Novel Personalized Multimedia Recommendation Systems Using Tensor Singular-Value-Decomposition

S. Chang, Hsiao-Chun Wu, Kun Yan, Xinjiao Chen, Yiyan Wu
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Abstract

Nowadays, multimedia data are often produced by various sources, e.g., Internet of Things (IoT), social media, customer databases, etc. As tremendous multimedia data are produced every day, users or E-commerce customers cannot infer information from such data by themselves and therefore recommender systems have been developed to help users to select the products or services which better fit users’ preferences or requirements. Nonetheless, there exists few works on the incorporation of side information or multiple attributes about items into the design of a more robust recommender system. In this work, we propose a novel approach based on the third-order tensor singular-value-decomposition (T3-SVD) to design new personalized multimedia recommender systems (PMRSs) for internet users. A PMRS can dynamically adjust its recommendation strategy subject to a particular user’s on-line transaction behavior. To evaluate the effectiveness of our proposed PMRS based on T3-SVD, we compare the performances of our proposed new PMRS and two other existing tensor-based recommendation systems over realworld data in terms of normalized root-mean-square error (NRMSE). As a result, our proposed new PMRS greatly outperforms the other two existing systems.
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基于张量奇异值分解的个性化多媒体推荐系统
如今,多媒体数据的来源往往是多种多样的,例如物联网(IoT)、社交媒体、客户数据库等。由于每天都会产生大量的多媒体数据,用户或电子商务客户无法自行从这些数据中推断出信息,因此开发了推荐系统来帮助用户选择更符合用户偏好或需求的产品或服务。然而,很少有关于将附加信息或关于项目的多个属性整合到更健壮的推荐系统设计中的工作。在这项工作中,我们提出了一种基于三阶张量奇异值分解(T3-SVD)的新方法来为互联网用户设计新的个性化多媒体推荐系统(PMRSs)。pmr可以根据特定用户的在线交易行为动态调整其推荐策略。为了评估我们提出的基于T3-SVD的pmr的有效性,我们比较了我们提出的新pmr和其他两个现有的基于张量的推荐系统在现实世界数据上的标准化均方根误差(NRMSE)的性能。因此,我们提出的新pmr大大优于其他两个现有系统。
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