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Predictive Incrementality by Experimentation (PIE) for Ad Measurement

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  • Brett R. Gordon
  • Robert Moakler
  • Florian Zettelmeyer

Abstract

We present a novel approach to causal measurement for advertising, namely to use exogenous variation in advertising exposure (RCTs) for a subset of ad campaigns to build a model that can predict the causal effect of ad campaigns that were run without RCTs. This approach -- Predictive Incrementality by Experimentation (PIE) -- frames the task of estimating the causal effect of an ad campaign as a prediction problem, with the unit of observation being an RCT itself. In contrast, traditional causal inference approaches with observational data seek to adjust covariate imbalance at the user level. A key insight is to use post-campaign features, such as last-click conversion counts, that do not require an RCT, as features in our predictive model. We find that our PIE model recovers RCT-derived incremental conversions per dollar (ICPD) much better than the program evaluation approaches analyzed in Gordon et al. (forthcoming). The prediction errors from the best PIE model are 48%, 42%, and 62% of the RCT-based average ICPD for upper-, mid-, and lower-funnel conversion outcomes, respectively. In contrast, across the same data, the average prediction error of stratified propensity score matching exceeds 491%, and that of double/debiased machine learning exceeds 2,904%. Using a decision-making framework inspired by industry, we show that PIE leads to different decisions compared to RCTs for only 6% of upper-funnel, 7% of mid-funnel, and 13% of lower-funnel outcomes. We conclude that PIE could enable advertising platforms to scale causal ad measurement by extrapolating from a limited number of RCTs to a large set of non-experimental ad campaigns.

Suggested Citation

  • Brett R. Gordon & Robert Moakler & Florian Zettelmeyer, 2023. "Predictive Incrementality by Experimentation (PIE) for Ad Measurement," Papers 2304.06828, arXiv.org.
  • Handle: RePEc:arx:papers:2304.06828
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    References listed on IDEAS

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