Firm characteristics of two-way traders: Evidence from Probit vs. Kernel-Regularized Least Squares regressions
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Date of first publication2025-05
Date of publication in PubData 2025-08-21
Language of the resource
English
Abstract
Firm characteristics in empirical models for margins of international trade usually enter these models in linear form. If non-linearities do matter and are ignored this leads to biased results. Researchers, however, can never be sure that all possible non-linear relationships are taken care of. A solution is provided by Kernel Regularized Least Squares (KRLS) that uses a machine learning approach to learn the functional form from the data. While in earlier applications the big picture revealed by standard empirical models and KRLS was identical this note presents a case where results from a standard approach and KRLS do differ considerably.
Keywords
Trading Firm; Firm Level Data; Kernel-Based Regularized Least Squares (KRLS)
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Number of the series contribution
433