Prediction and learning of exporting firms: a study of Colombia

Fil: Mannarino, Valentín. Universidad de San Andrés. Departamento de Economía; Argentina.

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Autor principal: Mannarino, Valentín
Otros Autores: Hallak, Juan Carlos
Formato: Tesis Tesis de maestría updatedVersion
Lenguaje:Inglés
Publicado: Universidad de San Andrés. Departamento de Economía 2026
Acceso en línea:https://repositorio.udesa.edu.ar/handle/10908/26296
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spelling I37-R143-10908-262962026-04-09T03:01:00Z Prediction and learning of exporting firms: a study of Colombia Mannarino, Valentín Hallak, Juan Carlos Sosa Escudero, Walter Fil: Mannarino, Valentín. Universidad de San Andrés. Departamento de Economía; Argentina. This thesis applies machine learning techniques to predict which manufacturing firms in Colombia are likely to become exporters, using data from the Encuesta Anual Manufacturera (EAM) and Encuesta de Desarrollo e Innovaci´on Tecnol´ogica (EDIT) for the period 2015–2019. The objective is to estimate each firm’s “distance to export” through a probability score learned from the characteristics of existing exporters. Among the different algorithms tested, Logit with LASSO regularization delivers the best predictive performance, correctly identifying nearly three out of four actual exporters. Building on these predictions, the study introduces an exporting score, a probability measure that ranks firms by their proximity to the export margin. This score captures heterogeneity among non-exporters, anticipates entry and exit dynamics, and highlights sectoral and geographic clusters of latent export potential. In addition, the analysis shows that a set of firm level characteristics consistently emerge as the most relevant predictors across models: importer status, firm size, and combined spillovers, complemented by operational variables such as value added, inventories, and quality certification. The exporting score also reveals a transition zone around a score of 0.55–0.58, which delineates the range where policy support can be most effective, either by activating firms close to exporting or by preventing the exit of current exporters. Beyond its analytical value, the score provides a practical input for policy design and evaluation, allowing export promotion agencies to target resources more efficiently, define eligibility thresholds, and even implement randomized or regression-discontinuity designs. These findings highlight the potential of predictive approaches to enhance export promotion under budget constraints, maximizing the impact of limited public resources on export growth and retention. 2026-04-08T18:13:24Z 2026-04-08T18:13:24Z 2025-12 Tesis info:eu-repo/semantics/masterThesis info:ar-repo/semantics/tesis de maestría info:eu-repo/semantics/updatedVersion https://repositorio.udesa.edu.ar/handle/10908/26296 eng info:eu-repo/semantics/openAccess https://creativecommons.org/licenses/by-nc-nd/4.0/ application/pdf application/pdf Universidad de San Andrés. Departamento de Economía
institution Universidad de San Andrés
institution_str I-37
repository_str R-143
collection Repositorio Digital - Universidad de San Andrés (UdeSa)
language Inglés
description Fil: Mannarino, Valentín. Universidad de San Andrés. Departamento de Economía; Argentina.
author2 Hallak, Juan Carlos
author_facet Hallak, Juan Carlos
Mannarino, Valentín
format Tesis
Tesis de maestría
Tesis de maestría
updatedVersion
author Mannarino, Valentín
spellingShingle Mannarino, Valentín
Prediction and learning of exporting firms: a study of Colombia
author_sort Mannarino, Valentín
title Prediction and learning of exporting firms: a study of Colombia
title_short Prediction and learning of exporting firms: a study of Colombia
title_full Prediction and learning of exporting firms: a study of Colombia
title_fullStr Prediction and learning of exporting firms: a study of Colombia
title_full_unstemmed Prediction and learning of exporting firms: a study of Colombia
title_sort prediction and learning of exporting firms: a study of colombia
publisher Universidad de San Andrés. Departamento de Economía
publishDate 2026
url https://repositorio.udesa.edu.ar/handle/10908/26296
work_keys_str_mv AT mannarinovalentin predictionandlearningofexportingfirmsastudyofcolombia
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