A machine learning framework for exploring the relationship between supply chain management best practices and agility, risk management, and performance

This study provides a comprehensive analysis of supply chain management practices based on survey responses from a sample of enterprises. Through descriptive statistics, hypothesis testing, predictive modeling, advanced analytics techniques such as classification, clustering, and association ru...

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Main Authors: Tyler Ward, Sam Khoury, Selva Staub, Kouroush Jenab
Format: Article
Language:English
Published: Growing Science 2025-01-01
Series:Management Science Letters
Online Access:http://www.growingscience.com/msl/Vol15/msl_2024_29.pdf
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author Tyler Ward
Sam Khoury
Selva Staub
Kouroush Jenab
author_facet Tyler Ward
Sam Khoury
Selva Staub
Kouroush Jenab
author_sort Tyler Ward
collection DOAJ
description This study provides a comprehensive analysis of supply chain management practices based on survey responses from a sample of enterprises. Through descriptive statistics, hypothesis testing, predictive modeling, advanced analytics techniques such as classification, clustering, and association rule mining, the research offers valuable insights into key areas of collaboration, quality management, technology adoption, agility, risk management, and customer responsiveness within supply chains. The findings highlight the importance of strategic integration, proactive problem-solving, customer-centric practices, and agility in meeting changing demands. The study also identifies distinct profiles of practice adoption and reveals intricate relationships between different supply chain practices. Overall, the research contributes to a deeper understanding of supply chain dynamics and offers actionable insights for improving operational performance and strategic decision-making.
format Article
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institution Kabale University
issn 1923-9335
1923-9343
language English
publishDate 2025-01-01
publisher Growing Science
record_format Article
series Management Science Letters
spelling doaj-art-b6a11b040c0343f6807de074554c684a2025-02-07T06:46:00ZengGrowing ScienceManagement Science Letters1923-93351923-93432025-01-0115422323810.5267/j.msl.2024.8.001A machine learning framework for exploring the relationship between supply chain management best practices and agility, risk management, and performance Tyler WardSam KhourySelva Staub Kouroush Jenab This study provides a comprehensive analysis of supply chain management practices based on survey responses from a sample of enterprises. Through descriptive statistics, hypothesis testing, predictive modeling, advanced analytics techniques such as classification, clustering, and association rule mining, the research offers valuable insights into key areas of collaboration, quality management, technology adoption, agility, risk management, and customer responsiveness within supply chains. The findings highlight the importance of strategic integration, proactive problem-solving, customer-centric practices, and agility in meeting changing demands. The study also identifies distinct profiles of practice adoption and reveals intricate relationships between different supply chain practices. Overall, the research contributes to a deeper understanding of supply chain dynamics and offers actionable insights for improving operational performance and strategic decision-making.http://www.growingscience.com/msl/Vol15/msl_2024_29.pdf
spellingShingle Tyler Ward
Sam Khoury
Selva Staub
Kouroush Jenab
A machine learning framework for exploring the relationship between supply chain management best practices and agility, risk management, and performance
Management Science Letters
title A machine learning framework for exploring the relationship between supply chain management best practices and agility, risk management, and performance
title_full A machine learning framework for exploring the relationship between supply chain management best practices and agility, risk management, and performance
title_fullStr A machine learning framework for exploring the relationship between supply chain management best practices and agility, risk management, and performance
title_full_unstemmed A machine learning framework for exploring the relationship between supply chain management best practices and agility, risk management, and performance
title_short A machine learning framework for exploring the relationship between supply chain management best practices and agility, risk management, and performance
title_sort machine learning framework for exploring the relationship between supply chain management best practices and agility risk management and performance
url http://www.growingscience.com/msl/Vol15/msl_2024_29.pdf
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