Statistical Inference for Fisher Market Equilibrium
Luofeng Liao, Yuan Gao, Christian Kroer

TL;DR
This paper develops a statistical inference framework for Fisher market equilibria, enabling estimation of key quantities like utilities and welfare from observed market data with strong guarantees.
Contribution
It introduces a novel infinite-dimensional Fisher market model and derives statistical properties for equilibrium quantities based on finite samples.
Findings
Observed market quantities converge to true long-run values with statistical guarantees
Finite sample bounds and confidence intervals are established for equilibrium estimates
Framework applies to revenue inference in quasilinear Fisher markets
Abstract
Statistical inference under market equilibrium effects has attracted increasing attention recently. In this paper we focus on the specific case of linear Fisher markets. They have been widely use in fair resource allocation of food/blood donations and budget management in large-scale Internet ad auctions. In resource allocation, it is crucial to quantify the variability of the resource received by the agents (such as blood banks and food banks) in addition to fairness and efficiency properties of the systems. For ad auction markets, it is important to establish statistical properties of the platform's revenues in addition to their expected values. To this end, we propose a statistical framework based on the concept of infinite-dimensional Fisher markets. In our framework, we observe a market formed by a finite number of items sampled from an underlying distribution (the "observed…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Auction Theory and Applications · Advanced Bandit Algorithms Research
