网络广告中无偏差联合点击率预测和市场价格建模的多任务学习

Haizhi Yang, Tengyun Wang, Xiaoli Tang, Qianyu Li, Yueyue Shi, Siyu Jiang, Han Yu, Hengjie Song
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引用次数: 7

摘要

基于实时竞价的网络广告迅速兴起,带来了显著的经济效益,引起了广泛的研究关注。从广告主的角度来看,对每一次拍卖进行准确的效用估计和成本估计是实现广告成本效益的关键。这些问题分别被称为点击率(CTR)预测任务和市场价格建模任务。然而,现有的方法将点击率预测和市场价格建模作为两个独立的任务进行优化,而不考虑彼此,从而导致性能次优。此外,在估计过程中,他们没有充分利用来自失败出价的未标记数据,这使得他们遭受样本选择偏差问题。为了解决这些限制,我们提出了多任务广告估计器(MTAE),这是一个端到端的联合优化框架,同时执行点击率预测和市场价格建模。通过多任务学习,两种估计任务都可以利用知识转移来提高特征表示和泛化能力。此外,我们利用全量投标请求数据中丰富的投标价格信号,并在框架中引入预测获胜概率的辅助任务,以进行无偏学习。通过对两个大规模真实世界公共数据集的广泛实验,我们证明了我们提出的方法在各种性能指标下比最先进的模型取得了显着改进。
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Multi-task Learning for Bias-Free Joint CTR Prediction and Market Price Modeling in Online Advertising
The rapid rise of real-time bidding-based online advertising has brought significant economic benefits and attracted extensive research attention. From the perspective of an advertiser, it is crucial to perform accurate utility estimation and cost estimation for each individual auction in order to achieve cost-effective advertising. These problems are known as the click through rate (CTR) prediction task and the market price modeling task, respectively. However, existing approaches treat CTR prediction and market price modeling as two independent tasks to be optimized without regard to each other, thus resulting in suboptimal performance. Moreover, they do not make full use of unlabeled data from the losing bids during estimations, which makes them suffer from the sample selection bias issue. To address these limitations, we propose Multi-task Advertising Estimator (MTAE), an end-to-end joint optimization framework which performs both CTR prediction and market price modeling simultaneously. Through multi-task learning, both estimation tasks can take advantage of knowledge transfer to achieve improved feature representation and generalization abilities. In addition, we leverage the abundant bid price signals in the full-volume bid request data and introduce an auxiliary task of predicting the winning probability into the framework for unbiased learning. Through extensive experiments on two large-scale real-world public datasets, we demonstrate that our proposed approach has achieved significant improvements over the state-of-the-art models under various performance metrics.
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