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 data set containing bookings for a sample of midsized hotels in Europe. Using nonbinding 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 are 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 and 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.

Garcia, D., Tolvanen, J.k., Wagner, A.k. (2022). Demand Estimation Using Managerial Responses to Automated Price Recommendations. MANAGEMENT SCIENCE, 68(11), 7918-7939 [10.1287/mnsc.2021.4261].

Demand Estimation Using Managerial Responses to Automated Price Recommendations

Juha Tolvanen
;
2022-01-01

Abstract

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 data set containing bookings for a sample of midsized hotels in Europe. Using nonbinding 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 are 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 and 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.
2022
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore SECS-P/01 - ECONOMIA POLITICA
English
Con Impact Factor ISI
Big data
Causal inference
Machine learning
Revenue management
Price recommendations
https://pubsonline.informs.org/doi/full/10.1287/mnsc.2021.4261
Garcia, D., Tolvanen, J.k., Wagner, A.k. (2022). Demand Estimation Using Managerial Responses to Automated Price Recommendations. MANAGEMENT SCIENCE, 68(11), 7918-7939 [10.1287/mnsc.2021.4261].
Garcia, D; Tolvanen, Jk; Wagner, Ak
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/312775
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