Click through rate (CTR) prediction of image ads is the core task of online display advertising systems, and logistic regression (LR) has been frequently applied as the prediction model. However, LR model lacks the ability of extracting complex and intrinsic nonlinear features from handcrafted high-dimensional image features, which limits its effectiveness. To solve this issue, in this paper, we introduce a novel deep neural network (DNN) based model that directly predicts the CTR of an image ad based on raw image pixels and other basic features in one step. The DNN model employs convolution layers to automatically extract representative visual features from images, and nonlinear CTR features are then learned from visual features and other contextual features by using fully-connected layers. Empirical evaluations on a real world dataset with over 50 million records demonstrate the effectiveness and efficiency of this method.
翻译:通过速率(CTR)点击图像广告预测是在线显示广告系统的核心任务,物流回归(LR)经常用作预测模型,然而,LR模型缺乏从手工制作的高维图像特征中提取复杂和内在的非线性特征的能力,这限制了其有效性。为了解决这个问题,我们在本文件中引入了一个新的深神经网络(DNN)模型,该模型直接预测基于原始图像像素和其他基本特征的图像广告的CTR,该模型一步地步。DNN模型利用演进层自动从图像中提取具有代表性的视觉特征,然后通过使用完全相连的层从视觉特征和其他背景特征中学习非线性CTR特征。对有5 000多万记录的真实世界数据集进行实证评估,显示了这一方法的有效性和效率。