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Multi-modal Behavioral Information-Aware Recommendation with Recurrent Neural Networks

机译:具有经常性神经网络的多模态行为信息感知建议

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Data sparsity is one of the most challenging problems in recommendation systems. In this paper, we tackle this problem by proposing a novel multi-modal behavioral information-aware recommendation method named MIAR which is based on recurrent neural networks and matrix factorization. First, an interaction context-aware sequential prediction model is designed to capture user-item interaction contextual information and behavioral sequence information. Second, an attributed context-aware rating prediction model is proposed to capture attribution contextual information and rating information. Finally, three fusion methods are developed to combine two sub-models. As a result, the MIAR method has several distinguished advantages in terms of mitigating the data sparsity problem. The method can well perceive diverse influences of interaction and attribution contextual information. Meanwhile, a large number of behavioral sequence and rating information can be utilized by the MIAR approach. The proposed algorithm is evaluated on real-world datasets and the experimental results show that MIAR can significantly improve recommendation performance compared to the existing state-of-art recommendation algorithms.
机译:数据稀疏是推荐系统中最具挑战性问题之一。在本文中,我们通过提出名为MIAR的新型多模态行为信息感知推荐方法来解决这个问题,该方法基于经常性神经网络和矩阵分解。首先,旨在捕获用户项交互上下文信息和行为序列信息的交互情节感知顺序预测模型。其次,提出了一种归属的上下文感知评分预测模型来捕获归因上下文信息和评级信息。最后,开发了三种融合方法来组合两个子模型。结果,在减轻数据稀疏问题方面,MIAR方法具有几个具有杰出优势。该方法可以很好地察觉不同的互动和归因语境信息影响。同时,MIAR方法可以利用大量的行为序列和评级信息。该算法在实际数据集中评估,实验结果表明,与现有的最先进推荐算法相比,MIAR可以显着提高推荐性能。

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