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A New Approach for Advertising CTR Prediction Based on Deep Neural Network via Attention Mechanism

机译:基于注意机制的基于深度神经网络的广告点击率预测新方法

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摘要

Click-through rate prediction is critical in Internet advertising and affects web publisher's profits and advertiser's payment. The traditional method of obtaining features using feature extraction did not consider the sparseness of advertising data and the highly nonlinear association between features. To reduce the sparseness of data and to mine the hidden features in advertising data, a method that learns the sparse features is proposed. Our method exploits dimension reduction based on decomposition, takes advantage of the attention mechanism in neural network modelling, and improves FM to make feature interactions contribute differently to the prediction. We utilize stack autoencoder to explore high-order feature interactions and use improved FM for low-order feature interactions to portray the nonlinear associated relationship of features. The experiment shows that our method improves the effect of CTR prediction and produces economic benefits in Internet advertising.
机译:点击率预测在Internet广告中至关重要,并且会影响网络发布者的利润和广告客户的付款。传统的使用特征提取来获得特征的方法没有考虑广告数据的稀疏性以及特征之间的高度非线性关联。为了减少数据的稀疏性并挖掘广告数据中的隐藏特征,提出了一种学习稀疏特征的方法。我们的方法利用了基于分解的降维,在神经网络建模中利用了注意力机制,并改进了FM以使特征交互对预测的贡献有所不同。我们利用堆栈自动编码器来探索高阶特征交互,并针对低阶特征交互使用改进的FM来描绘特征的非线性关联关系。实验表明,我们的方法提高了点击率预测的效果,并在互联网广告中产生了经济效益。

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