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Do your friends make you buy this brand? Modeling social recommendation with topics and brands

机译:你的朋友让你买这个品牌吗? 使用主题和品牌建模社会推荐

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摘要

Consumer behavior and marketing research have shown that brand has significant influence on product reviews and product purchase decisions. However, there is very little work on incorporating brand related factors into product recommender systems. Meanwhile, the similarity in brand preference between a user and other socially connected users also affects her adoption decisions. To integrate seamlessly the individual and social brand related factors into the recommendation process, we propose a novel model called Social Brand-Item-Topic (SocBIT). As the original SocBIT model does not enforce non-negativity, which poses some difficulty in result interpretation, we also propose a non-negative version, called SocBIT . Both SocBIT and return not only user topic interest, but also brand-related user factors, namely user brand preference and user brand-consciousness. The former refers to user preference for each brand, the latter refers to the extent to which a user relies on brand to make her adoption decisions. Our experiments on real-world datasets demonstrate that SocBIT and significantly improve rating prediction accuracy over state-of-the-art models such as Social Regularization Ma et al. (in: ACM conference on web search and data mining (WSDM), 2011), Recommendation by Social Trust Ensemble Ma et al. (in: ACM conference on research and development in information retrieval (SIGIR), 2009a) and Social Recommendation Ma et al. (in: ACM conference on information and knowledge management (CIKM), 2008), which incorporate only the social factors. Specifically, both SocBIT and offer an improvement of at least 22% over these state-of-the-art models in rating prediction for various real-world datasets. Last but not least, our models also outperform the mentioned models in adoption prediction, e.g., they provide higher precision-at-N and recall-at-N.
机译:消费者行为和营销研究表明,品牌对产品审查和产品购买决策产生了重大影响。但是,在产品推荐系统中将品牌相关因素纳入了很少的工作。同时,用户和其他社会连接的用户之间的品牌偏好的相似性也会影响她的采用决策。要将个人和社会品牌相关因素无缝地整合到建议过程中,我们提出了一种称为社会品牌 - 项目主题(SOCBIT)的小说模型。由于原始SoCBIT模型不强制执行非消极性,这造成了一些难度的结果解释,我们还提出了一个名为SoCBIT的非负版本。 SoCBIT都不只有用户主题兴趣,也是品牌相关的用户因素,即用户品牌偏好和用户品牌意识。前者是指对每个品牌的用户偏好,后者是指用户依赖品牌的程度,以使她采用的决定。我们对现实世界数据集的实验表明,SoCBIT和显着提高了最先进的模型,例如社会正规化MA等人的额定模型。 (in:acm网站搜索和数据挖掘会议(WSDM),2011),社会信任集团的推荐Ma等人。 (如:信息检索(SIGIR),2009A的研究和发展会议,2009A)和社会推荐MA等人。 (如:ACM信息和知识管理会议(CIKM),2008),仅限于社会因素。具体而言,SOCBIT和在各种真实数据集的评级预测中提供至少22%的提高至少22%。最后但并非最不重要的是,我们的模型也优于采用预测中提到的模型,例如,它们提供更高的精度 - at-n并召回-T-n。

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