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BDMF: A Biased Deep Matrix Factorization Model for Recommendation

机译:BDMF:建议的偏置深矩阵分解模型

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As a representative collaborative filtering method, matrix factorization has been widely used in personalized recommendation. Recently, deep matrix factorization model, which utilizes deep neural networks to project users and items into a latent structured space, has received increased attention. In this paper, inspired by the idea of BiasedSVD that introduces bias to both users and items, we propose a novel matrix factorization model with neural network architecture, named BDMF, short for Biased Deep Matrix Factorization. Specifically, we first construct a user-item interaction matrix with explicit ratings and implicit feedback, and randomly sample users and items as the input. Next, we feed this input to the proposed BDMF model to learn latent factors of both users and items, and then use them to predict the ratings for personalized ranking. We also formally show that BDMF works on the same principle as BiasedSVD, which means that BDMF can be viewed as a deep neural network implementation of BiasedSVD. Finally, extensive experiments on real-world datasets are conducted and the results verify the superiority of our model over other state-of-the-art.
机译:作为代表性的协作滤波方法,矩阵分解已广泛用于个性化推荐。最近,深矩阵分解模型,利用深度神经网络将用户和物品的项目和物品进入潜在结构化空间,得到了增加的关注。在本文中,灵感来自偏见对用户和项目的偏差的偏见的想法,我们提出了一种具有神经网络架构的新型矩阵分解模型,名为BDMF,偏置的深矩阵分解短。具体地,我们首先使用明确的额定值和隐式反馈构建用户项目交互矩阵,以及随机示例用户和项目作为输入。接下来,我们将此输入提供给所提出的BDMF模型,以学习用户和项目的潜在因素,然后使用它们来预测个性化排名的评级。我们还正式表明BDMF在与偏见的原则相同的原则上工作,这意味着BDMF可以被视为BiasedSvd的深度神经网络实现。最后,对现实世界数据集进行了广泛的实验,结果验证了我们模型的优势在其他最先进的状态。

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