Hybrid Soft Computing

Soft computing is a well-established paradigm consisting of artificial neural networks, fuzzy inference systems, approximate reasoning and derivative free optimization techniques such as evolutionary computation etc. Several adaptive hybrid soft computing architectures have in recent years been developed for solving complicated real world problems. The hybridization aims at overcoming limitations of individual techniques through fusion of different techniques. Many of these approaches use the combination of different knowledge representation schemes, decision-making models, learning strategies and optimization techniques to solve a computational task. This book investigates the optimization of artificial neural networks and fuzzy inference systems using a combination of evolutionary algorithms and local search techniques.

Weitere Produkte vom selben Autor

Crude Oil Price Forecasting Using Machine Learning Gabralla, Lubna, Abraham, Ajith

64,90 €*
Distributed Multiple Description Coding Bai, Huihui, Wang, Anhong, Abraham, Ajith, Pan, Jeng-Shyang, Zhao, Yao

106,99 €*
Optimization Models in Steganography Using Metaheuristics Sarmah, Dipti Kapoor, Abraham, Ajith, Kulkarni, Anand J.

106,99 €*
Probability Collectives Kulkarni, Anand Jayant, Abraham, Ajith, Tai, Kang

106,99 €*