Global Optimization Algorithms - Free Computer, Programming, Mathematics, Technical Books, Lecture Notes and Tutorials (original) (raw)
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- Title Global Optimization Algorithms: Theory and Application, 3rd Edition
- Author(s) Thomas Weise
- Publisher: Thomas Weise (2011)
- eBook PDF (1223 pages), ePub, Kindle, etc.
- Language: English
- ISBN-10: N/A
- ISBN-13: N/A
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Book Description
This book is devoted to global optimization algorithms, which are methods to find optimal solutions for given problems. It especially focuses on Evolutionary Computation by discussing evolutionary algorithms, genetic algorithms, Genetic Programming, Learning Classifier Systems, Evolution Strategy, Differential Evolution, Particle Swarm Optimization, and Ant Colony Optimization.
It also elaborates on other metaheuristics like Simulated Annealing, Extremal Optimization, Tabu Search, and Random Optimization. The book is no book in the conventional sense: Because of frequent updates and changes, it is not really intended for sequential reading but more as some sort of material collection, encyclopedia, or reference work where you can look up stuff, find the correct context, and are provided with fundamentals.
About the Authors
- Thomas Weis is a computer scientist at the Nature Inspired Computation and Applications Laboratory (NICAL) of the University of Science and Technology of China.
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Related Book Categories:
- Operations Research (OR), Linear Programming, Optimization, and Approximation
- Algorithms and Data Structures
- Artificial Intelligence, Machine Learning
Read and Download Links:
- Global Optimization Algorithms: Theory and Application, 3rd Edition (Thomas Weise)
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