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A Comparison of Approaches to Advertising Measurement: Evidence from Big Field Experiments at Facebook

机译:广告测量方法的比较:来自Facebook的大现场实验的证据

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Measuring the causal effects of digital advertising remains challenging despite the availability of granular data. Unobservable factors make exposure endogenous, and advertising's effect on outcomes tends to be small. In principle, these concerns could be addressed using randomized controlled trials (RCTs). In practice, few online ad campaigns rely on RCTs and instead use observational methods to estimate ad effects. We assess empirically whether the variation in data typically available in the advertising industry enables observational methods to recover the causal effects of online advertising. Using data from 15 U.S. advertising experiments at Facebook comprising 500 million user-experiment observations and 1.6 billion ad impressions, we contrast the experimental results to those obtained from multiple observational models. The observational methods often fail to produce the same effects as the randomized experiments, even after conditioning on extensive demographic and behavioral variables. In our setting, advances in causal inference methods do not allow us to isolate the exogenous variation needed to estimate the treatment effects. We also characterize the incremental explanatory power our data would require to enable observational methods to successfully measure advertising effects. Our findings suggest that commonly used observational approaches based on the data usually available in the industry often fail to accurately measure the true effect of advertising.
机译:尽管粒度数据可用性,但仍可衡量数字广告的因果效果仍然挑战。不可观察的因素使曝光内源性,广告对结果的影响往往很小。原则上,可以使用随机对照试验(RCT)来解决这些问题。在实践中,很少有在线广告活动依赖RCT,而是使用观察方法来估计AD效果。我们在虚拟上评估广告业中通常可用的数据的变化是否能够恢复在线广告的因果影响。在Facebook中使用来自1500万的35美元的数据包括5亿用户实验观察和16亿广告展示率,我们将实验结果与多种观察模型获得的那些进行了造影。即使在对广泛的人口统计和行为变量的调节之后,观察方法通常不能产生与随机实验相同的效果。在我们的环境中,因果推断方法的进展不允许我们分离估计治疗效果所需的外源性变异。我们还表征了我们的数据所需的增量解释电源,以便能够成功测量广告效果的观测方法。我们的研究结果表明,基于行业中通常可用的数据的常用观察方法通常无法准确测量广告的真实效果。

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