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Feature-Aware Factorised Collaborative Filtering

机译:功能感知因子分解协同过滤

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In the area of electronic commerce, recommender systems have become more and more popular. The quality of recommendations depends on the quality of the preference model extracted by the recommender system. Recently, latent factor models based on probabilistic matrix factorisation have gained great attention in both industry and academia, owing to their superior accuracy over traditional recommender systems. Although latent factor models are very efficient, the latency of the features captured in these models impedes explaining the learnt model to the users. A lack of understanding of the latent features makes it difficult to decide on the optimal number of features to give as input to these models. Therefore, the model accuracy degrades when less relevant features are introduced into the model. To tackle this problem, in this paper we propose an extension to the basic matrix factorisation, so that the model takes into account the relevancy of the features beside their values. We test the accuracy of the proposed method on two benchmark datasets. The experiments show that the proposed method makes remarkable improvements over the basic method and some of the state of the art latent factor models.
机译:在电子商务领域,推荐器系统变得越来越流行。推荐的质量取决于推荐系统提取的偏好模型的质量。最近,由于基于概率矩阵分解的潜在因子模型比传统的推荐系统具有更高的准确性,因此在业界和学术界都引起了极大的关注。尽管潜在因素模型非常有效,但是在这些模型中捕获的功能的等待时间阻碍了向用户解释学习到的模型。对潜在特征的缺乏了解使得难以确定要提供给这些模型的输入的最佳特征数。因此,当将较少相关的特征引入模型时,模型精度会降低。为了解决这个问题,在本文中,我们提出了对基本矩阵分解的扩展,因此该模型考虑了特征值之间的相关性。我们在两个基准数据集上测试了该方法的准确性。实验表明,所提出的方法对基本方法和一些现有的潜在因子模型进行了显着改进。

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