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Networks Of Learning Automata Techniques For Online Stochastic Optimization 1st Edition M A L Thathachar

  • SKU: BELL-4200838
Networks Of Learning Automata Techniques For Online Stochastic Optimization 1st Edition M A L Thathachar
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Networks Of Learning Automata Techniques For Online Stochastic Optimization 1st Edition M A L Thathachar instant download after payment.

Publisher: Springer US
File Extension: PDF
File size: 14.94 MB
Pages: 268
Author: M. A. L. Thathachar, P. S. Sastry (auth.)
ISBN: 9781441990525, 9781461347750, 1441990526, 1461347750
Language: English
Year: 2004
Edition: 1

Product desciption

Networks Of Learning Automata Techniques For Online Stochastic Optimization 1st Edition M A L Thathachar by M. A. L. Thathachar, P. S. Sastry (auth.) 9781441990525, 9781461347750, 1441990526, 1461347750 instant download after payment.

Networks of Learning Automata: Techniques for Online Stochastic Optimization is a comprehensive account of learning automata models with emphasis on multiautomata systems. It considers synthesis of complex learning structures from simple building blocks and uses stochastic algorithms for refining probabilities of selecting actions. Mathematical analysis of the behavior of games and feedforward networks is provided. Algorithms considered here can be used for online optimization of systems based on noisy measurements of performance index. Also, algorithms that assure convergence to the global optimum are presented. Parallel operation of automata systems for improving speed of convergence is described. The authors also include extensive discussion of how learning automata solutions can be constructed in a variety of applications.

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