Multi-Product Pricing under the Multinomial Logit Model with Local Network Effects

55 Pages Posted: 30 Jun 2022

See all articles by Mohan Gopalakrishnan

Mohan Gopalakrishnan

Arizona State University, West Campus

Heng Zhang

Supply Chain Management Department - W.P.Carey School of Business

Zhiqi Zhang

Washington University in St. Louis

Date Written: June 21, 2022

Abstract

Motivated by direct interactions with practitioners and real-world data, we study a monopoly firm selling multiple substitute products to customers characterized by their different social network degrees. Under the multinomial logit model framework, we assume that the utility a customer with a larger network degree derives from the seller’s products is subject to more impact from her neighbors and describe the customers’ choice behavior by a Bayesian Nash game. We show that a unique equilibrium exists as long as these network effects are not too large. Furthermore, we study how the seller should optimally set the prices of the products in this setting. Under the homogeneous product-related parameter assumption, we show that if the seller optimally price-discriminates all customers based on their network degrees, the products’ markups are the same for each customer type. Building on this, we characterize the sufficient and necessary condition for the concavity of the pricing problem, and show that when the problem is not concave, we can convert it to a single-dimensional search and solve it efficiently. We provide several further insights about the structure of optimal prices, both theoretically and numerically. Furthermore, we show that we can simultaneously relax the multinomial logit model and homogeneous product-related parameter assumptions and allow customer in- and out-degrees to be arbitrarily distributed while
maintaining most of our conclusions robust.

Suggested Citation

Gopalakrishnan, Mohan and Zhang, Heng and Zhang, Zhiqi, Multi-Product Pricing under the Multinomial Logit Model with Local Network Effects (June 21, 2022). Available at SSRN: https://ssrn.com/abstract=4141759 or http://dx.doi.org/10.2139/ssrn.4141759

Mohan Gopalakrishnan

Arizona State University, West Campus ( email )

P.O. Box 37100
Phoenix, AZ 85069
United States

Heng Zhang (Contact Author)

Supply Chain Management Department - W.P.Carey School of Business ( email )

Tempe, AZ
United States

Zhiqi Zhang

Washington University in St. Louis ( email )

St. Louis, MO
United States

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