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Deep Neural Network Estimation in Panel Data Models

Authors :
Chronopoulos, Ilias
Chrysikou, Katerina
Kapetanios, George
Mitchell, James
Raftapostolos, Aristeidis
Publication Year :
2023

Abstract

In this paper we study neural networks and their approximating power in panel data models. We provide asymptotic guarantees on deep feed-forward neural network estimation of the conditional mean, building on the work of Farrell et al. (2021), and explore latent patterns in the cross-section. We use the proposed estimators to forecast the progression of new COVID-19 cases across the G7 countries during the pandemic. We find significant forecasting gains over both linear panel and nonlinear time series models. Containment or lockdown policies, as instigated at the national-level by governments, are found to have out-of-sample predictive power for new COVID-19 cases. We illustrate how the use of partial derivatives can help open the "black-box" of neural networks and facilitate semi-structural analysis: school and workplace closures are found to have been effective policies at restricting the progression of the pandemic across the G7 countries. But our methods illustrate significant heterogeneity and time-variation in the effectiveness of specific containment policies.<br />Comment: 44 pages, 16 figures

Subjects

Subjects :
Economics - Econometrics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.19921
Document Type :
Working Paper