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The Design and Targeting of Compliance Promotions

Author

Listed:
  • Øystein Daljord

    (Graduate School of Business, The University of Chicago Booth School of Business, Chicago, Illinois 60637)

  • Carl F. Mela

    (Fuqua School of Business, Duke University, Durham, North Carolina 27708)

  • Jason M. T. Roos

    (Rotterdam School of Management, Erasmus University, 3062 PA Rotterdam, Netherlands)

  • Jim Sprigg

    (InterContinental Hotel Group, Atlanta, Georgia 30346)

  • Song Yao

    (Olin Business School, Washington University in St. Louis, St. Louis, Missouri 63130)

Abstract

This paper considers an experiment-based approach to the optimal design and targeting of compliance promotions. Compliance promotions involve optional participation on the behalf of customers. For example, physicians must consent to see detailers, and consumers must redeem coupons to obtain discounts. Individual compliance decisions affect the mix of customers participating in the promotion and, therefore, how the promotion affects sales. Optional compliance is an especially acute problem in the context of field experiments as policy optimization often necessitates extrapolation beyond the observed cells of the experiment to a different mix of complying customers. Our approach to optimizing the design and targeting of compliance promotions involves (i) an experiment to exogenously vary promotion features; (ii) a means to identify which promotion features can be causally extrapolated; (iii) an approach to extrapolate those causal effects; and (iv) an optimization over the promotion features, conditioned on the extrapolation. The approach is easy to estimate, accommodates two-sided noncompliance due to unobserved heterogeneity, and establishes partial identification bounds of causal effects. When applying the approach to a hotel loyalty promotion, wherein customers must visit enough hotels to earn bonus loyalty points, we find profits are improved considerably.

Suggested Citation

  • Øystein Daljord & Carl F. Mela & Jason M. T. Roos & Jim Sprigg & Song Yao, 2023. "The Design and Targeting of Compliance Promotions," Marketing Science, INFORMS, vol. 42(5), pages 866-891, September.
  • Handle: RePEc:inm:ormksc:v:42:y:2023:i:5:p:866-891
    DOI: 10.1287/mksc.2022.1420
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