Supply chain finance credit risk assessment using support vector machine–based ensemble improved with noise elimination

Recently, support vector machines, a supervised learning algorithm, have been widely used in the scope of credit risk management. However, noise may increase the complexity of the algorithm building and destroy the performance of classifier. In our work, we propose an ensemble support vector machine...

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Main Authors: Ying Liu, Lihua Huang
Format: Article
Language:English
Published: SAGE Publishing 2020-01-01
Series:International Journal of Distributed Sensor Networks
Online Access:https://doi.org/10.1177/1550147720903631
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spelling doaj-71b7b0e91ebe4b0ea901ece3b9c46f982020-11-25T03:51:43ZengSAGE PublishingInternational Journal of Distributed Sensor Networks1550-14772020-01-011610.1177/1550147720903631Supply chain finance credit risk assessment using support vector machine–based ensemble improved with noise eliminationYing Liu0Lihua Huang1School of Management Science and Information Engineering, Jilin University of Finance and Economics, Changchun, ChinaNortheast Institute of Geography and Agroecology, Chinese Academy of Sciences, Changchun, ChinaRecently, support vector machines, a supervised learning algorithm, have been widely used in the scope of credit risk management. However, noise may increase the complexity of the algorithm building and destroy the performance of classifier. In our work, we propose an ensemble support vector machine model to solve the risk assessment of supply chain finance, combined with reducing noises method. The main characteristics of this approach include that (1) a novel noise filtering scheme that avoids the noisy examples based on fuzzy clustering and principal component analysis algorithm is proposed to remove both attribute noise and class noise to achieve an optimal clean set, and (2) support vector machine classifiers, based on the improved particle swarm optimization algorithm, are seen as component classifiers. Then, we obtained the final classification results by combining finally individual prediction through AdaBoosting algorithm on the new sample set. Some experiments are applied on supply chain financial analysis of China’s listed companies. Results indicate that the credit assessment accuracy can be increased by applying this approach.https://doi.org/10.1177/1550147720903631
collection DOAJ
language English
format Article
sources DOAJ
author Ying Liu
Lihua Huang
spellingShingle Ying Liu
Lihua Huang
Supply chain finance credit risk assessment using support vector machine–based ensemble improved with noise elimination
International Journal of Distributed Sensor Networks
author_facet Ying Liu
Lihua Huang
author_sort Ying Liu
title Supply chain finance credit risk assessment using support vector machine–based ensemble improved with noise elimination
title_short Supply chain finance credit risk assessment using support vector machine–based ensemble improved with noise elimination
title_full Supply chain finance credit risk assessment using support vector machine–based ensemble improved with noise elimination
title_fullStr Supply chain finance credit risk assessment using support vector machine–based ensemble improved with noise elimination
title_full_unstemmed Supply chain finance credit risk assessment using support vector machine–based ensemble improved with noise elimination
title_sort supply chain finance credit risk assessment using support vector machine–based ensemble improved with noise elimination
publisher SAGE Publishing
series International Journal of Distributed Sensor Networks
issn 1550-1477
publishDate 2020-01-01
description Recently, support vector machines, a supervised learning algorithm, have been widely used in the scope of credit risk management. However, noise may increase the complexity of the algorithm building and destroy the performance of classifier. In our work, we propose an ensemble support vector machine model to solve the risk assessment of supply chain finance, combined with reducing noises method. The main characteristics of this approach include that (1) a novel noise filtering scheme that avoids the noisy examples based on fuzzy clustering and principal component analysis algorithm is proposed to remove both attribute noise and class noise to achieve an optimal clean set, and (2) support vector machine classifiers, based on the improved particle swarm optimization algorithm, are seen as component classifiers. Then, we obtained the final classification results by combining finally individual prediction through AdaBoosting algorithm on the new sample set. Some experiments are applied on supply chain financial analysis of China’s listed companies. Results indicate that the credit assessment accuracy can be increased by applying this approach.
url https://doi.org/10.1177/1550147720903631
work_keys_str_mv AT yingliu supplychainfinancecreditriskassessmentusingsupportvectormachinebasedensembleimprovedwithnoiseelimination
AT lihuahuang supplychainfinancecreditriskassessmentusingsupportvectormachinebasedensembleimprovedwithnoiseelimination
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