arXiv Open Access 2024

Iterative Causal Segmentation: Filling the Gap between Market Segmentation and Marketing Strategy

Kaihua Ding Jingsong Cui Mohammad Soltani Jing Jin
Lihat Sumber

Abstrak

The field of causal Machine Learning (ML) has made significant strides in recent years. Notable breakthroughs include methods such as meta learners (arXiv:1706.03461v6) and heterogeneous doubly robust estimators (arXiv:2004.14497) introduced in the last five years. Despite these advancements, the field still faces challenges, particularly in managing tightly coupled systems where both the causal treatment variable and a confounding covariate must serve as key decision-making indicators. This scenario is common in applications of causal ML for marketing, such as marketing segmentation and incremental marketing uplift. In this work, we present our formally proven algorithm, iterative causal segmentation, to address this issue.

Topik & Kata Kunci

Penulis (4)

K

Kaihua Ding

J

Jingsong Cui

M

Mohammad Soltani

J

Jing Jin

Format Sitasi

Ding, K., Cui, J., Soltani, M., Jin, J. (2024). Iterative Causal Segmentation: Filling the Gap between Market Segmentation and Marketing Strategy. https://arxiv.org/abs/2405.14743

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2024
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en
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arXiv
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