Cargando…

An ensemble machine learning approach for forecasting credit risk of agricultural SMEs’ investments in agriculture 4.0 through supply chain finance

Credit risk imposes itself as a significant barrier of agriculture 4.0 investments in the supply chain finance (SCF) especially for Small and Medium-sized Enterprises. Therefore, it is important for financial service providers (FSPs) to differentiate between low- and high-quality SMEs to accurately...

Descripción completa

Detalles Bibliográficos
Autores principales: Belhadi, Amine, Kamble, Sachin S., Mani, Venkatesh, Benkhati, Imane, Touriki, Fatima Ezahra
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer US 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8576317/
https://www.ncbi.nlm.nih.gov/pubmed/34776573
http://dx.doi.org/10.1007/s10479-021-04366-9
_version_ 1784595850755833856
author Belhadi, Amine
Kamble, Sachin S.
Mani, Venkatesh
Benkhati, Imane
Touriki, Fatima Ezahra
author_facet Belhadi, Amine
Kamble, Sachin S.
Mani, Venkatesh
Benkhati, Imane
Touriki, Fatima Ezahra
author_sort Belhadi, Amine
collection PubMed
description Credit risk imposes itself as a significant barrier of agriculture 4.0 investments in the supply chain finance (SCF) especially for Small and Medium-sized Enterprises. Therefore, it is important for financial service providers (FSPs) to differentiate between low- and high-quality SMEs to accurately forecast the credit risk. This study proposes a novel hybrid ensemble machine learning approach to forecast the credit risk associated with SMEs’ agriculture 4.0 investments in SCF. Two core approaches were used, i.e., Rotation Forest algorithm and Logit Boosting algorithm. Key variables influencing the credit risk of agriculture 4.0 investments in SMEs were identified and evaluated using data collected from 216 agricultural SMEs, 195 Leading Enterprises and 104 FSPs operating in African agriculture sector. Besides the classical measures of credit risk assessment without involving SCF, the findings indicate that current ratio, financial leverage, profit margin on sales and growth rate of the agricultural SME are the upmost important variables that SCF actors need to focus on, in order to accurately and optimistically forecast and alleviate credit risk. The output of our study provides useful guidelines for SMEs, as it highlights the conditions under which they would be seen as creditworthy by FSPs. On the other hand, this study encourages the wide application of SCF in financing agriculture 4.0 investments. Due to the model’s performance, credit risk forecasting accuracy is improved, which results in future savings and credit risk mitigation in agriculture 4.0 investments of SMEs in SCF. GRAPHIC ABSTRACT: [Image: see text]
format Online
Article
Text
id pubmed-8576317
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Springer US
record_format MEDLINE/PubMed
spelling pubmed-85763172021-11-09 An ensemble machine learning approach for forecasting credit risk of agricultural SMEs’ investments in agriculture 4.0 through supply chain finance Belhadi, Amine Kamble, Sachin S. Mani, Venkatesh Benkhati, Imane Touriki, Fatima Ezahra Ann Oper Res Original Research Credit risk imposes itself as a significant barrier of agriculture 4.0 investments in the supply chain finance (SCF) especially for Small and Medium-sized Enterprises. Therefore, it is important for financial service providers (FSPs) to differentiate between low- and high-quality SMEs to accurately forecast the credit risk. This study proposes a novel hybrid ensemble machine learning approach to forecast the credit risk associated with SMEs’ agriculture 4.0 investments in SCF. Two core approaches were used, i.e., Rotation Forest algorithm and Logit Boosting algorithm. Key variables influencing the credit risk of agriculture 4.0 investments in SMEs were identified and evaluated using data collected from 216 agricultural SMEs, 195 Leading Enterprises and 104 FSPs operating in African agriculture sector. Besides the classical measures of credit risk assessment without involving SCF, the findings indicate that current ratio, financial leverage, profit margin on sales and growth rate of the agricultural SME are the upmost important variables that SCF actors need to focus on, in order to accurately and optimistically forecast and alleviate credit risk. The output of our study provides useful guidelines for SMEs, as it highlights the conditions under which they would be seen as creditworthy by FSPs. On the other hand, this study encourages the wide application of SCF in financing agriculture 4.0 investments. Due to the model’s performance, credit risk forecasting accuracy is improved, which results in future savings and credit risk mitigation in agriculture 4.0 investments of SMEs in SCF. GRAPHIC ABSTRACT: [Image: see text] Springer US 2021-11-09 /pmc/articles/PMC8576317/ /pubmed/34776573 http://dx.doi.org/10.1007/s10479-021-04366-9 Text en © The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2021 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Original Research
Belhadi, Amine
Kamble, Sachin S.
Mani, Venkatesh
Benkhati, Imane
Touriki, Fatima Ezahra
An ensemble machine learning approach for forecasting credit risk of agricultural SMEs’ investments in agriculture 4.0 through supply chain finance
title An ensemble machine learning approach for forecasting credit risk of agricultural SMEs’ investments in agriculture 4.0 through supply chain finance
title_full An ensemble machine learning approach for forecasting credit risk of agricultural SMEs’ investments in agriculture 4.0 through supply chain finance
title_fullStr An ensemble machine learning approach for forecasting credit risk of agricultural SMEs’ investments in agriculture 4.0 through supply chain finance
title_full_unstemmed An ensemble machine learning approach for forecasting credit risk of agricultural SMEs’ investments in agriculture 4.0 through supply chain finance
title_short An ensemble machine learning approach for forecasting credit risk of agricultural SMEs’ investments in agriculture 4.0 through supply chain finance
title_sort ensemble machine learning approach for forecasting credit risk of agricultural smes’ investments in agriculture 4.0 through supply chain finance
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8576317/
https://www.ncbi.nlm.nih.gov/pubmed/34776573
http://dx.doi.org/10.1007/s10479-021-04366-9
work_keys_str_mv AT belhadiamine anensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance
AT kamblesachins anensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance
AT manivenkatesh anensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance
AT benkhatiimane anensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance
AT tourikifatimaezahra anensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance
AT belhadiamine ensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance
AT kamblesachins ensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance
AT manivenkatesh ensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance
AT benkhatiimane ensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance
AT tourikifatimaezahra ensemblemachinelearningapproachforforecastingcreditriskofagriculturalsmesinvestmentsinagriculture40throughsupplychainfinance