A variety of rating-based recommendation methods have been extensively studied including the well-known collaborative filtering approaches and some network diffusion-based methods, however, social trust relations are not sufficiently considered when making recommendations. In this paper, we contribute to the literature by proposing a trust-based recommendation method, named CosRA+T, after integrating the information of trust relations into the resource-redistribution process. Specifically, a tunable parameter is used to scale the resources received by trusted users before the redistribution back to the objects. Interestingly, we find an optimal scaling parameter for the proposed CosRA+T method to achieve its best recommendation accuracy, and the optimal value seems to be universal under several evaluation metrics across different datasets. Moreover, results of extensive experiments on the two real-world rating datasets with trust relations, Epinions and FriendFeed, suggest that CosRA+T has a remarkable improvement in overall accuracy, diversity, and novelty. Our work takes a step towards designing better recommendation algorithms by employing multiple resources of social network information.
翻译:广泛研究了各种基于评级的建议方法,包括众所周知的合作过滤方法和一些基于网络的传播方法,然而,在提出建议时,社会信任关系没有得到充分的考虑。在本文件中,我们在将信任关系的信息纳入资源再分配进程之后,提出了一个称为COSRA+T的基于信任的建议方法,从而为文献作出贡献。具体地说,使用一个金枪鱼参数,在将受信任的用户收到的资源重新重新分配到目标之前,可以衡量这些资源的规模。有趣的是,我们找到了拟议的COSRA+T方法实现最佳建议准确性的最佳缩放参数,在不同数据集的若干评价指标下,最佳价值似乎具有普遍性。此外,对两个真实世界评级数据集进行的广泛实验的结果,与信任关系、Epinion和FriendFeed,表明COSRA+T在总体准确性、多样性和新颖性方面有了显著的改进。我们的工作在利用多种社会网络信息资源设计更好的建议算法方面迈出了一步。