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Recommendation with Differential Context Weighting

机译:具有差异上下文加权的建议

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摘要

Context-aware recommender systems (CARS) adapt their recommendations to users' specific situations. In many recommender systems, particularly those based on collaborative filtering, the contextual constraints may lead to sparsity: fewer matches between the current user context and previous situations. Our earlier work proposed an approach called differential context relaxation (DCR), in which different subsets of contextual features were applied in different components of a recommendation algorithm. In this paper, we expand on our previous work on DCR, proposing a more general approach - differential context weighting (DCW), in which contextual features are weighted. We compare DCR and DCW on two real-world datasets, and DCW demonstrates improved accuracy over DCR with comparable coverage. We also show that particle swarm optimization (PSO) can be used to efficiently determine the weights for DCW.
机译:上下文知识推荐系统(CARS)将其建议适应用户的特定情况。在许多推荐系统中,特别是基于协作滤波的系统中,上下文限制可能导致稀疏性:当前用户上下文和先前情况之间的匹配较少。我们之前的工作提出了一种称为差异上下文放松(DCR)的方法,其中在推荐算法的不同组件中应用了不同的上下文特征的不同子集。在本文中,我们扩展了我们对DCR的先前工作,提出了更通用的方法 - 差分上下文加权(DCW),其中加权上下文特征。我们将DCR和DCW与两个真实的数据集进行比较,DCW通过可比覆盖率显示出对DCR的精度提高。我们还表明,粒子群优化(PSO)可用于有效地确定DCW的权重。

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