Abstract: For the past 30 years the problem of bankruptcy prediction had been thoroughly studied. From the paper of Altman in 1968 to the recent papers in the '90s, the progress of prediction accuracy was not satisfactory. This paper investigates an alternative modeling of the system (firm), combining neural networks and fuzzy controllers, i.e. using neuro-fuzzy models. Classical modeling is based on mathematical models that describe the behavior of the firm under consideration. The main idea of fuzzy control, on the other hand, is to build a model of a human control expert who is capable of controlling the process without thinking in a mathematical model. This control expert specifies his control action in the form of linguistic rules...
Abstract Today, the intensity of industry competition has led many companies going bankrupt and pull...
This monograph is dedicated to the systematic presentation of main trends, technologies and methods ...
International audienceThe use of neural networks in finance began by the end of the 1980s and by the...
Bankruptcy filings are as high today as ever. calling into question the efficacy of existing bankrup...
The purpose of this paper is to present a neuro-fuzzy approach of financial distress pre-warning mod...
Forecasting bankruptcy remains crucial, especially during this pandemic. Managers, financial institu...
Financial distress is a condition where a company has difficulty paying off its financial obligation...
A huge number of articles and papers devoted to the study of bankruptcy prediction problems. Solving...
Creating an applicable and precise financial early warning model is highly desirable for decision ma...
An intensive research from academics and practitioners has been provided regarding models for bankru...
Bankruptcy prediction is an important classification problem for a business, and has become a major ...
The article attempts to answer the question whether or not the latest bankruptcy prediction techniqu...
The aim of this research was to model bankruptcy dependency of Lithuanian enterprises on their ...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
The model and the description of the numerical assessment of uncertain (fuzzy) controls in the imple...
Abstract Today, the intensity of industry competition has led many companies going bankrupt and pull...
This monograph is dedicated to the systematic presentation of main trends, technologies and methods ...
International audienceThe use of neural networks in finance began by the end of the 1980s and by the...
Bankruptcy filings are as high today as ever. calling into question the efficacy of existing bankrup...
The purpose of this paper is to present a neuro-fuzzy approach of financial distress pre-warning mod...
Forecasting bankruptcy remains crucial, especially during this pandemic. Managers, financial institu...
Financial distress is a condition where a company has difficulty paying off its financial obligation...
A huge number of articles and papers devoted to the study of bankruptcy prediction problems. Solving...
Creating an applicable and precise financial early warning model is highly desirable for decision ma...
An intensive research from academics and practitioners has been provided regarding models for bankru...
Bankruptcy prediction is an important classification problem for a business, and has become a major ...
The article attempts to answer the question whether or not the latest bankruptcy prediction techniqu...
The aim of this research was to model bankruptcy dependency of Lithuanian enterprises on their ...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
The model and the description of the numerical assessment of uncertain (fuzzy) controls in the imple...
Abstract Today, the intensity of industry competition has led many companies going bankrupt and pull...
This monograph is dedicated to the systematic presentation of main trends, technologies and methods ...
International audienceThe use of neural networks in finance began by the end of the 1980s and by the...