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http://krishi.icar.gov.in/jspui/handle/123456789/5838
Title: | A feature selection enabled hybrid-bagging algorithm for credit risk evaluation |
Other Titles: | Not Available |
Authors: | Shashi Dahiya S.S Handa N.P Singh |
ICAR Data Use Licennce: | http://krishi.icar.gov.in/PDF/ICAR_Data_Use_Licence.pdf |
Author's Affiliated institute: | ICAR::Indian Agricultural Statistics Research Institute Manav Rachna International University, Faridabad, India Management Development Institute |
Published/ Complete Date: | 2017-12-04 |
Project Code: | Not Available |
Keywords: | Bagging Credit risk Ensemble Feature selection Hybrid methods |
Publisher: | Wiley |
Citation: | Not Available |
Series/Report no.: | Not Available; |
Abstract/Description: | Hybrid models based on feature selection and machine learning techniques have significantly enhanced the accuracy of standalone models. This paper presents a feature selection‐based hybrid‐bagging algorithm (FS‐HB) for improved credit risk evaluation. The 2 feature selection methods chi‐square and principal component analysis were used for ranking and selecting the important features from the datasets. The classifiers were built on 5 training and test data partitions of the input data set. The performance of the hybrid algorithm was compared with that of the standalone classifiers: feature selection‐based classifiers and bagging. The hybrid FS‐HB algorithm performed best for qualitative dataset with less features and tree‐based unstable base classifier. Its performance on numeric data was also better than other standalone classifiers, whereas comparable to bagging with only selected features. Its performance was found better on 70:30 data partition and the type II error, which is very significant in risk evaluation was also reduced significantly. The improved performance of FS‐HB is attributed to the important features used for developing the classifier thereby reducing the complexity of the algorithm and the use of ensemble methodology, which added to the classical bias variance trade‐off and performed better than standalone classifiers. |
Description: | Not Available |
ISSN: | Not Available |
Type(s) of content: | Research Paper |
Sponsors: | Not Available |
Language: | English |
Name of Journal: | Expert Systems |
NAAS Rating: | Not Available |
Volume No.: | 34(6) |
Page Number: | 1-11 |
Name of the Division/Regional Station: | Division of Computer Applications |
Source, DOI or any other URL: | http://10.1111/exsy.12217 http://onlinelibrary.wiley.com/doi/10.1111/exsy.12217/full |
URI: | http://krishi.icar.gov.in/jspui/handle/123456789/5838 |
Appears in Collections: | AEdu-IASRI-Publication |
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