The prediction model is the main factor affecting the performance of a knowledge-based system for bankruptcy prediction. Earlier studies on prediction modeling have focused on the building of a single best model using statistical and artificial intelligence techniques. However, since the mid-1980s, integration of multiple techniques (hybrid techniques) and, by extension, combinations of the outputs of several models (ensemble techniques) have, according to the experimental results, generally outperformed individual models. An ensemble is a technique that constructs a set of multiple models, combines their outputs, and produces one final prediction. The way in which the outputs of ensemble members are combined is one of the important issues ...
Bankruptcy is an important topic for a number of people (shareholders, banks, investors, suppliers,....
Bankruptcy prediction has been a topic of active research for business and corporate institutions in...
Of the methods used to build bankruptcy prediction models in the last twenty years, neural networks ...
Bankruptcies can have serious implications for regulators, investors and the economy due to increasi...
The ensemble consists of a single set of individually trained models, the predictions of which are c...
This paper presents an ensemble neural network using a small data set in the context of bankruptcy p...
In this paper, we investigate the performance of several systems based on ensemble of classifiers fo...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
Ensemble selection is one of the most studied topics in ensemble learning because a selected subset ...
The author of this article decided to investigate the efficiency of using classifier combination and...
An intensive research from academics and practitioners has been provided regarding models for bankru...
International audienceRecently, ensemble-based machine learning models have been widely used and hav...
The bankruptcy prediction research domain continues to evolve with many new different predictive mod...
Part 7: DecisionsInternational audienceIn the classification task, the ensemble of classifiers have ...
Over the last four decades, bankruptcy prediction has given rise to an extensive body of literature,...
Bankruptcy is an important topic for a number of people (shareholders, banks, investors, suppliers,....
Bankruptcy prediction has been a topic of active research for business and corporate institutions in...
Of the methods used to build bankruptcy prediction models in the last twenty years, neural networks ...
Bankruptcies can have serious implications for regulators, investors and the economy due to increasi...
The ensemble consists of a single set of individually trained models, the predictions of which are c...
This paper presents an ensemble neural network using a small data set in the context of bankruptcy p...
In this paper, we investigate the performance of several systems based on ensemble of classifiers fo...
Bankruptcy prediction is of great utility for all economic stakeholders. Therefore, diverse methods ...
Ensemble selection is one of the most studied topics in ensemble learning because a selected subset ...
The author of this article decided to investigate the efficiency of using classifier combination and...
An intensive research from academics and practitioners has been provided regarding models for bankru...
International audienceRecently, ensemble-based machine learning models have been widely used and hav...
The bankruptcy prediction research domain continues to evolve with many new different predictive mod...
Part 7: DecisionsInternational audienceIn the classification task, the ensemble of classifiers have ...
Over the last four decades, bankruptcy prediction has given rise to an extensive body of literature,...
Bankruptcy is an important topic for a number of people (shareholders, banks, investors, suppliers,....
Bankruptcy prediction has been a topic of active research for business and corporate institutions in...
Of the methods used to build bankruptcy prediction models in the last twenty years, neural networks ...