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Evaluating Online Ad Campaigns in a Pipeline: Causal Models At Scale

机译:评估管道中的在线广告活动:大规模的因果模型

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Display ads proliferate on the web, but are they effective? Or are they irrelevant in light of all the other advertising that people see? We describe a way to answer these questions, quickly and accurately, without randomized experiments, surveys, focus groups or expert data analysts. Doubly robust estimation protects against the selection bias that is inherent in observational data, and a nonparametric test that is based on irrelevant outcomes provides further defense. Simulations based on realistic scenarios show that the resulting estimates are more robust to selection bias than traditional alternatives, such as regression modeling or propensity scoring. Moreover, computations are fast enough that all processing, from data retrieval through estimation, testing, validation and report generation, proceeds in an automated pipeline, without anyone needing to see the raw data.
机译:展示广告在网络上激增,但有效吗?还是根据人们看到的所有其他广告,它们是否无关紧要?我们描述了一种快速,准确地回答这些问题的方法,而无需进行随机实验,调查,焦点小组或专家数据分析师。双稳健的估计可以防止观测数据固有的选择偏差,并且基于不相关结果的非参数检验可以提供进一步的防御。根据实际情况进行的仿真表明,与传统的替代方法(如回归模型或倾向评分)相比,所得估计值对选择偏差的鲁棒性更高。而且,计算速度足够快,从数据检索到估计,测试,验证和报告生成的所有处理都可以在自动化管道中进行,而无需任何人查看原始数据。

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