This paper proposes a genetic-based hybrid approach to predict the possibility of corporate failure. We use Genetic Algorithm (GA) to select the critical variables set and optimise the weight of each classifier for integrating the best features of several classification approaches (such as discriminant analysis, logistic regression and neural networks) in order to enhance prediction results. GA with nonlinear searching capabilities extracts more critical feature variables if compared with the Stepwise Method. This means that the undesirable variables for classification models will be cleaned out by GA. In addition, our experimental results show that this hybrid approach obtains better prediction performance than when using a single approach...
This paper is concerned with the use of a genetic algorithm to select financial ratios for corporate...
In view of the failure of many high profile firms, bankruptcy prediction has become a topic of high ...
This paper presents a novel hybrid intelligent system in the framework of soft computing to predict ...
This study examines the potential of a neural network (NN) model, whose inputs and structure are aut...
Corporate failure is one of the most popular prediction problems because early identification of at-...
This paper presents novel neural network-genetic programming hybrids to predict the failure of dotco...
Discriminant analysis and logit analysis are traditionally used to predict company bankruptcies. Mor...
In this research the bankruptcy of companies has been surveyed through the genetic algorithm. To do ...
Business failure prediction is a topic of great importance for a lot of people (shareholders, banks,...
Summarization: The paper demonstrates the efficient use of hybrid intelligent systems for solving th...
The high social costs associated with bankruptcy have spurred searches for better theoretical unders...
The high social costs associated with bankruptcy have spurred searches for better theoretical unders...
Measuring and managing the financial sustainability of the borrowers is crucial to financial institu...
This study investigated whether two artificial neural networks (ANNs), multilayer perceptron (MLP) a...
AbstractIn this paper, we compare some traditional statistical methods for predicting financial dist...
This paper is concerned with the use of a genetic algorithm to select financial ratios for corporate...
In view of the failure of many high profile firms, bankruptcy prediction has become a topic of high ...
This paper presents a novel hybrid intelligent system in the framework of soft computing to predict ...
This study examines the potential of a neural network (NN) model, whose inputs and structure are aut...
Corporate failure is one of the most popular prediction problems because early identification of at-...
This paper presents novel neural network-genetic programming hybrids to predict the failure of dotco...
Discriminant analysis and logit analysis are traditionally used to predict company bankruptcies. Mor...
In this research the bankruptcy of companies has been surveyed through the genetic algorithm. To do ...
Business failure prediction is a topic of great importance for a lot of people (shareholders, banks,...
Summarization: The paper demonstrates the efficient use of hybrid intelligent systems for solving th...
The high social costs associated with bankruptcy have spurred searches for better theoretical unders...
The high social costs associated with bankruptcy have spurred searches for better theoretical unders...
Measuring and managing the financial sustainability of the borrowers is crucial to financial institu...
This study investigated whether two artificial neural networks (ANNs), multilayer perceptron (MLP) a...
AbstractIn this paper, we compare some traditional statistical methods for predicting financial dist...
This paper is concerned with the use of a genetic algorithm to select financial ratios for corporate...
In view of the failure of many high profile firms, bankruptcy prediction has become a topic of high ...
This paper presents a novel hybrid intelligent system in the framework of soft computing to predict ...