Introduction

  • TL;DR: Price elasticity measures how demand responds to price changes, but naive models fail due to endogeneity. Causal and ML-based designs estimate more accurate effects, and scenario simulations help evaluate pricing decisions across demand, revenue, and inventory.

(본문은 위 한국어 구조에 대응해 영문으로 동일하게 구성)


References

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