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An enhanced social matrix factorization model for recommendation based on social networks using social interaction factors

机译:基于社交互动因子的社交网络推荐的增强社会矩阵分解模型

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摘要

Recommender systems are recently becoming more significant in the age of rapid development of Internet technology and pervasive computing due to their ability in making appropriate choices to users. Collaborative filtering is one of the most successful recommendation techniques, which recommends items to an active user based on past ratings from like-minded users. However, the user-item rating matrix, namely one of the inputs to the recommendation algorithm, is often highly sparse, thus collaborative filtering may lead to the poor recommendation. To solve this problem, social networks can be employed to improve the accuracy of recommendations. Some of the social factors have been used in recommender system, but have not been fully considered. In this paper, we fuse personal cognition behavior, cognition relationships between users, and time decay factor for rated items into a unified probabilistic matrix factorization model and propose an enhanced social matrix factorization approach for personalized recommendation using social interaction factors. In this study, we integrate propagation enhancement, common user relationship enhancement, and common interest enhancement into social relationship between users, and propose a novel trust relationship calculation to alleviate the negative impact of sparsity of data rating. The proposed model is compared with the existing social recommendation algorithms on real world datasets including the Epinions and Movielens datasets. Experimental results demonstrate that our proposed approach achieves superior performance to the other recommendation algorithms.
机译:Recommender systems are recently becoming more significant in the age of rapid development of Internet technology and pervasive computing due to their ability in making appropriate choices to users.协作过滤是最成功的推荐技术之一,它将基于来自志同道合的用户的过去的额定值推荐给活动用户的项目。然而,用户项评级矩阵,即推荐算法的输入之一通常是高度稀疏的,因此协作滤波可能导致差的推荐。为了解决这个问题,可以采用社交网络来提高建议的准确性。一些社会因素已被用于推荐系统,但尚未完全考虑。在本文中,我们融合了个人认知行为,用户之间的认知关系以及额定物品的时间衰减因子,进入统一的概率矩阵分解模型,并提出了使用社交交互因素的个性化推荐的增强的社会矩阵分解方法。在这项研究中,我们将传播增强,常见的用户关系增强和共同利益提升到用户之间的社会关系,并提出了一种新的信任关系计算,以减轻数据评级稀疏性的负面影响。该建议的模型与现有的世界数据推荐算法进行比较,包括渗透和Movielens数据集。实验结果表明,我们的拟议方法能够对其他推荐算法进行卓越的性能。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2020年第20期|14147-14177|共31页
  • 作者单位

    Software Engineering College Zhengzhou University of Light Industry Zhcngzhou 450002 China;

    Insititute for Silk Road Research Xi'an University of Finance and Economics Xi'an 710100 China;

    School of Information Science and Technology Northwest University Xi'an 710127 China;

    College of Computer Science Xi'an Polytechnic University Xi'an 710048 China;

    School of Information Science and Technology Northwest University Xi'an 710127 China;

    School of Information Science and Technology Northwest University Xi'an 710127 China School of Computer Xi'an University of Posts & Telecommunications Xi'an 710121 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Recommender systems; Collaborative filtering; Matrix factorization; Social interaction; Trust networks;

    机译:推荐系统;协同过滤;矩阵分解;社交联系;信任网络;

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