RecDNNing: a recommender system using deep neural network with user and item embeddings

Hafed Zarzour, Ziad Al-Sharif, Y. Jararweh
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引用次数: 19

Abstract

The success of applying deep learning to many domains has gained strong interest in developing new revolutionary recommender systems. However, there are little works studying these systems that employ deep learning; additionally, there is no study showing how to combine the users and items embedding with deep learning to enhance the effectiveness of the recommender systems. Therefore, this paper proposes a novel approach called RecDNNing with a combination of embedded users and items combined with deep neural network. The proposed recommendation approach consists of two phases. In the first phase, we create a dens numeric representation for each user and item, called user embedding and item embedding, respectively. Following that, the items and users embedding are averaged and then concatenated before being fed into the deep neural network. In the second phase, we use the model of the deep neural network to take the concatenated users and items embedding as the inputs in order to predict the scores of rating by applying the forward propagation algorithm. The experimental results on MovieLens show that the proposed RecDNNing outperforms state-of-the-art algorithms.
RecDNNing:一个使用深度神经网络的用户和项目嵌入的推荐系统
将深度学习应用于许多领域的成功已经引起了人们对开发新的革命性推荐系统的强烈兴趣。然而,很少有人研究这些采用深度学习的系统;此外,还没有研究表明如何将用户和项目嵌入与深度学习相结合来提高推荐系统的有效性。因此,本文提出了一种将嵌入式用户和物品结合深度神经网络的新方法——RecDNNing。建议的建议方法包括两个阶段。在第一阶段,我们为每个用户和项目创建一个den数字表示,分别称为用户嵌入和项目嵌入。然后,对嵌入的项目和用户进行平均,然后进行连接,然后再输入深度神经网络。在第二阶段,我们利用深度神经网络模型,将嵌入的用户和项目的连接作为输入,通过前向传播算法来预测评分得分。在MovieLens上的实验结果表明,所提出的RecDNNing优于最先进的算法。
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