Cost-sensitive thresholding over a two-dimensional decision region for fraud detection
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Cost-sensitive thresholding over a two-dimensional decision region for fraud detectionData
2024-02Cita bibliográfica
J. C-Rella, R. Cao, y J. M. Vilar, «Cost-sensitive thresholding over a two-dimensional decision region for fraud detection», Information Sciences, vol. 657, p. 119956, feb. 2024, doi: 10.1016/j.ins.2023.119956
Resumo
[Absctract]: Credit fraud poses a challenging task in terms of detection. It can result in significant losses depending on the amount, so a cost-sensitive perspective needs to be taken. Classical approaches focus on estimating the probability of fraud and selecting a decision threshold, but they often fail to consider the transaction amount or account for the cumulative losses incurred within the sample. Consequently, these approaches can result in sub-optimal strategies. A new thresholding approach is proposed, based on the construction of a two-dimensional decision space with an estimated probability and the credit amount. This expansion allows more freedom for the optimal classification rule search, which is performed with a new algorithm. The proposed method generalizes previous approaches, so an improvement is consistently achieved. In addition, it allows a restricted search. This is shown in a study of two real data sets, comparing the results obtained by a wide range of classifiers.
Palabras chave
Cost-sensitive classification
Instance-dependent classification
Thresholding
Fraud detection
Risk analysis
Decision region
Instance-dependent classification
Thresholding
Fraud detection
Risk analysis
Decision region
Versión do editor
Dereitos
Atribución 3.0 España
ISSN
0020-0255
1872-6291
1872-6291