A Note on Estimation of Empirical Models for Margins of Exports with Unknown Non-linear Functional Forms: A Kernel-Regularized Least Squares (KRLS) Approach

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@article{362c54e31b7141b89a46a42da7808746,
title = "A Note on Estimation of Empirical Models for Margins of Exports with Unknown Non-linear Functional Forms: A Kernel-Regularized Least Squares (KRLS) Approach",
abstract = "Empirical models for intensive or extensive margins of trade that relate measures of exports to firm characteristics are usually estimated by variants of (generalized) linear models. Usually, the firm characteristics that explain these export margins enter the empirical model in linear form, sometimes augmented by quadratic terms or higher order polynomials, or interaction terms, to take care or test for non-linear relationships. If these non-linear relationships do matter and if they are ignored in the specification of the empirical model this leads to biased results. Researchers, however, can never be sure that all possible non-linear relationships are taken care of in their chosen specifications. This note uses for the first time the kernel-regularized least squares (KRLS) estimator to deal with this issue in empirical models for margins of exports. KRLS is a machine learning method that learns the functional form from the data. Empirical examples show that it is easy to apply and works well. Therefore, it should be considered as a useful addition to the box of tools of empirical trade economists.",
keywords = "empirical models, Kernel-Regularized Least Squares, KRLS, margins of exports, non-linear relationships, Economics",
author = "Joachim Wagner",
note = "Publisher Copyright: {\textcopyright} 2025 the author(s), published by De Gruyter, Berlin/Boston.",
year = "2025",
doi = "10.1515/jbnst-2024-0083",
language = "English",
volume = "2025",
journal = "Jahrbucher fur Nationalokonomie und Statistik",
issn = "0021-4027",
publisher = "Walter de Gruyter GmbH",

}

RIS

TY - JOUR

T1 - A Note on Estimation of Empirical Models for Margins of Exports with Unknown Non-linear Functional Forms

T2 - A Kernel-Regularized Least Squares (KRLS) Approach

AU - Wagner, Joachim

N1 - Publisher Copyright: © 2025 the author(s), published by De Gruyter, Berlin/Boston.

PY - 2025

Y1 - 2025

N2 - Empirical models for intensive or extensive margins of trade that relate measures of exports to firm characteristics are usually estimated by variants of (generalized) linear models. Usually, the firm characteristics that explain these export margins enter the empirical model in linear form, sometimes augmented by quadratic terms or higher order polynomials, or interaction terms, to take care or test for non-linear relationships. If these non-linear relationships do matter and if they are ignored in the specification of the empirical model this leads to biased results. Researchers, however, can never be sure that all possible non-linear relationships are taken care of in their chosen specifications. This note uses for the first time the kernel-regularized least squares (KRLS) estimator to deal with this issue in empirical models for margins of exports. KRLS is a machine learning method that learns the functional form from the data. Empirical examples show that it is easy to apply and works well. Therefore, it should be considered as a useful addition to the box of tools of empirical trade economists.

AB - Empirical models for intensive or extensive margins of trade that relate measures of exports to firm characteristics are usually estimated by variants of (generalized) linear models. Usually, the firm characteristics that explain these export margins enter the empirical model in linear form, sometimes augmented by quadratic terms or higher order polynomials, or interaction terms, to take care or test for non-linear relationships. If these non-linear relationships do matter and if they are ignored in the specification of the empirical model this leads to biased results. Researchers, however, can never be sure that all possible non-linear relationships are taken care of in their chosen specifications. This note uses for the first time the kernel-regularized least squares (KRLS) estimator to deal with this issue in empirical models for margins of exports. KRLS is a machine learning method that learns the functional form from the data. Empirical examples show that it is easy to apply and works well. Therefore, it should be considered as a useful addition to the box of tools of empirical trade economists.

KW - empirical models

KW - Kernel-Regularized Least Squares

KW - KRLS

KW - margins of exports

KW - non-linear relationships

KW - Economics

UR - http://www.scopus.com/inward/record.url?scp=105006788489&partnerID=8YFLogxK

U2 - 10.1515/jbnst-2024-0083

DO - 10.1515/jbnst-2024-0083

M3 - Journal articles

AN - SCOPUS:105006788489

VL - 2025

JO - Jahrbucher fur Nationalokonomie und Statistik

JF - Jahrbucher fur Nationalokonomie und Statistik

SN - 0021-4027

ER -

DOI