Using transfer adaptation method for dynamic features expansion in multi-label deep neural network for recommender systems

F. Abdullayeva, Suleyman Suleymanzade
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Abstract

In this paper, we propose to use a convertible deep neural network (DNN) model with a transfer adaptation mechanism to deal with varying input and output numbers of neurons. The flexible DNN model serves as a multi-label classifier for the recommender system as part of the retrieval systems’ push mechanism, which learns the combination of tabular features and proposes the number of discrete offers (targets). Our retrieval system uses the transfer adaptation, mechanism, when the number of features changes, it replaces the input layer of the neural network then freezes all gradients on the following layers, trains only replaced layer, and unfreezes the entire model. The experiments show that using the transfer adaptation technique impacts stable loss decreasing and learning speed during the training process.  
在用于推荐系统的多标签深度神经网络中使用转移适应法进行动态特征扩展
在本文中,我们建议使用具有转移适应机制的可转换深度神经网络(DNN)模型,以应对神经元的输入和输出数量变化。灵活的 DNN 模型作为推荐系统的多标签分类器,是检索系统推送机制的一部分,它可以学习表格特征的组合,并提出离散报价(目标)的数量。我们的检索系统采用转移适应机制,当特征数量发生变化时,它会替换神经网络的输入层,然后冻结下面各层的所有梯度,只训练被替换的层,并解冻整个模型。实验表明,在训练过程中,使用转移适应技术会影响损失的稳定减少和学习速度。
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