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Preference-Like Score to Cope with Cold-Start User in Recommender Systems

机译:偏好评分,以应对推荐系统中的冷启动用户

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In recent years, there has been an explosion of social recommender systems (SRS) research. However, the dominant trend of these studies has been towards designing new prediction models. The typical approach is to use social information to build those models for each new user. Due to the inherent complexity of this prediction process, for full cold-start user in particular, the performance of most SRS fall a great deal. We, rather, propose that new users are best served by models already built in system. Selecting a prediction model from a set of strong linked users might offer better results than building a personalized model for full cold-start users. We contribute to this line of work comparing several matrix factorization based SRS under full cold-start user scenario, and proposing a general model selection approach, called ToSocialRec, that leverages existing recommendation models to offer items for new users. Our framework is not only able to handle several social network connection weight metrics, but any metric that can be correlated with preference similarity among users, named here as Preference-like score. We perform experiments on real life datasets that show this technique is as efficient or more than current state-of-the-art techniques for cold-start user. Our framework has also been designed to be easily deployed and leveraged by developers to help create a new wave of SRS.
机译:近年来,社会推荐系统(SRS)的研究激增。但是,这些研究的主要趋势一直是设计新的预测模型。典型的方法是使用社交信息为每个新用户建立那些模型。由于此预测过程的内在复杂性,特别是对于完全冷启动用户,大多数SRS的性能都会下降很多。相反,我们建议通过系统内置的模型为新用户提供最佳服务。与为完全冷启动用户构建个性化模型相比,从一组强大的链接用户中选择一种预测模型可能会提供更好的结果。我们为这项工作做出了贡献,比较了在完全冷启动用户情况下的几种基于矩阵分解的SRS,并提出了一种名为ToSocialRec的通用模型选择方法,该方法利用现有的推荐模型为新用户提供项目。我们的框架不仅能够处理多个社交网络连接权重度量标准,而且还能够处理与用户之间的偏好相似度相关的任何度量标准,在这里称为“类似偏好的得分”。我们在现实生活的数据集上进行了实验,结果表明该技术与冷启动用户的技术一样有效,甚至比目前的最新技术还高。我们的框架还设计为易于开发人员部署和利用,以帮助创建新的SRS浪潮。

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