Deep Learning Macroeconomics
Rafael R. S. Guimaraes

TL;DR
This paper demonstrates that deep learning techniques can effectively address macroeconomic challenges by improving transfer learning, classifying business cycles, estimating output gaps, and mapping variables across different frequencies and regions.
Contribution
It introduces a systematic deep learning-based transfer learning strategy for macroeconomics, enhancing analysis of macroeconomic data and relationships.
Findings
Deep learning accurately classifies US business cycles.
Transfer learning identifies cycles in Brazilian and European data.
Models effectively map low-frequency variables from high-frequency data.
Abstract
Limited datasets and complex nonlinear relationships are among the challenges that may emerge when applying econometrics to macroeconomic problems. This research proposes deep learning as an approach to transfer learning in the former case and to map relationships between variables in the latter case. Although macroeconomists already apply transfer learning when assuming a given a priori distribution in a Bayesian context, estimating a structural VAR with signal restriction and calibrating parameters based on results observed in other models, to name a few examples, advance in a more systematic transfer learning strategy in applied macroeconomics is the innovation we are introducing. We explore the proposed strategy empirically, showing that data from different but related domains, a type of transfer learning, helps identify the business cycle phases when there is no business cycle…
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Taxonomy
TopicsMonetary Policy and Economic Impact · Market Dynamics and Volatility · Stock Market Forecasting Methods
