Stochastic Recursive Algorithms for Optimization presents algorithms for constrained and unconstrained optimization and for reinforcement learning. Efficient perturbation approaches form a thread unifying all the algorithms considered. Simultaneous perturbation stochastic approximation and smooth fractional estimators for gradient- and Hessian-based methods are presented. These algorithms: • are easily implemented; • do not require an explicit system model; and • work with real or simulated data. Chapters on their application in service systems, vehicular traffic control and communications networks illustrate this point. The book is self-contained with necessary mathematical results placed in an appendix. The text provides easy-to-use, off-...
Learning and optimization of stochastic systems is a multi-disciplinary area that attracts wide atte...
International audienceStochastic approximation (SA) is a classical algorithm that has had since the ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
We present new algorithms for simulation optimization using random directions stochastic approximati...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...
This chapter deals with algorithms for the optimization of simulated systems.In particular we study ...
Simultaneous perturbation stochastic approximation (SPSA) algorithms have been found to be very effe...
We develop four algorithms for simulation-based optimization under multiple inequality constraints. ...
The interplay between optimization and machine learning is one of the most important developments in...
By combining randomized smoothing techniques with accelerated gradient methods, we obtain convergenc...
Discrete stochastic optimization considers the problem of minimizing (or maximizing) loss functions ...
Optimization problems arising in practice involve random model parameters. This book features many i...
This book addresses stochastic optimization procedures in a broad manner. The first part offers an o...
We present the first q-Gaussian smoothed functional (SF) estimator of the Hessian and the first Newt...
This is a comprehensive and timely overview of the numerical techniques that have been developed to ...
Learning and optimization of stochastic systems is a multi-disciplinary area that attracts wide atte...
International audienceStochastic approximation (SA) is a classical algorithm that has had since the ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
We present new algorithms for simulation optimization using random directions stochastic approximati...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...
This chapter deals with algorithms for the optimization of simulated systems.In particular we study ...
Simultaneous perturbation stochastic approximation (SPSA) algorithms have been found to be very effe...
We develop four algorithms for simulation-based optimization under multiple inequality constraints. ...
The interplay between optimization and machine learning is one of the most important developments in...
By combining randomized smoothing techniques with accelerated gradient methods, we obtain convergenc...
Discrete stochastic optimization considers the problem of minimizing (or maximizing) loss functions ...
Optimization problems arising in practice involve random model parameters. This book features many i...
This book addresses stochastic optimization procedures in a broad manner. The first part offers an o...
We present the first q-Gaussian smoothed functional (SF) estimator of the Hessian and the first Newt...
This is a comprehensive and timely overview of the numerical techniques that have been developed to ...
Learning and optimization of stochastic systems is a multi-disciplinary area that attracts wide atte...
International audienceStochastic approximation (SA) is a classical algorithm that has had since the ...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...