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Online evaluation of bid prediction models in a large-scale computational advertising platform: decision making and insights

机译:大型计算广告平台中标预测模型的在线评估:决策和见解

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摘要

Online media provides opportunities for marketers through which they can deliver effective brand messages to a wide range of audiences at scale. Advertising technology platforms enable advertisers to reach their target audience by delivering ad impressions to online users in real time. In order to identify the best marketing message for a user and to purchase impressions at the right price, we rely heavily on bid prediction and optimization models. Even though the bid prediction models are well studied in the literature, the equally important subject of model evaluation is usually overlooked or not discussed in detail. Effective and reliable evaluation of an online bidding model is crucial for making faster model improvements as well as for utilizing the marketing budgets more efficiently. In this paper, we present an experimentation framework for bid prediction models where our focus is on the practical aspects of model evaluation. Specifically, we outline the unique challenges we encounter in our platform due to a variety of factors such as heterogeneous goal definitions, varying budget requirements across different campaigns, high seasonality and the auction-based environment for inventory purchasing. Then, we introduce return on investment as a unified model performance ( i.e., success) metric and explain its merits over more traditional metrics such as click-through rate or conversion rate. Most importantly, we discuss commonly used evaluation and metric summarization approaches in detail and propose a more accurate method for online evaluation of new experimental models against the baseline. Our meta-analysis-based approach addresses various shortcomings of other methods and yields statistically robust conclusions that allow us to conclude experiments more quickly in a reliable manner. We demonstrate the effectiveness of our evaluation strategy on real campaign data through some experiments.
机译:在线媒体为营销人员提供了能够将有效品牌信息提供给广平范围的广泛观众的机会。广告技术平台使广告商通过实时向在线用户提供广告印象来实现目标受众。为了识别用户的最佳营销信息并以合适的价格购买印象,我们依赖于出价预测和优化模型。即使在文献中进行了竞标预测模型,即使在文献中进行了很好地研究,通常会忽略或不详细讨论模型评估的同样重要的主题。对在线竞标模型的有效可靠的评估对于制定更快的模型改进以及更有效地利用营销预算至关重要。在本文中,我们为我们的重点进行了对模型评估的实际方面的竞标预测模型的实验框架。具体而言,我们概述了我们平台中遇到的独特挑战,因为异构目标定义,不同广告系列,季节性和基于拍卖环境的不同预算要求,适用于库存购买。然后,我们将投资回报介绍为统一的模型性能(即,成功)指标,并解释其对更传统的度量等的优点,例如点击率或转换率。最重要的是,我们详细讨论了常用的评估和公制概述方法,并提出了一种更准确的方法,用于对基线进行新实验模型的在线评估。我们的META分析方法解决了其他方法的各种缺点,并产生了统计上强大的结论,使我们能够以可靠的方式更快地完成实验。我们通过一些实验展示了我们评估战略对真实竞选数据的有效性。

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