Evaluation of hybrid classification approaches: Case studies on credit datasets
No Thumbnail Available
Date
2018
Journal Title
Journal ISSN
Volume Title
Publisher
SPRINGER
Abstract
Hybrid classification approaches on credit domain are widely used to obtain valuable information about customer behaviours. Single classification algorithms such as neural networks, support vector machines and regression analysis have been used since years on related area. In this paper, we propose hybrid classification approaches, which try to combine several classifiers and ensemble learners to boost accuracy on classification results. We worked with two credit datasets, German dataset which is a public dataset and a Turkish Corporate Bank dataset. The goal of using such diverse datasets is to search for generalization ability of proposed model. Results show that feature selection plays a vital role on classification accuracy, hybrid approaches which shaped with ensemble learners outperform single classification techniques and hybrid approaches which consists SVM has better accuracy performance than other hybrid approaches.
Description
Keywords
Credit-risk, Feature selection, Hybrid-classifier
Turkish CoHE Thesis Center URL
Citation
WoS Q
Scopus Q
Source
Volume
10935
Issue
Start Page
72
End Page
86