We introduce a sensitivity-based view to the area of learning and optimization of stochastic dynamic systems. We show that this sensitivity-based view provides a unified framework for many different disciplines in this area, including perturbation analysis, Markov decision processes, reinforcement learning, identification and adaptive control, and singular stochastic control; and that this unified framework applies to both the discrete event dynamic systems and continuous-time continuous-state systems. Many results in these disciplines can be simply derived and intuitively explained by using two performance sensitivity formulas. In addition, we show that this sensitivity-based view leads to new results and opens up new directions for future...
The standard approach to stochastic control is dynamic programming. In this paper, we introduce an a...
2014-10-14This dissertation addresses some problems in the area of learning, optimization and decisi...
Stochastic Control Theory is concerned with the control of dynamical systems which are random in som...
Learning and optimization of stochastic systems is a multi-disciplinary area that attracts wide atte...
Performance optimization is vital in the design and operation of modern engineering systems. This bo...
Sensitivity analysis plays an important role in performance optimization of stochastic systems. It p...
We first illustrate the possible limitations of the widely-used Markov model and then introduce the ...
In this article we study the connection of stochastic optimal control and reinforcement learning. Ou...
The goals of perturbation analysis (PA), Markov decision processes (MDPs), and reinforcement learnin...
Abstract. The goal of this paper is two-fold: First, we present a sensitivity point of view on the o...
We study the structure of sample paths of Markov systems by using performance potentials as the fund...
The goal of this paper is two-fold: First, we present a sensitivity point of view on the optimizatio...
This thesis dives into the theory of discrete time stochastic optimal control through exploring dyna...
The operation of a variety of natural or man-made systems subject to uncertainty is maintained withi...
The principal characteristic of stochastic adaptive optimization problems is the uncertainty in the ...
The standard approach to stochastic control is dynamic programming. In this paper, we introduce an a...
2014-10-14This dissertation addresses some problems in the area of learning, optimization and decisi...
Stochastic Control Theory is concerned with the control of dynamical systems which are random in som...
Learning and optimization of stochastic systems is a multi-disciplinary area that attracts wide atte...
Performance optimization is vital in the design and operation of modern engineering systems. This bo...
Sensitivity analysis plays an important role in performance optimization of stochastic systems. It p...
We first illustrate the possible limitations of the widely-used Markov model and then introduce the ...
In this article we study the connection of stochastic optimal control and reinforcement learning. Ou...
The goals of perturbation analysis (PA), Markov decision processes (MDPs), and reinforcement learnin...
Abstract. The goal of this paper is two-fold: First, we present a sensitivity point of view on the o...
We study the structure of sample paths of Markov systems by using performance potentials as the fund...
The goal of this paper is two-fold: First, we present a sensitivity point of view on the optimizatio...
This thesis dives into the theory of discrete time stochastic optimal control through exploring dyna...
The operation of a variety of natural or man-made systems subject to uncertainty is maintained withi...
The principal characteristic of stochastic adaptive optimization problems is the uncertainty in the ...
The standard approach to stochastic control is dynamic programming. In this paper, we introduce an a...
2014-10-14This dissertation addresses some problems in the area of learning, optimization and decisi...
Stochastic Control Theory is concerned with the control of dynamical systems which are random in som...