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TrustRank: a Cold-Start tolerant recommender system

机译:TrustRank:耐冷启动推荐系统

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摘要

The explosive growth of the World Wide Web leads to the fast advancing development of e-commerce techniques. Recommender systems, which use personalised information filtering techniques to generate a set of items suitable to a given user, have received considerable attention. User- and item-based algorithms are two popular techniques for the design of recommender systems. These two algorithms are known to have Cold-Start problems, i.e., they are unable to effectively handle Cold-Start users who have an extremely limited number of purchase records. In this paper, we develop TrustRank, a novel recommender system which handles the Cold-Start problem by leveraging the user-trust networks which are commonly available for e-commerce applications. A user-trust network is formed by friendships or trust relationships that users specify among them. While it is straightforward to conjecture that a user-trust network is helpful for improving the accuracy of recommendations, a key challenge for using user-trust network to facilitate Cold-Start users is that these users also tend to have a very limited number of trust relationships. To address this challenge, we propose a pre-processing propagation of the Cold-Start users' trust network. In particular, by applying the personalised PageRank algorithm, we expand the friends of a given user to include others with similar purchase records to his/her original friends. To make this propagation algorithm scalable to a large amount of users, as required by real-world recommender systems, we devise an iterative computation algorithm of the original personalised TrustRank which can incrementally compute trust vectors for Cold-Start users. We conduct extensive experiments to demonstrate the consistently improvement provided by our proposed algorithm over the existing recommender algorithms on the accuracy of recommendations for Cold-Start users.
机译:互联网的爆炸性增长导致电子商务技术的快速发展。使用个性化信息过滤技术来生成适合给定用户的一组项目的推荐系统已经受到相当大的关注。基于用户和项的算法是推荐系统设计的两种流行技术。已知这两种算法都存在冷启动问题,即,它们无法有效处理购买记录数量极其有限的冷启动用户。在本文中,我们开发了TrustRank,这是一种新颖的推荐系统,可通过利用电子商务应用程序中常用的用户信任网络来处理冷启动问题。用户信任网络由用户在其中指定的友谊或信任关系组成。虽然可以直接推测出用户信任网络有助于提高建议的准确性,但是使用用户信任网络来促进冷启动用户的关键挑战在于这些用户也往往拥有非常有限的信任关系。为了应对这一挑战,我们建议对冷启动用户的信任网络进行预处理传播。特别是,通过应用个性化PageRank算法,我们扩展了给定用户的朋友,以将具有类似购买记录的其他用户包括到他/她的原始朋友中。为了使此传播算法能够按实际推荐系统的需要扩展到大量用户,我们设计了一种原始个性化TrustRank的迭代计算算法,该算法可以为冷启动用户增量计算信任向量。我们进行了广泛的实验,以证明我们提出的算法相对于现有推荐算法在针对冷启动用户的推荐准确性方面提供了持续改进。

著录项

  • 来源
    《Enterprise information systems》 |2015年第2期|117-138|共22页
  • 作者单位

    Department of Computer and Information Science, Faculty of Science and Technology, University of Macau, Macau;

    Department of Computer and Information Science, Faculty of Science and Technology, University of Macau, Macau;

    Department of Computer Science, The George Washington University, Washington, USA;

    Department of Computer and Information Science, Faculty of Science and Technology, University of Macau, Macau;

    Department of Computer and Information Science, Faculty of Science and Technology, University of Macau, Macau;

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

    trust; TrustRank; recommender system; Cold-Start;

    机译:信任;TrustRank;推荐系统;冷启动;
  • 入库时间 2022-08-17 13:46:37

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