TY - JOUR
T1 - Personalization and Targeting
T2 - how to experiment, learn & optimize
AU - Lemmens, Aurelie
AU - Roos, Jason
AU - Gabel, Sebastian
AU - Ascarza, Eva
AU - Bruno, Hernán
AU - Gordon, Brett
AU - Israeli, Ayelet
AU - McDonnell Feit, Elea
AU - Mela, Carl
AU - Netzer, Oded
N1 - Publisher Copyright: © 2025 The Author(s)
PY - 2025
Y1 - 2025
N2 - Personalization has become the heartbeat of modern marketing. The rapid expansion of individual-level data, the proliferation of personalized communication channels, and advancements in experimentation have fundamentally reshaped how firms tailor their marketing strategies. Furthermore, causal inference and machine learning enable companies to understand how the same marketing action can impact the choices of individual customers differently. This article provides an academic overview of these developments. We formalize personalization as a causal inference problem embedded in the test and learn framework. We review key challenges and solutions that arise when personalization is approached through causal inference, including data limitations, treatment effect heterogeneity, policy evaluation, and ethical considerations. Finally, we identify emerging research trends stemming from new methodologies such as generic and double machine learning, direct policy learning, foundation models, and generative AI.
AB - Personalization has become the heartbeat of modern marketing. The rapid expansion of individual-level data, the proliferation of personalized communication channels, and advancements in experimentation have fundamentally reshaped how firms tailor their marketing strategies. Furthermore, causal inference and machine learning enable companies to understand how the same marketing action can impact the choices of individual customers differently. This article provides an academic overview of these developments. We formalize personalization as a causal inference problem embedded in the test and learn framework. We review key challenges and solutions that arise when personalization is approached through causal inference, including data limitations, treatment effect heterogeneity, policy evaluation, and ethical considerations. Finally, we identify emerging research trends stemming from new methodologies such as generic and double machine learning, direct policy learning, foundation models, and generative AI.
U2 - 10.1016/j.ijresmar.2025.07.004
DO - 10.1016/j.ijresmar.2025.07.004
M3 - Article
SN - 0167-8116
JO - International Journal of Research in Marketing
JF - International Journal of Research in Marketing
ER -