English

Model Distillation for Revenue Optimization: Interpretable Personalized Pricing

Machine Learning 2021-06-11 v2 Machine Learning Applications

Abstract

Data-driven pricing strategies are becoming increasingly common, where customers are offered a personalized price based on features that are predictive of their valuation of a product. It is desirable for this pricing policy to be simple and interpretable, so it can be verified, checked for fairness, and easily implemented. However, efforts to incorporate machine learning into a pricing framework often lead to complex pricing policies which are not interpretable, resulting in slow adoption in practice. We present a customized, prescriptive tree-based algorithm that distills knowledge from a complex black-box machine learning algorithm, segments customers with similar valuations and prescribes prices in such a way that maximizes revenue while maintaining interpretability. We quantify the regret of a resulting policy and demonstrate its efficacy in applications with both synthetic and real-world datasets.

Keywords

Cite

@article{arxiv.2007.01903,
  title  = {Model Distillation for Revenue Optimization: Interpretable Personalized Pricing},
  author = {Max Biggs and Wei Sun and Markus Ettl},
  journal= {arXiv preprint arXiv:2007.01903},
  year   = {2021}
}
R2 v1 2026-06-23T16:50:29.394Z