Robust decision-making under risk and ambiguity
Econometrics
2021-10-07 v4 Theoretical Economics
Abstract
Economists often estimate economic models on data and use the point estimates as a stand-in for the truth when studying the model's implications for optimal decision-making. This practice ignores model ambiguity, exposes the decision problem to misspecification, and ultimately leads to post-decision disappointment. Using statistical decision theory, we develop a framework to explore, evaluate, and optimize robust decision rules that explicitly account for estimation uncertainty. We show how to operationalize our analysis by studying robust decisions in a stochastic dynamic investment model in which a decision-maker directly accounts for uncertainty in the model's transition dynamics.
Cite
@article{arxiv.2104.12573,
title = {Robust decision-making under risk and ambiguity},
author = {Maximilian Blesch and Philipp Eisenhauer},
journal= {arXiv preprint arXiv:2104.12573},
year = {2021}
}