AbstractThe paper introduces a new approach to dynamic modeling, using the variation principle, applied to a functional on trajectories of a controlled random process, and its connection to the process' information functional. In [V.S. Lerner, Dynamic approximation of a random information functional, J. Math. Anal. Appl. 327 (1) (2007) 494–514, available online 5-24-06], we presented the information path functional with the Lagrangian, determined by the parameters of a controlled stochastic equation. In this paper, the solution to the path functional's variation problem provides both a dynamic model of a random process and the model's optimal control, which allows us to build a two-level information model with a random process at the microl...
International audienceOptimality conditions in the form of a variational inequality are proved for a...
The problem of optimization of stochastic dynamic systems with random coefficients is discussed. Sys...
This thesis considers the question of how to most effectively conduct experiments in Partially Obser...
AbstractThe paper introduces a new approach to dynamic modeling, using the variation principle, appl...
AbstractUsing the probabilistic evaluation of the Marcovian diffusion process by a functional of act...
AbstractA variation principle which leads to the kinetic equation in a stochastic Markovian process ...
48 pagesWe consider a unifying framework for stochastic control problem including the following feat...
Bibliography: p. 57-61.Research supported by ARO contract no. DAAG-84-K-005 Research supported by co...
ABSTRACT We propose an adaptive importance sampling scheme for the simulation of rare events when t...
Consider a discrete stochastic control process in which the state of the system at time n is specifi...
Stochastic Control Theory is concerned with the control of dynamical systems which are random in som...
Copyright © 2014 IEEEPresented at IEEE Symposium on Adaptive Dynamic Programming and Reinforcement L...
AbstractProperties of a random walk model of an unknown function are studied. The model is suitable ...
We consider a general class of stochastic optimal control problems, where the state process lives in...
Graduation date: 1983The problem of optimization of stochastic dynamic systems with\ud random coeffi...
International audienceOptimality conditions in the form of a variational inequality are proved for a...
The problem of optimization of stochastic dynamic systems with random coefficients is discussed. Sys...
This thesis considers the question of how to most effectively conduct experiments in Partially Obser...
AbstractThe paper introduces a new approach to dynamic modeling, using the variation principle, appl...
AbstractUsing the probabilistic evaluation of the Marcovian diffusion process by a functional of act...
AbstractA variation principle which leads to the kinetic equation in a stochastic Markovian process ...
48 pagesWe consider a unifying framework for stochastic control problem including the following feat...
Bibliography: p. 57-61.Research supported by ARO contract no. DAAG-84-K-005 Research supported by co...
ABSTRACT We propose an adaptive importance sampling scheme for the simulation of rare events when t...
Consider a discrete stochastic control process in which the state of the system at time n is specifi...
Stochastic Control Theory is concerned with the control of dynamical systems which are random in som...
Copyright © 2014 IEEEPresented at IEEE Symposium on Adaptive Dynamic Programming and Reinforcement L...
AbstractProperties of a random walk model of an unknown function are studied. The model is suitable ...
We consider a general class of stochastic optimal control problems, where the state process lives in...
Graduation date: 1983The problem of optimization of stochastic dynamic systems with\ud random coeffi...
International audienceOptimality conditions in the form of a variational inequality are proved for a...
The problem of optimization of stochastic dynamic systems with random coefficients is discussed. Sys...
This thesis considers the question of how to most effectively conduct experiments in Partially Obser...