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Computational Intelligence and Its Applications in Healthcare presents rapidly growing applications of computational intelligence for healthcare systems, including intelligent synthetic characters, man-machine interface, menu generators, user acceptance analysis, pictures archiving, and communication systems. Computational intelligence is the study of the design of intelligent agents, which are systems that act intelligently: they do what they think are appropriate for their circumstances and goals; they're flexible to changing environments and goals; they learn from experience; and they make appropriate choices given perceptual limitations and finite computation. Computational intelligence paradigms offer many advantages in maintaining and enhancing the field of healthcare.
- Provides coverage of fuzzy logic, neural networks, evolutionary computation, learning theory, probabilistic methods, telemedicine, and robotics applications
- Includes coverage of artificial intelligence and biological applications, soft computing, image and signal processing, and genetic algorithms
- Presents the latest developments in computational methods in healthcare
- Bridges the gap between obsolete literature and current literature
Language
Place of publication
Publishing group
Elsevier Science & Techn.
Illustrations
Approx. 160 illustrations
ISBN-13
978-0-12-820619-5 (9780128206195)
Schweitzer Classification
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