,我们根据相似度在初始项目集中推荐用户可能喜欢的项目。实验表明,该方法对目标用户的推荐更合理、更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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