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Towards context-aware collaborative filtering by learning context-aware latent representations

机译:通过学习上下文感知的潜在表示来迈向环境感知的协作筛选

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摘要

Contexts have been proven to be an important source of information that can significantly improve the performance of collaborative filtering (CF), e.g., for recommendation. Most context-aware approaches that are basing on latent factor models assume that contexts share the same latent space with users and items. However such a strategy does not always make sense, e.g., the influence of contextual information may be overestimated. In this paper, we propose a generic framework to learn context-aware latent representations for context-aware collaborative filtering without imposing contexts into latent space of users and items. Contextual contents are combined via a function to produce the contextual influence factor, which is then combined with each latent factor to derive latent representations. We instantiate the generic framework using biased Matrix Factorization for rating prediction task and Bayesian Personalized Ranking (BPR) for item recommendation tasks. Stochastic Gradient Descent (SGD) based optimization procedures are developed to fit the two context-aware models by jointly learning the weight of each context and latent factors of users and items. Experiments conducted on three real-world datasets demonstrate that our context-aware CF model significantly outperforms not only the base models but also the representative context-aware models. (C) 2020 Elsevier B.V. All rights reserved.
机译:已被证明是能够显着提高协作过滤(CF),例如推荐的重要信息来源。基于潜在因子模型的大多数上下文感知方法假设上下文与用户和项目共享相同的潜在空间。然而,这种策略并不总是有意义的,例如,上下文信息的影响可能被过多。在本文中,我们提出了一种通用框架,用于学习上下文感知协同过滤的上下文达到的潜在表示,而不将上下文施加到用户和项目的潜在空间中。通过功能组合上下文内容以产生上下文影响因子,然后与每个潜在因子组合以导出潜在表示。我们使用偏置矩阵分解来实例化通用框架,用于评级预测任务和贝叶斯个性化排名(BPR)的项目推荐任务。基于随机梯度下降(SGD)的优化程序是通过共同学习用户和项目的每个上下文和潜在因子的权重拟合两个上下文感知模型。在三个现实世界数据集上进行的实验表明,我们的上下文感知CF模型不仅优于基础模型,还显着优于代表性的上下文感知模型。 (c)2020 Elsevier B.v.保留所有权利。

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