Augmented Intelligence: Deep Learning, Machine Learning, Cognitive Computing, Educational Data Mining

Author(s): Makram Soui*, Nada Namani Zitouni, Salima Smiti, Kailash Kumar and Ahmad Aljabr

DOI: 10.2174/9789815040401122030007

Bankruptcy Prediction Model Using an Enhanced Boosting Classifier based on Sequential Backward Selector Technique

Pp: 100-130 (31)

Buy Chapters

* (Excluding Mailing and Handling)

  • * (Excluding Mailing and Handling)

Abstract

SHS investigation development is considered from the geographical and historical viewpoint. 3 stages are described. Within Stage 1 the work was carried out in the Department of the Institute of Chemical Physics in Chernogolovka where the scientific discovery had been made. At Stage 2 the interest to SHS arose in different cities and towns of the former USSR. Within Stage 3 SHS entered the international scene. Now SHS processes and products are being studied in more than 50 countries.

Abstract

Corporate bankruptcy prediction is one of the most crucial issues that impact the economic field, both on the local and global scale. The primary purpose of bankruptcy prediction is to investigate the economic state of any corporation and evaluate its distress level. Several machine learning and deep learning models have been used to predict financial failure. However, there is still no technique that resolves all the problems faced in this field. As such, we propose a machine learning model that constitutes a feature selection phase and a classification phase to predict corporate bankruptcy. This technique combines the sequential backward selector (SBS) with AdaBoost and JRip algorithms. The first phase uses SBS to select the best subset of features for the training. The second phase trains the AdaBoost with the JRip classifier to predict each target class. This model is evaluated using the highly imbalanced Polish bankruptcy dataset. The comparative analysis of our model with other techniques proves the efficiency in predicting corporate bankruptcy with an average of 91% of the AUC metric. 

We recommend

Favorable 70-S: Investigation Branching Arrow

Authors:Bentham Science Books