Structured Dynamic Pricing: Optimal Regret in a Global Shrinkage Model

03/28/2023
by   Rashmi Ranjan Bhuyan, et al.
0

We consider dynamic pricing strategies in a streamed longitudinal data set-up where the objective is to maximize, over time, the cumulative profit across a large number of customer segments. We consider a dynamic probit model with the consumers' preferences as well as price sensitivity varying over time. Building on the well-known finding that consumers sharing similar characteristics act in similar ways, we consider a global shrinkage structure, which assumes that the consumers' preferences across the different segments can be well approximated by a spatial autoregressive (SAR) model. In such a streamed longitudinal set-up, we measure the performance of a dynamic pricing policy via regret, which is the expected revenue loss compared to a clairvoyant that knows the sequence of model parameters in advance. We propose a pricing policy based on penalized stochastic gradient descent (PSGD) and explicitly characterize its regret as functions of time, the temporal variability in the model parameters as well as the strength of the auto-correlation network structure spanning the varied customer segments. Our regret analysis results not only demonstrate asymptotic optimality of the proposed policy but also show that for policy planning it is essential to incorporate available structural information as policies based on unshrunken models are highly sub-optimal in the aforementioned set-up.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/13/2017

Perishability of Data: Dynamic Pricing under Varying-Coefficient Models

We consider a firm that sells a large number of products to its customer...
research
11/21/2020

Self-adapting Robustness in Demand Learning

We study dynamic pricing over a finite number of periods in the presence...
research
09/24/2016

Dynamic Pricing in High-dimensions

We study the pricing problem faced by a firm that sells a large number o...
research
09/27/2020

Privacy-Preserving Dynamic Personalized Pricing with Demand Learning

The prevalence of e-commerce has made detailed customers' personal infor...
research
02/24/2023

Personalized Pricing with Invalid Instrumental Variables: Identification, Estimation, and Policy Learning

Pricing based on individual customer characteristics is widely used to m...
research
01/27/2022

Towards Agnostic Feature-based Dynamic Pricing: Linear Policies vs Linear Valuation with Unknown Noise

In feature-based dynamic pricing, a seller sets appropriate prices for a...
research
11/18/2021

Loss Functions for Discrete Contextual Pricing with Observational Data

We study a pricing setting where each customer is offered a contextualiz...

Please sign up or login with your details

Forgot password? Click here to reset