Social View Based User Modeling for Recommendation in Tagging Systems by Association Rules

Keqin He, Liang He, Xin Lin, Wei Lu
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引用次数: 4

Abstract

Social tagging systems such as Facebook, YouTube, del.icio.us, Flickr become popular recent years and have achieved widespread success. State-of-art user modeling approaches in tagging systems usually use a vector of weighted tags. Unfortunately, typical user modeling methods using a vector of weighted tags which are based on personal view only and ignore the social view, have some inherent drawbacks. As in a social network like collaborative tagging system, it is subjective and incomplete to profile using only personal view. In this paper, a novel approach applying association rules is proposed to extend user profiles from the social view. The enriched user profile is a harvest from both personal view and social view. Algorithms of personalized recommendations for tags and items are presented. Also experimental results of using the profile we proposed are discussed.
基于社会视图的关联规则标签系统推荐用户建模
社交标签系统,如Facebook, YouTube, del.icio。在美国,Flickr近年来开始流行,并取得了广泛的成功。标签系统中最先进的用户建模方法通常使用加权标签向量。遗憾的是,传统的基于加权标签向量的用户建模方法仅基于个人观点而忽略了社会观点,存在一些固有的缺陷。在像协作标签系统这样的社交网络中,仅仅用个人的观点来描述是主观的和不完整的。本文从社会视角出发,提出了一种应用关联规则扩展用户档案的新方法。丰富的用户资料是个人观点和社会观点的收获。提出了标签和项目的个性化推荐算法。文中还讨论了所提轮廓的实验结果。
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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