DEEP EQUILIBRIUM NETS
Marlon Azinovic,
Luca Gaegauf and
Simon Scheidegger
International Economic Review, 2022, vol. 63, issue 4, 1471-1525
Abstract:
We introduce deep equilibrium nets (DEQNs)—a deep learning‐based method to compute approximate functional rational expectations equilibria of economic models featuring a significant amount of heterogeneity, uncertainty, and occasionally binding constraints. DEQNs are neural networks trained in an unsupervised fashion to satisfy all equilibrium conditions along simulated paths of the economy. Since DEQNs approximate the equilibrium functions directly, simulating the economy is computationally cheap, and training data can be generated at virtually zero cost. We demonstrate that DEQNs can accurately solve economically relevant models by applying them to two challenging life‐cycle models and a Bewley‐style model with aggregate risk.
Date: 2022
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https://doi.org/10.1111/iere.12575
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Persistent link: https://EconPapers.repec.org/RePEc:wly:iecrev:v:63:y:2022:i:4:p:1471-1525
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