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Incremental learning strategies for credit cards fraud detection

Authors :
Lebichot, Bertrand
Paldino, Gian Marco
Siblini, Wissam
He-Guelton, Liyun
Oblé, Frédéric
Bontempi, Gianluca
Lebichot, Bertrand
Paldino, Gian Marco
Siblini, Wissam
He-Guelton, Liyun
Oblé, Frédéric
Bontempi, Gianluca
Source :
International journal of data science and analytics (Print), 12 (2
Publication Year :
2021

Abstract

Every second, thousands of credit or debit card transactions are processed in financial institutions. This extensive amount of data and its sequential nature make the problem of fraud detection particularly challenging. Most analytical strategies used in production are still based on batch learning, which is inadequate for two reasons: Models quickly become outdated and require sensitive data storage. The evolving nature of bank fraud enshrines the importance of having up-to-date models, and sensitive data retention makes companies vulnerable to infringements of the European General Data Protection Regulation. For these reasons, evaluating incremental learning strategies is recommended. This paper designs and evaluates incremental learning solutions for real-world fraud detection systems. The aim is to demonstrate the competitiveness of incremental learning over conventional batch approaches and, consequently, improve its accuracy employing ensemble learning, diversity and transfer learning. An experimental analysis is conducted on a full-scale case study including five months of e-commerce transactions and made available by our industry partner, Worldline.<br />SCOPUS: ar.j<br />info:eu-repo/semantics/published

Details

Database :
OAIster
Journal :
International journal of data science and analytics (Print), 12 (2
Notes :
1 full-text file(s): application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1281594977
Document Type :
Electronic Resource