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Profit-based classification and feature selection with support vector machines: An application in credit scoring

Profit-based classification and feature selection with support vector machines: An application in credit scoring
Profit-based classification and feature selection with support vector machines: An application in credit scoring
Maldonado, Sebastián
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Bravo, Cristian
b22c4145-644e-40ee-85d8-431c59c3c71b
López, Julio
14edc460-148d-48b1-b415-6e2c1c511455
Perez, Juan
325c2263-5240-43b5-9bc4-0586393d15f8
Maldonado, Sebastián
9e5fb121-d905-4337-beb3-bba6f7da9ae2
Bravo, Cristian
b22c4145-644e-40ee-85d8-431c59c3c71b
López, Julio
14edc460-148d-48b1-b415-6e2c1c511455
Perez, Juan
325c2263-5240-43b5-9bc4-0586393d15f8

Maldonado, Sebastián, Bravo, Cristian, López, Julio and Perez, Juan (2017) Profit-based classification and feature selection with support vector machines: An application in credit scoring. 21st Conference of the International Federation of Operational Research Societies, Québec City, Canada. 17 - 21 Jul 2017.

Record type: Conference or Workshop Item (Other)

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More information

Published date: 17 July 2017
Venue - Dates: 21st Conference of the International Federation of Operational Research Societies, Québec City, Canada, 2017-07-17 - 2017-07-21

Identifiers

Local EPrints ID: 415327
URI: https://eprints.soton.ac.uk/id/eprint/415327
PURE UUID: ea477e8d-e0a4-4f20-bba8-f34c72da8c95
ORCID for Cristian Bravo: ORCID iD orcid.org/0000-0003-1579-1565

Catalogue record

Date deposited: 07 Nov 2017 17:30
Last modified: 14 Mar 2019 01:38

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Contributors

Author: Sebastián Maldonado
Author: Cristian Bravo ORCID iD
Author: Julio López
Author: Juan Perez

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