Deep Learning for Solving and Estimating Dynamic Models in Economics and Finance
Simon Scheidegger

TL;DR
This paper introduces deep learning techniques for solving and estimating complex high-dimensional dynamic models in economics and finance, addressing the curse of dimensionality.
Contribution
It presents four methodologies integrating neural networks and Gaussian processes for efficient modeling, estimation, and analysis of sophisticated economic and financial systems.
Findings
Deep equilibrium nets embed equilibrium conditions into neural networks.
Physics-informed neural networks approximate PDEs in continuous-time models.
Gaussian processes quantify uncertainty in structural model approximations.
Abstract
This script offers an implementation-oriented introduction to deep learning methods for solving and estimating high-dimensional dynamic stochastic models in economics and finance. Its starting point is the curse of dimensionality: heterogeneous-agent economies, overlapping-generations models with aggregate risk, continuous-time models with occasionally binding constraints, climate-economy models, and macro-finance environments with many assets and frictions generate state and parameter spaces that strain classical tensor-product grid methods. The exposition is organized around four complementary methodologies. Deep Equilibrium Nets embed discrete-time equilibrium conditions into neural-network loss functions. Physics-Informed Neural Networks approximate continuous-time Hamilton--Jacobi--Bellman, Kolmogorov forward, and related partial differential equations. Deep surrogate models…
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