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ICAMF: Improved Context-Aware Matrix Factorization for Collaborative Filtering

机译:ICAMF:用于协作过滤的改进的上下文感知矩阵分解

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Context-aware recommender system (CARS) can provide more accurate rating predictions and more relevant recommendations by taking into account the contextual in-formation. Yet the state-of-the-art context-aware matrix factorization approaches only consider the influence of con-textual information on item bias. Tensor factorization based Multiverse Recommendation deals with the contextual in-formation by incorporating user-item-context interaction into recommendation model. However, all of these ap-proaches cannot fully capture the influence of contextual information on the rating. In this paper, we propose two improved context-aware matrix factorization approaches to fully capture the influence of contextual information on the rating. Both of the baseline predictors (user bias and item bias) and user-item-context interaction are fully concerned. Experimental results on three semi-synthetic datasets and one real world dataset show that the two proposed ap-proaches outperform Multiverse Recommendation and the state-of-the-art context-aware matrix factorization methods in prediction performance.
机译:通过考虑上下文信息,上下文感知推荐系统(CARS)可以提供更准确的评分预测和更相关的推荐。然而,最新的上下文感知矩阵分解方法仅考虑上下文信息对项目偏见的影响。基于Tensor分解的Multiverse推荐通过将用户-项目-上下文交互纳入推荐模型来处理上下文信息。但是,所有这些方法都无法完全捕捉上下文信息对评分的影响。在本文中,我们提出了两种改进的上下文感知矩阵分解方法,以完全捕获上下文信息对评分的影响。基线预测变量(用户偏见和项目偏见)和用户-项目-上下文交互都受到充分关注。在三个半合成数据集和一个现实世界数据集上的实验结果表明,两个拟议的方法在预测性能方面优于Multiverse Recommendation和最新的上下文感知矩阵分解方法。

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