Scopus Indexed Publications

Paper Details


Title
Comparison of Different Machine Learning Algorithms for Detecting Bankruptcy
Author
Maria Sultana Keya, Himu Akter, Md. Atiqur Rahman, Md. Mahbobur Rahman, Md. Sabab Zulfiker, Minhaz Uddin Emon,
Email
maria15-1215@diu.edu.bd
Abstract
There has been severe experiments from academics and merchandisers concerning models for Predicting bankruptcy. The paper propounds an extensive rethink of work done during 5 years in the petition of intellectual strategy to accomplish bankruptcy prediction problems. Several machine learning directions are being used in this research paper for Predicting bankruptcy. Some algorithms: AdaBoost, Decision tree, J48, Bagging, Random Forest are used in this paper. By traditional models, machine learning models offer enhancing bankruptcy prediction accuracy. Different types of models are tested using several evaluation metrics. The five years Bagging accuracy range is 95% within 97% among another model. Here include kfold cross-validation(k=10) to measure our accuracy. Bagging accuracy is high in this paper. Confusion matrix is used to recount the perfection of a classification model that gives true values for knowing.

Keywords
Machine Learning , prediction , bankruptcy , accuracy
Journal or Conference Name
2021 6th International Conference on Inventive Computation Technologies (ICICT)
Publication Year
2021
Indexing
scopus