Data Science

Why price elasticity is the most difficult parameter to estimate in retail analytics

A deep dive into why measuring price elasticity remains the biggest challenge in demand modeling, from data scarcity and endogeneity to seasonal confounding—and how modern techniques address these challenges

18 avril 2025
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6 min de lecture

Among all parameters estimated in predictive demand modeling, price elasticity — the sensitivity of demand to price changes — is by far the most difficult to measure accurately.

In markdown optimization, errors in elasticity estimation can directly translate into revenue loss or inventory misallocation, making it both a statistical and a strategic challenge.

This article explores why elasticity estimation is so difficult in real retail environments, and how modern modeling frameworks attempt to mitigate these issues.

At the SKU level, sales data is often sparse and volatile. An individual product in a specific store or segment might sell only a handful of units per week, producing an extremely low signal-to-noise ratio. When weekly demand varies more due to randomness than price, elasticity estimates become statistically meaningless.

À propos de l'auteur

Cyril Noirot

Cyril Noirot

Lead Data Scientist

Data scientist freelance. Je conçois et déploie des systèmes de décision — prévision, pricing, marketing measurement, optimisation.

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