Michael Braun’s scientific contributions

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Publications (4)


Where A/B Testing Goes Wrong: How Divergent Delivery Affects What Online Experiments Cannot (and Can) Tell You About How Customers Respond to Advertising
  • Article

January 2025

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36 Reads

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6 Citations

Journal of Marketing

Michael Braun

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Eric M. Schwartz

Marketers use online advertising platforms to compare user responses to different ad content. But platforms’ experimentation tools deliver different ads to distinct and undetectably optimized mixes of users that vary across ads, even during the test. Because expo­sure to ads in the test is nonrandom, the estimated comparisons confound the effect of the ad content with the effect of algorithmic targeting. This means that experimenters may not be learning what they think they are learning from ad A/B tests. The authors document these “divergent delivery” patterns during an online experiment for the first time. They explain how algorithmic targeting, user heterogeneity, and data aggregation conspire to confound the magnitude, and even the sign, of ad A/B test results. Analytically, the authors extend the potential outcomes model of causal inference to treat random assignment of ads and user exposure to ads as separate experimental design elements. Managerially, the authors explain why platforms lack incentives to allow experimenters to untangle the effects of ad content from proprietary algorithmic selection of users when running A/B tests. Given that experimenters have diverse reasons for comparing user responses to ads, the au­thors offer tailored prescriptive guidance to experimenters based on their specific goals.


Leveraging Digital Advertising Platforms for Consumer Research
  • Article
  • Full-text available

May 2024

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186 Reads

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16 Citations

Journal of Consumer Research

Digital advertising platforms have emerged as a widely utilized data source in consumer research; yet, the interpretation of such data remains a source of confusion for many researchers. This article aims to address this issue by offering a comprehensive and accessible review of four prominent data collection methods proposed in the marketing literature: “informal studies,” “multiple-ad studies without holdout,” “single-ad studies with holdout,” and “multiple-ad studies with holdout.” By outlining the strengths and limitations of each method, we aim to enhance understanding regarding the inferences that can and cannot be drawn from the collected data. Furthermore, we present seven recommendations to effectively leverage these tools for programmatic consumer research. These recommendations provide guidance on how to use these tools to obtain causal and non-causal evidence for the effects of marketing interventions, and the associated psychological processes, in a digital environment regulated by targeting algorithms. We also give recommendations for how to describe the testing tools and the data they generate and urge platforms to be more transparent on how these tools work.

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Citations (3)


... Machine learning (ML) is increasingly used for estimating treatment effects from observational data (e.g., Baiardi & Naghi, 2024;Braun & Schwartz, 2024;Ellickson et al., 2023;Feuerriegel et al., 2024). Yet, this involves sensitive information about individuals, and, hence, methods are often needed to ensure privacy. ...

Reference:

Differentially Private Learners for Heterogeneous Treatment Effects
Where A/B Testing Goes Wrong: How Divergent Delivery Affects What Online Experiments Cannot (and Can) Tell You About How Customers Respond to Advertising
  • Citing Article
  • January 2025

Journal of Marketing

... Manager (Braun et al. 2024), we compare display ads that feature a dynamic image in combination with TOs of different sizes (Study 3a) and different degrees of centrality (Study 3b), holding all other textual and visual elements constant. We created a fictional business page, ...

Leveraging Digital Advertising Platforms for Consumer Research

Journal of Consumer Research

... Since consumer identities are relatively fluid, whether the source of identity labels affects consumers' longterm product preferences remains understudied. Hence, future research could further investigate whether and how the source of identity labels can have a profound impact on consumer behavior across various new media platforms (Jia, Liu, and Lowry 2024;Yin, Jia, and Zheng 2021;Braun et al. 2024). ...

Leveraging Digital Advertising Platforms for Consumer Research
  • Citing Article
  • January 2023

SSRN Electronic Journal