Credit rating risks have become the backbone of bank performance. They are the reflection of the current status of the bank and the milestone for future planning. A good credit assessment can better anticipate expected losses and will minimize unexpected losses from accumulating. Given advancements in technology as well as the big data available within banks about customers in an oil country such as Kuwait, a built-in model to help in-household credit scoring is at management’s decision. Compared with the current ‘black box’ rating models, we did a comparison between different classification models for two types of banking: conventional and Islamic. The classification models are as follows: Logistic Regression, Fine Decision Tree, Linear Support Vector Machines, Kernel Naïve Bayes, and RUSBoosted. Sufficiently, the last could be used to classify banks’ household customers and determine their default cases.

Albarrak, N., Alsanousi, H., Moulitsas, I., Filippone, S. (2022). Using Big Data to Compare Classification Models for Household Credit Rating in Kuwait. In Lecture Notes in Networks and Systems (pp.609-618). Springer Science and Business Media Deutschland GmbH [10.1007/978-981-16-1781-2_54].

Using Big Data to Compare Classification Models for Household Credit Rating in Kuwait

Filippone S.
2022-01-01

Abstract

Credit rating risks have become the backbone of bank performance. They are the reflection of the current status of the bank and the milestone for future planning. A good credit assessment can better anticipate expected losses and will minimize unexpected losses from accumulating. Given advancements in technology as well as the big data available within banks about customers in an oil country such as Kuwait, a built-in model to help in-household credit scoring is at management’s decision. Compared with the current ‘black box’ rating models, we did a comparison between different classification models for two types of banking: conventional and Islamic. The classification models are as follows: Logistic Regression, Fine Decision Tree, Linear Support Vector Machines, Kernel Naïve Bayes, and RUSBoosted. Sufficiently, the last could be used to classify banks’ household customers and determine their default cases.
6th International Congress on Information and Communication Technology, ICICT 2021
London
2021
Rilevanza internazionale
2022
Settore ING-INF/05 - SISTEMI DI ELABORAZIONE DELLE INFORMAZIONI
English
Classification models
Conventional banking
Credit rating model
Credit risk
Fine decision tree
Household customers
Islamic banking
Kernel Naïve Bayes
Linear support vector machines
Logistic regression
Machine learning
RUSBoosted
Technology
Intervento a convegno
Albarrak, N., Alsanousi, H., Moulitsas, I., Filippone, S. (2022). Using Big Data to Compare Classification Models for Household Credit Rating in Kuwait. In Lecture Notes in Networks and Systems (pp.609-618). Springer Science and Business Media Deutschland GmbH [10.1007/978-981-16-1781-2_54].
Albarrak, N; Alsanousi, H; Moulitsas, I; Filippone, S
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/326003
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