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User profile as a bridge in cross-domain recommender systems for sparsity reduction

机译:用户配置文件作为跨域推荐系统的桥梁,用于减少稀疏性

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摘要

In the past two decades, recommender systems have been successfully applied in many e-commerce companies. One of the promising techniques to generate personalized recommendations is collaborative filtering. However, it suffers from sparsity problem. Alleviating this problem, cross-domain recommender systems came into existence in which transfer learning mechanism is applied to exploit the knowledge from other related domains. While applying transfer learning, some information should overlap between source and target domains. Several attempts have been made to enhance the performance of collaborative filtering with the help of other related domains in cross-domain recommender systems framework. Although exploiting the knowledge from other domains is still challenging and open problem in recommender systems. In this paper, we propose a method namely User Profile as a Bridge in Cross-domain Recommender Systems (UP-CDRSs) for transferring knowledge between domains through user profile. Firstly, we build a user profile using demographical information of a user, explicit ratings and content information of user-rated items. Thereafter, the probabilistic graphical model is employed to learn latent factors of users and items in both domains by maximizing posterior probability. At last prediction on unrated item is estimated by an inner product of corresponding latent factors of users and items. Validating of our proposed UP-CDRSs method, we conduct series of experiments on various sparsity levels using cross-domain dataset. The results demonstrate that our proposed method substantially outperforms other without and with transfer learning methods in terms of accuracy.
机译:在过去的二十年中,推荐系统已成功应用于许多电子商务公司。生成个性化建议的有希望的技术之一是协作滤波。然而,它遭受了稀疏问题。缓解这个问题,跨域推荐系统进入存在,其中应用转移学习机制来利用其他相关领域的知识。在应用转移学习时,某些信息应在源域和目标域之间重叠。已经进行了多次尝试,以提高协作滤波的性能在跨域推荐系统框架中的其他相关域的帮助下。虽然利用其他域的知识仍处于建议系统中仍处于挑战性和打开问题。在本文中,我们提出了一种方法即将用户简档作为跨域推荐系统(UP-CDRS)中的桥梁,用于通过用户配置文件传输域之间的知识。首先,我们使用用户评级项目的人口统计信息来构建用户简档,具有用户额定项目的内容信息。此后,采用概率图形模型来通过最大化后验概率来学习两个域中的用户和项目的潜在因子。在未分发的项目上的最后预测由用户和项目的相应潜在因子的内在产品估算。验证我们提出的UP-CDRSS方法,我们使用跨域数据集对各种稀疏水平进行一系列实验。结果表明,我们所提出的方法在准确性方面没有和转移学习方法的情况大大差异。

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