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Social recommendation model combining trust propagation and sequential behaviors

机译:结合信任传播和顺序行为的社会推荐模型

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摘要

All types of recommender systems have been thoroughly explored and developed in industry and academia with the advent of online social networks. However, current studies ignore the trust relationships among users and the time sequence among items, which may affect the quality of recommendations. Three crucial challenges of recommender system are prediction quality, scalability, and data sparsity. In this paper, we explore a model-based approach for recommendation in social networks which employs matrix factorization techniques. Advancing previous work, we incorporate the mechanism of temporal information and trust relations into the model. Specifically, our method utilizes shared latent feature space to constrain the objective function, as well as considers the influence of time and user trust relations simultaneously. Experimental results on the public domain dataset show that our approach performs better than state-of-the-art methods, particularly for cold-start users. Moreover, the complexity analysis indicates that our approach can be easily extended to large datasets.
机译:随着在线社交网络的出现,在行业和学术界已经对各种类型的推荐系统进行了全面的探索和开发。但是,当前的研究忽略了用户之间的信任关系以及项目之间的时间顺序,这可能会影响建议的质量。推荐系统的三个关键挑战是预测质量,可伸缩性和数据稀疏性。在本文中,我们探索了一种基于模型的社交网络推荐方法,该方法采用矩阵分解技术。推进先前的工作,我们将时间信息和信任关系的机制纳入模型。具体来说,我们的方法利用共享的潜在特征空间来约束目标函数,并同时考虑时间和用户信任关系的影响。在公共领域数据集上的实验结果表明,我们的方法比最先进的方法性能更好,特别是对于冷启动用户而言。此外,复杂性分析表明我们的方法可以轻松扩展到大型数据集。

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