Working Paper

Demand Estimation Using Managerial Responses to Automated Price Recommendations

Daniel Garcia, Juha Tolvanen, Alexander K. Wagner
CESifo, Munich, 2021

CESifo Working Paper No. 9127

We provide a new framework to identify demand elasticities in markets where managers rely on algorithmic recommendations for price setting, and apply it to a dataset containing bookings for a sample of mid-sized hotels in Europe. Using non-binding algorithmic price recommendations and observed delay in price adjustments by decision makers, we demonstrate that a control-function approach, combined with state-of-the-art model selection techniques, can be used to isolate exogenous price variation and identify demand elasticities across hotel room types and over time. We confirm these elasticity estimates with a difference-in-differences approach that leverages the same delays in price adjustments by decision makers. However, the difference-in-differences estimates are more noisy and only yield consistent estimates if data is pooled across hotels. We then apply our control-function approach to two classic questions in the dynamic pricing literature: the evolution of price elasticity of demand over time as well as the effects of a transitory price change on future demand due to the presence of strategic buyers. Finally, we discuss how our empirical framework can be applied directly to other decision-making situations in which recommendation systems are used.

CESifo Category
Industrial Organisation
Economics of Digitization
Keywords: big data, causal inference, machine learning, revenue management, price recommendations, demand estimation
JEL Classification: L130, L830, D120