Online Learning for Equilibrium Pricing in Markets under Incomplete Information

03/21/2023
by   Devansh Jalota, et al.
0

The study of market equilibria is central to economic theory, particularly in efficiently allocating scarce resources. However, the computation of equilibrium prices at which the supply of goods matches their demand typically relies on having access to complete information on private attributes of agents, e.g., suppliers' cost functions, which are often unavailable in practice. Motivated by this practical consideration, we consider the problem of setting equilibrium prices in the incomplete information setting wherein a market operator seeks to satisfy the customer demand for a commodity by purchasing the required amount from competing suppliers with privately known cost functions unknown to the market operator. In this incomplete information setting, we consider the online learning problem of learning equilibrium prices over time while jointly optimizing three performance metrics – unmet demand, cost regret, and payment regret – pertinent in the context of equilibrium pricing over a horizon of T periods. We first consider the setting when suppliers' cost functions are fixed and develop algorithms that achieve a regret of O(loglog T) when the customer demand is constant over time, or O(√(T)loglog T) when the demand is variable over time. Next, we consider the setting when the suppliers' cost functions can vary over time and illustrate that no online algorithm can achieve sublinear regret on all three metrics when the market operator has no information about how the cost functions change over time. Thus, we consider an augmented setting wherein the operator has access to hints/contexts that, without revealing the complete specification of the cost functions, reflect the variation in the cost functions over time and propose an algorithm with sublinear regret in this augmented setting.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/27/2022

Online Learning in Fisher Markets with Unknown Agent Preferences

In a Fisher market, agents (users) spend a budget of (artificial) curren...
research
11/07/2020

No-regret Learning in Price Competitions under Consumer Reference Effects

We study long-run market stability for repeated price competitions betwe...
research
03/09/2021

Dynamic Pricing and Learning under the Bass Model

We consider a novel formulation of the dynamic pricing and demand learni...
research
11/02/2022

Learning to Price Supply Chain Contracts against a Learning Retailer

The rise of big data analytics has automated the decision-making of comp...
research
03/02/2023

Pricing in Ride-sharing Markets : Effects of network competition and autonomous vehicles

Autonomous vehicles will be an integral part of ride-sharing services in...
research
07/10/2022

Learning to Order for Inventory Systems with Lost Sales and Uncertain Supplies

We consider a stochastic lost-sales inventory control system with a lead...
research
03/31/2022

Online Learning for Traffic Routing under Unknown Preferences

In transportation networks, users typically choose routes in a decentral...

Please sign up or login with your details

Forgot password? Click here to reset