A neural network model that processes input data consisting of financial ratios is developed to predict the financial health of thrift institutions. The network\u27s ability to discriminate between healthy and failed institutions is compared to a traditional statistical model. The differences and similarities in the two modelling approaches are discussed. The neural network, which uses the same financial data, requires fewer assumptions, achieves a higher degree of prediction accuracy, and is more robust
The purpose of the study described in this paper was to shed light on the need for alternative metho...
The purpose of this project is threefold: firstly, to make an overview of what artificial neural net...
Many researchers are interesting in applying the neural networks methods to financial data. In fact ...
Summary The current paper aims to predict bank insolvency before the bankruptcy using neural network...
A neural network is a system of hardware and/or software patterned after the operation of ...
This paper presents a prognosis of financial distress of Tunisian firms. For the purpose, we empiric...
This article looks at the ability of a relatively new technique, hybrid artificial neural networks (...
International audienceThe use of neural networks in finance began by the end of the 1980s and by the...
This Paper introduces a neural-net approach to perform discriminant analysis in business research. A...
Traditionally, credit scoring aimed at distinguishing good payers from bad payers at the time of the...
© 2019, Institute of Advanced Scientific Research, Inc.. All rights reserved. This article solves th...
One of the most significant threats to the economy of a nation is the bankruptcy of its banks. This ...
International audienceThis research compares the accuracy of two approaches: traditional statistical...
Abstract Predicting corporate failure or bankruptcy is one of the most important prob-lems facing bu...
Traditionally, customer credit scoring aimed at distinguishing good payers from bad payers at the ti...
The purpose of the study described in this paper was to shed light on the need for alternative metho...
The purpose of this project is threefold: firstly, to make an overview of what artificial neural net...
Many researchers are interesting in applying the neural networks methods to financial data. In fact ...
Summary The current paper aims to predict bank insolvency before the bankruptcy using neural network...
A neural network is a system of hardware and/or software patterned after the operation of ...
This paper presents a prognosis of financial distress of Tunisian firms. For the purpose, we empiric...
This article looks at the ability of a relatively new technique, hybrid artificial neural networks (...
International audienceThe use of neural networks in finance began by the end of the 1980s and by the...
This Paper introduces a neural-net approach to perform discriminant analysis in business research. A...
Traditionally, credit scoring aimed at distinguishing good payers from bad payers at the time of the...
© 2019, Institute of Advanced Scientific Research, Inc.. All rights reserved. This article solves th...
One of the most significant threats to the economy of a nation is the bankruptcy of its banks. This ...
International audienceThis research compares the accuracy of two approaches: traditional statistical...
Abstract Predicting corporate failure or bankruptcy is one of the most important prob-lems facing bu...
Traditionally, customer credit scoring aimed at distinguishing good payers from bad payers at the ti...
The purpose of the study described in this paper was to shed light on the need for alternative metho...
The purpose of this project is threefold: firstly, to make an overview of what artificial neural net...
Many researchers are interesting in applying the neural networks methods to financial data. In fact ...