User Response Learning for Directly Optimizing Campaign Performance in Display Advertising

Kan Ren, Weinan Zhang, Yifei Rong, Haifeng Zhang, Yong Yu, Jun Wang
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引用次数: 39

Abstract

Learning and predicting user responses, such as clicks and conversions, are crucial for many Internet-based businesses including web search, e-commerce, and online advertising. Typically, a user response model is established by optimizing the prediction accuracy, e.g., minimizing the error between the prediction and the ground truth user response. However, in many practical cases, predicting user responses is only part of a rather larger predictive or optimization task, where on one hand, the accuracy of a user response prediction determines the final (expected) utility to be optimized, but on the other hand, its learning may also be influenced from the follow-up stochastic process. It is, thus, of great interest to optimize the entire process as a whole rather than treat them independently or sequentially. In this paper, we take real-time display advertising as an example, where the predicted user's ad click-through rate (CTR) is employed to calculate a bid for an ad impression in the second price auction. We reformulate a common logistic regression CTR model by putting it back into its subsequent bidding context: rather than minimizing the prediction error, the model parameters are learned directly by optimizing campaign profit. The gradient update resulted from our formulations naturally fine-tunes the cases where the market competition is high, leading to a more cost-effective bidding. Our experiments demonstrate that, while maintaining comparable CTR prediction accuracy, our proposed user response learning leads to campaign profit gains as much as 78.2% for offline test and 25.5% for online A/B test over strong baselines.
用户反应学习直接优化展示广告的广告活动效果
学习和预测用户的反应,如点击和转换,对许多基于互联网的业务至关重要,包括网络搜索、电子商务和在线广告。通常,用户响应模型是通过优化预测精度来建立的,例如,最小化预测与地面真实用户响应之间的误差。然而,在许多实际情况下,预测用户响应只是一个更大的预测或优化任务的一部分,一方面,用户响应预测的准确性决定了要优化的最终(预期)效用,但另一方面,其学习也可能受到后续随机过程的影响。因此,将整个过程作为一个整体进行优化,而不是独立地或顺序地处理它们,是非常有趣的。本文以实时展示广告为例,利用预测用户的广告点击率(CTR)来计算广告印象在第二次价格拍卖中的出价。我们重新制定了一个常见的逻辑回归CTR模型,将其放回到后续的投标环境中:不是最小化预测误差,而是通过优化广告活动利润直接学习模型参数。从我们的配方中产生的梯度更新自然微调了市场竞争激烈的情况,导致更具成本效益的投标。我们的实验表明,在保持可比较的点击率预测准确性的同时,我们提出的用户响应学习导致线下测试的广告活动利润增长78.2%,在线A/B测试的广告活动利润增长25.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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