STAR: Semiring Trust Inference for Trust-Aware Social Recommenders

Peixin Gao, Hui Miao, J. Baras, J. Golbeck
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引用次数: 34

Abstract

Social recommendation takes advantage of the influence of social relationships in decision making and the ready availability of social data through social networking systems. Trust relationships in particular can be exploited in such systems for rating prediction and recommendation, which has been shown to have the potential for improving the quality of the recommender and alleviating the issue of data sparsity, cold start, and adversarial attacks. An appropriate trust inference mechanism is necessary in extending the knowledge base of trust opinions and tackling the issue of limited trust information due to connection sparsity of social networks. In this work, we offer a new solution to trust inference in social networks to provide a better knowledge base for trust-aware recommender systems. We propose using a semiring framework as a nonlinear way to combine trust evidences for inferring trust, where trust relationship is model as 2-D vector containing both trust and certainty information. The trust propagation and aggregation rules, as the building blocks of our trust inference scheme, are based upon the properties of trust relationships. In our approach, both trust and distrust (i.e., positive and negative trust) are considered, and opinion conflict resolution is supported. We evaluate the proposed approach on real-world datasets, and show that our trust inference framework has high accuracy, and is capable of handling trust relationship in large networks. The inferred trust relationships can enlarge the knowledge base for trust information and improve the quality of trust-aware recommendation.
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基于信任感知的社会推荐的半循环信任推理
社交推荐利用了社会关系对决策的影响以及社交网络系统中社交数据的可用性。信任关系尤其可以在这样的系统中用于评级预测和推荐,这已被证明具有提高推荐质量和缓解数据稀疏性、冷启动和对抗性攻击问题的潜力。一种合适的信任推理机制是扩展信任意见知识库、解决社会网络连接稀疏导致的信任信息有限问题的必要条件。在这项工作中,我们提出了一种新的社交网络信任推理解决方案,为信任感知推荐系统提供了更好的知识库。我们提出用半环框架作为非线性组合信任证据的方法来推断信任,将信任关系建模为包含信任信息和确定性信息的二维向量。信任传播和聚合规则是基于信任关系的属性,作为信任推理方案的构建块。在我们的方法中,信任和不信任(即积极和消极信任)都被考虑,并支持意见冲突解决。我们在真实数据集上对所提出的方法进行了评估,结果表明我们的信任推理框架具有较高的准确性,并且能够处理大型网络中的信任关系。通过对信任关系的推断,可以扩大信任信息知识库,提高信任感知推荐的质量。
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