基于深度调频的淘宝数据点击率预测模型

LinShu Li, Jianbo Hong, Sitao Min, Yunfan Xue
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引用次数: 6

摘要

CTR(点击率)预测是企业获取客户偏好的有用工具,通常应用于推荐系统和广告中。随着技术的发展,人们提出了许多机器学习算法来预测点击率,如广义线性模型、因式分解机和深度神经网络。然而,所有这些模式都有缺点。在我们的论文中,我们使用了DeepFM模型,这是一个端到端模型,不需要人工特征工程。该模型是FM组件和Deep组件的结合。在实验过程中,我们使用能解决样本不平衡问题的焦点损耗作为损失函数。数据来自淘宝平台8天内的数据。我们将数据分为训练数据和文本数据。AUC是评价预测模型性能的指标。结果表明,该模型的AUC分别比logistic模型和神经网络模型高0.044和0.013。AUC越高,模型的性能越好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel CTR Prediction Model Based On DeepFM For Taobao Data
CTR(click through rate) prediction is a useful tool for enterprises to get the customer's preferences and usually applied in recommender system and advertisement. With the development of technology, there are many machine learning algorithms are proposed to predict CTR, such as generalized linear model, factorization machines and deep neural network. However, all of these models owns disadvantages. And in our paper, we utilize the DeepFM model, which is an end to end model and do not need manual feature engineering. The model is the combination of FM Component and Deep Component. In experiments process, we use the focal loss that could solve the imbalance problem of samples as the loss function. The data is from Taobao platform in eight days. And we divide the data into training data and text data. And AUC is the index to evaluate the prediction model's performance. The result shows that our model's AUC is 0.044 and 0.013 higher than the logistic model and neural network model. The higher AUC is, the better performance the model will gain.
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