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http://hdl.handle.net/11129/2216
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Title: | Credit Scoring Using Soft Computing Schemes: A Comparison between Support Vector Machines and Artificial Neural Networks |
Authors: | Nwulu, Nnamdi Oroja, Shola İlkan, Mustafa School of Computing And Technology |
Keywords: | Credit scoring Soft computing schemes Support Vector Machines Artificial Neural Networks |
Issue Date: | 2011 |
Publisher: | Springer Berlin Heidelberg |
Abstract: | The recent financial crisis that has devastated many nations of the world has made it imperative that nations upgrade their credit scoring methods. Although statistical methods have been the preferred method for decades, soft computing techniques are becoming increasingly popular due to their efficient and accurate nature and relative simplicity. In this paper a comparison is made between two prominent soft computing schemes namely Support Vector Machines and Artificial Neural Networks. Although a comparison can be made along various criteria, this study attempts to compare both techniques when applied to credit scoring in terms of accuracy, computational complexity and processing times. In order to assure meaningful comparisons, a real world dataset precisely the Australian Credit Scoring data set available online was used for this task. Experimental results obtained indicate that although both soft computing schemes are highly efficient, Artificial Neural Networks obtain slightly better results and in relatively shorter times. |
Description: | Due to copyright restrictions, this book chapter is only available via subscription. You may click URI (with DOI: Due to copyright restrictions, the access to the publisher version (published version) of this article is only available via subscription. You may click URI (with DOI: 10.1007/s10509-015-2482-5) and have access to this paper through the publisher web site or online databases, if your Library or institution has subscription to the related journal or publication. ) and have access to the Publisher Version of this article through the publisher web site or online databases, if your Library or institution has subscription to the related journal or publication. |
URI: | http://dx.doi.org/10.1007/978-3-642-22603-8_25 http://hdl.handle.net/11129/2216 |
ISBN: | 978-3-642-22603-8 978-3-642-22602-1 (print) |
Appears in Collections: | Book Chapters – SCT
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