Markets for Models
Theoretical Economics
2025-10-10 v3 Machine Learning
Abstract
Motivated by the prevalence of prediction problems in the economy, we study markets in which firms sell models to a consumer to help improve their prediction. Firms decide whether to enter, choose models to train on their data, and set prices. The consumer can purchase multiple models and use a weighted average of the models bought. Market outcomes can be expressed in terms of the \emph{bias-variance decompositions} of the models that firms sell. We give conditions when symmetric firms will choose different modeling techniques, e.g., each using only a subset of available covariates. We also show firms can choose inefficiently biased models or inefficiently costly models to deter entry by competitors.
Cite
@article{arxiv.2503.02946,
title = {Markets for Models},
author = {Krishna Dasaratha and Juan Ortner and Chengyang Zhu},
journal= {arXiv preprint arXiv:2503.02946},
year = {2025}
}