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arxiv:2211.04752

Bayesian Neural Networks for Macroeconomic Analysis

Published on Nov 9, 2022
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Abstract

Bayesian neural networks with mixture activation specifications and shrinkage priors are developed to handle macroeconomic data with small sample sizes and temporal dependence, outperforming other machine learning methods in density forecasting and capturing nonlinear relationships to financial shocks.

AI-generated summary

Macroeconomic data is characterized by a limited number of observations (small T), many time series (big K) but also by featuring temporal dependence. Neural networks, by contrast, are designed for datasets with millions of observations and covariates. In this paper, we develop Bayesian neural networks (BNNs) that are well-suited for handling datasets commonly used for macroeconomic analysis in policy institutions. Our approach avoids extensive specification searches through a novel mixture specification for the activation function that appropriately selects the form of nonlinearities. Shrinkage priors are used to prune the network and force irrelevant neurons to zero. To cope with heteroskedasticity, the BNN is augmented with a stochastic volatility model for the error term. We illustrate how the model can be used in a policy institution by first showing that our different BNNs produce precise density forecasts, typically better than those from other machine learning methods. Finally, we showcase how our model can be used to recover nonlinearities in the reaction of macroeconomic aggregates to financial shocks.

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