Advancing sustainable operational excellence: a machine learning approach for emerging economies

Rafael Jose Henriquez Machado (Primer Autor), Andres Felipe Muñoz Villamizar (Autor Corresponsal), Javier Santos García (Tercer Autor)

Producción científica: Contribución a una revistaArtículorevisión exhaustiva

Resumen

Purpose: This research introduces a novel methodology that leverages machine learning (ML), specifically the k-means clustering algorithm, to assess operational excellence (OE) maturity levels in companies within emerging economies. The study aims to identify and classify stages of OE maturity to support sustainable development initiatives. Design/methodology/approach: The study draws on data from a comprehensive survey of 106 companies spanning various sectors in Latin America, capturing qualitative insights on OE practices. The k-means algorithm was applied to classify companies into distinct OE maturity stages. This innovative approach provides a novel perspective on sustainable business growth and management in emerging markets. Findings: The analysis highlights considerable variation in OE maturity levels among the surveyed companies, with larger firms generally exhibiting higher maturity. The k-means clustering classified companies into five maturity stages, ranging from “Basic” to “Champion.” This classification provides a framework for understanding the evolution of OE practices and their influence on sustainable development. Research limitations/implications: The study’s focus on Latin America may limit its generalizability to other regions. Additionally, the use of qualitative survey data introduces subjectivity, which could influence the clustering outcomes. Practical implications: The findings emphasize the role of OE in advancing sustainable business practices. By categorizing companies based on OE maturity, decision-makers can tailor strategies to enhance sustainability and operational efficiency, particularly in emerging economies. Originality/value: The study introduces a machine learning-based approach to assess OE maturity in emerging markets, contributing to the discourse on sustainable development and operational excellence. This research offers practical insights for organizations seeking to improve their OE practices and achieve sustainability goals.

Idioma originalInglés
Páginas (desde-hasta)1-24
Número de páginas24
PublicaciónInternational Journal of Productivity and Performance Management
VolumenNA
DOI
EstadoPublicada - 7 abr. 2025

Focos Estratégicos

  • Bioeconomía, Energías renovables y Sostenibilidad (BEES)​

Clasificación de Articulo

  • Artículo completo de investigación

Indexación Internacional (Artículo)

  • ISI Y SCOPUS

Scopus-Q Quartil

  • Q1

ISI- Q Quartil

  • Q2

Categoría Publindex

  • A1

Huella

Profundice en los temas de investigación de 'Advancing sustainable operational excellence: a machine learning approach for emerging economies'. En conjunto forman una huella única.

Citar esto