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Multi‐model deep learning approach for collaborative filtering recommendation system

机译:协同过滤推荐系统多模型深度学习方法

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摘要

As a result of a huge volume of implicit feedback such as browsing and clicks, many researchers are involving in designing recommender systems (RSs) based on implicit feedback. Though implicit feedback is too challenging, it is highly applicable to use in building recommendation systems. Conventional collaborative filtering techniques such as matrix decomposition, which consider user preferences as a linear combination of user and item latent features, have limited learning capacities, hence suffer from a cold start and data sparsity problems. To tackle these problems, the research direction towards considering the integration of conventional collaborative filtering with deep neural networks to maps user and item features. Conversely, the scalability and the sparsity of the data affect the performance of the methods and limit the worthiness of the results of the recommendations. Therefore, the authors proposed a multi-model deep learning (MMDL) approach by integrating user and item functions to construct a hybrid RS and significant improvement. The MMDL approach combines deep autoencoder with a one-dimensional convolution neural network model that learns user and item features to predict user preferences. From detail experimentation on two real-world datasets, the proposed work exhibits substantial performance when compared to the existing methods.
机译:由于诸如浏览和点击等大量隐含反馈,许多研究人员涉及基于隐式反馈设计推荐系统(RSS)。虽然隐式反馈太具挑战,但它非常适用于在建议推荐系统中使用。诸如矩阵分解的传统协作滤波技术,其考虑用户偏好作为用户和项目潜在特征的线性组合,具有有限的学习能力,因此遭受冷启动和数据稀疏问题。为了解决这些问题,考虑与深神经网络的传统协同滤波集成来映射用户和项目特征的研究方向。相反,数据的可扩展性和稀疏性会影响方法的性能,并限制建议结果的价值。因此,作者提出了一种多模型深度学习(MMDL)方法,通过集成用户和项目函数来构建混合动力RS和显着改进。 MMDL方法将Deep AutoEncoder与一维卷积神经网络模型组合,用于了解用户和项目功能以预测用户偏好。从细节实验到两个现实世界数据集,与现有方法相比,拟议的工作表现出实质性的性能。

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