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Localized Neural Network Modelling of Time Series: A Case Study on US Monetary Policy

Authors :
Gao, Jiti
Liu, Fei
Peng, Bin
Yang, Yanrong
Publication Year :
2023

Abstract

In this paper, we investigate a semiparametric regression model under the context of treatment effects via a localized neural network (LNN) approach. Due to a vast number of parameters involved, we reduce the number of effective parameters by (i) exploring the use of identification restrictions; and (ii) adopting a variable selection method based on the group-LASSO technique. Subsequently, we derive the corresponding estimation theory and propose a dependent wild bootstrap procedure to construct valid inferences accounting for the dependence of data. Finally, we validate our theoretical findings through extensive numerical studies. In an empirical study, we revisit the impacts of a tightening monetary policy action on a variety of economic variables, including short-/long-term interest rate, inflation, unemployment rate, industrial price and equity return via the newly proposed framework using a monthly dataset of the US.

Subjects

Subjects :
Economics - Econometrics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.05593
Document Type :
Working Paper