Assessment of Support Vector Machine performance for default prediction and credit rating

Author:

Amzile Karim1ORCID,Habachi Mohamed2ORCID

Affiliation:

1. Ph.D. Student, Department of Management Sciences, Faculty of Law, Economic and Social Sciences, Agdal, Mohammed V University in Rabat

2. Ph.D., Professor, Department of Management Sciences, Faculty of Law, Economic and Social Sciences, Agdal, Mohammed V University in Rabat

Abstract

Predicting the creditworthiness of bank customers is a major concern for banking institutions, as modeling the probability of default is a key focus of the Basel regulations. Practitioners propose different default modeling techniques such as linear discriminant analysis, logistic regression, Bayesian approach, and artificial intelligence techniques. The performance of the default prediction is evaluated by the Receiver Operating Characteristic (ROC) curve using three types of kernels, namely, the polynomial kernel, the linear kernel and the Gaussian kernel. To justify the performance of the model, the study compares the prediction of default by the support vector with the logistic regression using data from a portfolio of particular bank customers. The results of this study showed that the model based on the Support Vector Machine approach with the Radial Basis Function kernel, performs better in prediction, compared to the logistic regression model, with a value of the ROC curve equal to 98%, against 71.7% for the logistic regression model. Also, this paper presents the conception of a support vector machine-based rating tool designed to classify bank customers and determine their probability of default. This probability has been computed empirically and represents the proportion of defaulting customers in each class.

Publisher

LLC CPC Business Perspectives

Subject

Finance,Management of Technology and Innovation,Marketing,Organizational Behavior and Human Resource Management,Law

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