Your MMM is Broken: Identification of Nonlinear and Time-varying Effects in Marketing Mix Models

Ryan Dew, Nicolas Padilla, Anya Shchetkina
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Abstract

Recent years have seen a resurgence in interest in marketing mix models (MMMs), which are aggregate-level models of marketing effectiveness. Often these models incorporate nonlinear effects, and either implicitly or explicitly assume that marketing effectiveness varies over time. In this paper, we show that nonlinear and time-varying effects are often not identifiable from standard marketing mix data: while certain data patterns may be suggestive of nonlinear effects, such patterns may also emerge under simpler models that incorporate dynamics in marketing effectiveness. This lack of identification is problematic because nonlinearities and dynamics suggest fundamentally different optimal marketing allocations. We examine this identification issue through theory and simulations, wherein we explore the exact conditions under which conflation between the two types of models is likely to occur. In doing so, we introduce a flexible Bayesian nonparametric model that allows us to both flexibly simulate and estimate different data-generating processes. We show that conflating the two types of effects is especially likely in the presence of autocorrelated marketing variables, which are common in practice, especially given the widespread use of stock variables to capture long-run effects of advertising. We illustrate these ideas through numerous empirical applications to real-world marketing mix data, showing the prevalence of the conflation issue in practice. Finally, we show how marketers can avoid this conflation, by designing experiments that strategically manipulate spending in ways that pin down model form.
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你的 MMM 坏了:识别营销组合模型中的非线性和时变效应
近年来,市场营销组合模型(MMMs)再次引起人们的关注,这些模型是市场营销效果的综合模型。这些模型通常包含非线性效应,并且或隐或显地假定营销效果随时间而变化。本文表明,非线性效应和时变效应往往无法从标准营销组合数据中识别出来:虽然某些数据模式可能暗示了非线性效应,但这些模式也可能出现在包含营销效果动态变化的简单模型中。由于非线性效应和动态效应会带来根本不同的最优营销分配,因此缺乏识别性是个问题。我们通过理论和模拟研究了这一识别问题,探索了两类模型之间可能发生冲突的确切条件。在此过程中,我们引入了一个灵活的贝叶斯非参数模型,使我们能够灵活地模拟和估计不同的数据生成过程。我们表明,在存在自相关营销变量的情况下,混淆这两类效应的可能性尤其大,而自相关营销变量在实践中很常见,特别是考虑到股票变量被广泛用于捕捉广告的长期效应。我们通过对现实世界营销组合数据的大量实证应用来说明这些观点,从而显示出混淆问题在实践中的普遍性。最后,我们展示了营销人员如何通过设计实验来避免这种混淆,这些实验可以战略性地操纵支出,从而打破模型形式。
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