Neuro-Fuzzy Modeling in Bankruptcy Prediction
Yugoslav journal of operations research, Tome 13 (2003) no. 2, p. 165
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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. These control
rules are translated into the framework of fuzzy set theory providing a calculus, which
can stimulate the behavior of the control expert and enhance its performance. The
accuracy of the model is studied using datasets from previous research papers.
Keywords:
Neuro-fuzzy, bankruptcy.
@article{YJOR_2003_13_2_a2,
author = {D. Vlachos and Y. A. Tolias},
title = {Neuro-Fuzzy {Modeling} in {Bankruptcy} {Prediction}},
journal = {Yugoslav journal of operations research},
pages = {165 },
year = {2003},
volume = {13},
number = {2},
language = {en},
url = {http://geodesic.mathdoc.fr/item/YJOR_2003_13_2_a2/}
}
D. Vlachos; Y. A. Tolias. Neuro-Fuzzy Modeling in Bankruptcy Prediction. Yugoslav journal of operations research, Tome 13 (2003) no. 2, p. 165 . http://geodesic.mathdoc.fr/item/YJOR_2003_13_2_a2/