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Hybrid Intelligent Systems summarizes the strengths and weaknesses
of five intelligent technologies: fuzzy logic, genetic algorithms,
case-based reasoning, neural networks and expert systems, reviewing
the status and significance of research into their integration.
Engineering and scientific examples and case studies are used to
illustrate principles and application development techniques. The
reader will gain a clear idea of the current status of hybrid
intelligent systems and discover how to choose and develop
appropriate applications. The book is based on a thorough
literature search of recent publications on research and
development in hybrid intelligent systems; the resulting 50-page
reference section of the book is invaluable. The book starts with a
summary of the five major intelligent technologies and of the
issues in and current status of research into them. Each subsequent
chapter presents a detailed discussion of a different combination
of intelligent technologies, along with examples and case studies.
Four chapters contain detailed case studies of working hybrid
systems. The book enables the reader to: Describe the important
concepts, strengths and limitations of each technology; Recognize
and analyze potential problems with the application of hybrid
systems; Choose appropriate hybrid intelligent solutions;
Understand how applications are designed with any of the approaches
covered; Choose appropriate commercial development shells or tools.
An invaluable reference source for those who wish to apply
intelligent systems techniques to their own problems.
Hybrid Neural Network and Expert Systems presents the basics of
expert systems and neural networks, and the important
characteristics relevant to the integration of these two
technologies. Through case studies of actual working systems, the
author demonstrates the use of these hybrid systems in practical
situations. Guidelines and models are described to help those who
want to develop their own hybrid systems. Neural networks and
expert systems together represent two major aspects of human
intelligence and therefore are appropriate for integration. Neural
networks represent the visual, pattern-recognition types of
intelligence, while expert systems represent the logical, reasoning
processes. Together, these technologies allow applications to be
developed that are more powerful than when each technique is used
individually. Hybrid Neural Network and Expert Systems provides
frameworks for understanding how the combination of neural networks
and expert systems can produce useful hybrid systems, and
illustrates the issues and opportunities in this dynamic field.
Hybrid Intelligent Systems summarizes the strengths and weaknesses
of five intelligent technologies: fuzzy logic, genetic algorithms,
case-based reasoning, neural networks and expert systems, reviewing
the status and significance of research into their integration.
Engineering and scientific examples and case studies are used to
illustrate principles and application development techniques. The
reader will gain a clear idea of the current status of hybrid
intelligent systems and discover how to choose and develop
appropriate applications. The book is based on a thorough
literature search of recent publications on research and
development in hybrid intelligent systems; the resulting 50-page
reference section of the book is invaluable. The book starts with a
summary of the five major intelligent technologies and of the
issues in and current status of research into them. Each subsequent
chapter presents a detailed discussion of a different combination
of intelligent technologies, along with examples and case studies.
Four chapters contain detailed case studies of working hybrid
systems.The book enables the reader to: * Describe the important
concepts, strengths and limitations of each technology; * Recognize
and analyze potential problems with the application of hybrid
systems; * Choose appropriate hybrid intelligent solutions; *
Understand how applications are designed with any of the approaches
covered; * Choose appropriate commercial development shells or
tools. An invaluable reference source for those who wish to apply
intelligent systems techniques to their own problems.
Hybrid Neural Network and Expert Systems presents the basics of
expert systems and neural networks, and the important
characteristics relevant to the integration of these two
technologies. Through case studies of actual working systems, the
author demonstrates the use of these hybrid systems in practical
situations. Guidelines and models are described to help those who
want to develop their own hybrid systems. Neural networks and
expert systems together represent two major aspects of human
intelligence and therefore are appropriate for integration. Neural
networks represent the visual, pattern-recognition types of
intelligence, while expert systems represent the logical, reasoning
processes. Together, these technologies allow applications to be
developed that are more powerful than when each technique is used
individually. Hybrid Neural Network and Expert Systems provides
frameworks for understanding how the combination of neural networks
and expert systems can produce useful hybrid systems, and
illustrates the issues and opportunities in this dynamic field.
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