Adaboost ensemble classifiers for corporate default prediction

This study aims to show a substitute technique to corporate default prediction. Data mining techniques have been extensively applied for this task, due to its ability to notice non-linear relationships and show a good performance in presence of noisy information, as it usually happens in corporate d...

Full description

Saved in:
Bibliographic Details
Main Authors: Ramakrishnan, Suresh, Mirzaei, Maryam, Bekri, Mahmoud
Format: Article
Published: Maxwell Science Publications 2015
Subjects:
Online Access:http://eprints.utm.my/id/eprint/57696/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.utm.57696
record_format eprints
spelling my.utm.576962017-02-01T01:32:50Z http://eprints.utm.my/id/eprint/57696/ Adaboost ensemble classifiers for corporate default prediction Ramakrishnan, Suresh Mirzaei, Maryam Bekri, Mahmoud HD28 Management. Industrial Management This study aims to show a substitute technique to corporate default prediction. Data mining techniques have been extensively applied for this task, due to its ability to notice non-linear relationships and show a good performance in presence of noisy information, as it usually happens in corporate default prediction problems. In spite of several progressive methods that have widely been proposed, this area of research is not out dated and still needs further examination. In this study, the performance of multiple classifier systems is assessed in terms of their capability to appropriately classify default and non-default Malaysian firms listed in Bursa Malaysia. Multi-stage combination classifiers provided significant improvements over the single classifiers. In addition, Adaboost shows improvement in performance over the single classifiers. Maxwell Science Publications 2015 Article PeerReviewed Ramakrishnan, Suresh and Mirzaei, Maryam and Bekri, Mahmoud (2015) Adaboost ensemble classifiers for corporate default prediction. View at Publisher| Export | Download | Add to List | More... Research Journal of Applied Sciences, Engineering and Technology, 9 (3). pp. 224-230. ISSN 2040-7459
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic HD28 Management. Industrial Management
spellingShingle HD28 Management. Industrial Management
Ramakrishnan, Suresh
Mirzaei, Maryam
Bekri, Mahmoud
Adaboost ensemble classifiers for corporate default prediction
description This study aims to show a substitute technique to corporate default prediction. Data mining techniques have been extensively applied for this task, due to its ability to notice non-linear relationships and show a good performance in presence of noisy information, as it usually happens in corporate default prediction problems. In spite of several progressive methods that have widely been proposed, this area of research is not out dated and still needs further examination. In this study, the performance of multiple classifier systems is assessed in terms of their capability to appropriately classify default and non-default Malaysian firms listed in Bursa Malaysia. Multi-stage combination classifiers provided significant improvements over the single classifiers. In addition, Adaboost shows improvement in performance over the single classifiers.
format Article
author Ramakrishnan, Suresh
Mirzaei, Maryam
Bekri, Mahmoud
author_facet Ramakrishnan, Suresh
Mirzaei, Maryam
Bekri, Mahmoud
author_sort Ramakrishnan, Suresh
title Adaboost ensemble classifiers for corporate default prediction
title_short Adaboost ensemble classifiers for corporate default prediction
title_full Adaboost ensemble classifiers for corporate default prediction
title_fullStr Adaboost ensemble classifiers for corporate default prediction
title_full_unstemmed Adaboost ensemble classifiers for corporate default prediction
title_sort adaboost ensemble classifiers for corporate default prediction
publisher Maxwell Science Publications
publishDate 2015
url http://eprints.utm.my/id/eprint/57696/
_version_ 1643654053589155840
score 13.160551