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The book is devoted to the analysis of big data in order to extract
from these data hidden patterns necessary for making decisions
about the rational behavior of complex systems with the different
nature that generate this data. To solve these problems, a group of
new methods and tools is used, based on the self-organization of
computational processes, the use of crisp and fuzzy cluster
analysis methods, hybrid neural-fuzzy networks, and others. The
book solves various practical problems. In particular, for the
tasks of 3D image recognition and automatic speech recognition
large-scale neural networks with applications for Deep Learning
systems were used. Application of hybrid neuro-fuzzy networks for
analyzing stock markets was presented. The analysis of big
historical, economic and physical data revealed the hidden
Fibonacci pattern about the course of systemic world conflicts and
their connection with the Kondratieff big economic cycles and the
Schwabe-Wolf solar activity cycles. The book is useful for system
analysts and practitioners working with complex systems in various
spheres of human activity.
This monograph is dedicated to the systematic presentation of main
trends, technologies and methods of computational intelligence
(CI). The book pays big attention to novel important CI technology-
fuzzy logic (FL) systems and fuzzy neural networks (FNN). Different
FNN including new class of FNN- cascade neo-fuzzy neural networks
are considered and their training algorithms are described and
analyzed. The applications of FNN to the forecast in macroeconomics
and at stock markets are examined. The book presents the problem of
portfolio optimization under uncertainty, the novel theory of fuzzy
portfolio optimization free of drawbacks of classical model of
Markovitz as well as an application for portfolios optimization at
Ukrainian, Russian and American stock exchanges. The book also
presents the problem of corporations bankruptcy risk forecasting
under incomplete and fuzzy information, as well as new methods
based on fuzzy sets theory and fuzzy neural networks and results of
their application for bankruptcy risk forecasting are presented and
compared with Altman method. This monograph also focuses on an
inductive modeling method of self-organization - the so-called
Group Method of Data Handling (GMDH) which enables to construct the
structure of forecasting models almost automatically. The results
of experimental investigations of GMDH for forecasting at stock
exchanges are presented. The final chapters are devoted to theory
and applications of evolutionary modeling (EM) and genetic
algorithms. The distinguishing feature of this monograph is a great
number of practical examples of CI technologies and methods
application for solution of real problems in technology, economy
and financial sphere, in particular forecasting, classification,
pattern recognition, portfolio optimization, bankruptcy risk
prediction under uncertainty which were developed by authors and
published in this book for the first time. All CI methods and
algorithms are presented from the general system approach and
analysis of their properties, advantages and drawbacks that enables
practitioners to choose the most adequate method for their own
problems solution.
This monograph is dedicated to the systematic presentation of main
trends, technologies and methods of computational intelligence
(CI). The book pays big attention to novel important CI technology-
fuzzy logic (FL) systems and fuzzy neural networks (FNN). Different
FNN including new class of FNN- cascade neo-fuzzy neural networks
are considered and their training algorithms are described and
analyzed. The applications of FNN to the forecast in macroeconomics
and at stock markets are examined. The book presents the problem of
portfolio optimization under uncertainty, the novel theory of fuzzy
portfolio optimization free of drawbacks of classical model of
Markovitz as well as an application for portfolios optimization at
Ukrainian, Russian and American stock exchanges. The book also
presents the problem of corporations bankruptcy risk forecasting
under incomplete and fuzzy information, as well as new methods
based on fuzzy sets theory and fuzzy neural networks and results of
their application for bankruptcy risk forecasting are presented and
compared with Altman method. This monograph also focuses on an
inductive modeling method of self-organization - the so-called
Group Method of Data Handling (GMDH) which enables to construct the
structure of forecasting models almost automatically. The results
of experimental investigations of GMDH for forecasting at stock
exchanges are presented. The final chapters are devoted to theory
and applications of evolutionary modeling (EM) and genetic
algorithms. The distinguishing feature of this monograph is a great
number of practical examples of CI technologies and methods
application for solution of real problems in technology, economy
and financial sphere, in particular forecasting, classification,
pattern recognition, portfolio optimization, bankruptcy risk
prediction under uncertainty which were developed by authors and
published in this book for the first time. All CI methods and
algorithms are presented from the general system approach and
analysis of their properties, advantages and drawbacks that enables
practitioners to choose the most adequate method for their own
problems solution.
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