Regression Clustering for Estimating Product-Level Price Elasticity with Limited Data
Purpose – Pricing is a strategic competitive leverage and firms increasingly utilize data-driven pricing methods. Estimates of product-level price elasticities are needed to determine the best prices for each product, hence reliable estimation is of first-order importance. However, due to the inc...
Main Author: | |
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Format: | Article |
Language: | English |
Published: |
Isarder
2020-12-01
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Series: | İşletme Araştırmaları Dergisi |
Subjects: | |
Online Access: | https://isarder.org/2020/vol.12_issue.4_article3.pdf |
Summary: | Purpose – Pricing is a strategic competitive leverage and firms increasingly utilize data-driven
pricing methods. Estimates of product-level price elasticities are needed to determine the best prices
for each product, hence reliable estimation is of first-order importance. However, due to the
increasing number of products and dynamics of customer behavior, relevant historical data is often
limited.
Design/methodology/approach – The objective of this paper is to jointly cluster products with
similar price elasticities and estimate this cluster-specific quantity using regression clustering. An
extension of the regression clustering problem. Two heuristics are proposed: The gradient descentbased heuristic iterates through feasible solutions to increase cluster-specific regression fit. The
categorical ordering heuristic fits a regression for each product, orders the products based on the
mean response, and splits them at the largest gap. Using simulated and real-world datasets, a
comparative performance analysis is conducted.
Findings – Using the gradient descent-based heuristic with multiple starting solutions gives the best
performance. The computational times could decrease with smart initial solutions, which is
especially critical if the number of products is large. The categorical ordering heuristic, the fastest
method, performs better when there are more than two clusters but suffers from robustness
problems.
Discussion – The findings show that offered heuristics are effective to estimate product-specific
price elasticity with limited data. Firms could leverage these estimates to increase revenues and
profits by better aligning product prices with demand. Given that many products have limited
relevant data, the extent of the applications of our method is quite large which, in turn, could help
firms stay competitive. |
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ISSN: | 1309-0712 1309-0712 |