Deep Learning Based Matrix Factorization For Collaborative Filtering

Abebe Tegene, Qiao Liu, S. Muhammed, H. Leka
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Abstract

Collaborative Filtering based on matrix factorization (MF) has shown tremendous success in the field recommender system. However, MF has difficulty in handling sparsity and scalability. These resulted in low quality of recommendations. In this regard, deep learning has shown immense success in different application areas including recommender systems. To address the limitations, we incorporate deep learning architecture to matrix factorization and develop a novel mode. The core idea of the method is to map users and items input vector to two well-structured deep neural network architectures separately for factorization. Then, we incorporate inner product to the output layers of the network to predict the rating scores. The use of this structure significantly improve the quality of recommendation. The experimental result on real data sets shows that our proposed model outperformed state of the art methods.
基于深度学习的矩阵分解协同过滤
基于矩阵分解的协同过滤在现场推荐系统中取得了巨大的成功。然而,MF在处理稀疏性和可扩展性方面存在困难。这导致了低质量的推荐。在这方面,深度学习在包括推荐系统在内的不同应用领域取得了巨大的成功。为了解决这些局限性,我们将深度学习架构结合到矩阵分解中,并开发了一种新的模式。该方法的核心思想是将用户和项目输入向量分别映射到两个结构良好的深度神经网络体系结构中进行分解。然后,我们将内积结合到网络的输出层中来预测评级分数。使用这种结构可以显著提高推荐质量。在实际数据集上的实验结果表明,我们提出的模型优于目前的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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