Topics covered include derivatives and their generalization to multiple dimensions; local descent and first- and second-order methods that inform local descent; stochastic methods, which introduce randomness into the optimization process; linear constrained optimization, when both the objective function and the constraints are linear; surrogate models, probabilistic surrogate models, and using probabilistic surrogate models to guide optimization; optimization under uncertainty; uncertainty propagation; expression optimization; and multidisciplinary design optimization. Appendixes offer an introduction to the Julia language, test functions for evaluating algorithm performance, and mathematical concepts used in the derivation and analysis of the optimization methods discussed in the text. The book can be used by advanced undergraduates and graduate students in mathematics, statistics, computer science, any engineering field, (including electrical engineering and aerospace engineering), and operations research, and as a reference for professionals.
Algorithms for Optimization (The MIT Press) Illustrated Edition by Mykel J. Kochenderfer, Tim A. Wheeler
$26.60
- Publisher : The MIT Press; Illustrated edition (March 12, 2019)
- Language : English
- Hardcover : 520 pages
- ISBN-10 : 0262039427
- ISBN-13 : 978-0262039420
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