CTR Prediction Model Using xDeepFM and Bayesian optimization

Yiying Zhang
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引用次数: 0

Abstract

With the development of internet, increasing people tends to consume online, which is convenient and timesaving. Taobao is the largest online shopping site in China. In this paper, we use the data from Taobao to predict the click-through-rate (CTR), an important metrics that measures the number of clicks advertisers receive on their ads per number of impressions. We introduce xDeepFM model to predict CTR and use Bayesian optimization to optimize. The xDeepFM model is a combined model, composed by DNN and CIN, like Wide&Deep. Based on it, the xDeepFM model enables to catch features of different dimensions: implicit high-order interactions and explicit high-order interactions. In addition, we use the Bayesian optimization to get the optimal hyperparameters. The metrics we used is Auc Roc, and the higher Auc-Roc is, the better performance the model will gain. The Auc Roc of our modle is 0.651 higher 0.031 and 0.012 respectively than LightGBM and DeepFM.
基于xDeepFM和贝叶斯优化的点击率预测模型
随着互联网的发展,越来越多的人倾向于网上消费,这是方便和节省时间。淘宝是中国最大的在线购物网站。在本文中,我们使用来自淘宝的数据来预测点击率(CTR),这是一个重要的指标,用来衡量广告商在每一次展示中收到的广告点击次数。我们引入xDeepFM模型来预测点击率,并使用贝叶斯优化进行优化。xDeepFM模型是一个组合模型,由DNN和CIN组成,就像Wide&Deep一样。在此基础上,xDeepFM模型能够捕捉不同维度的特征:隐式高阶交互和显式高阶交互。此外,我们使用贝叶斯优化来获得最优的超参数。我们使用的指标是Auc-Roc, Auc-Roc越高,模型的性能就越好。我们的模型的Auc Roc分别比LightGBM和DeepFM高0.031和0.012,分别为0.651。
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