UnrestrictedMotivated by the limitations of current optimal control and reinforcement learning methods in terms of their efficiency and scalability, this thesis proposes an iterative stochastic optimal control approach based on the generalized path integral formalism. More precisely, we suggest the use of the framework of stochastic optimal control with path integrals to derive a novel approach to RL with parameterized policies. While solidly grounded in value function estimation and optimal control based on the stochastic Hamilton Jacobi Bellman (HJB) equation, policy improvements can be transformed into an approximation problem of a path integral which has no open algorithmic parameters other than the exploration noise. The resulting algo...
For deterministic nonlinear dynamical systems, approximate dynamic programming based on Pontryagin\u...
In this paper it is shown how Stochastic Approximation theory can be used to derive and analyse well...
Abstract — This paper presents a unified view of stochastic optimal control theory as developed with...
Abstract: Recent work on path integral stochastic optimal control theory Theodorou et al. (2010a); T...
Path integral stochastic optimal control based learning methods are among the most efficient and sca...
The increasing level of autonomy and intelligence of robotic systems in carrying out complex tasks c...
Abstract. This paper considers optimal control of dynamical systems which are represented by nonline...
Decision making under uncertainty is an important problem in engineering that is traditionally appro...
Stochastic Optimal Control is an elegant and general framework for specifying and solving control pr...
Stochastic Optimal Control (SOC) is typically used to plan a movement for a specific situation. Whil...
Abstract: Path integral control solves a class of stochastic optimal control problems with a Monte C...
In this article, we present a generalized view on Path Integral Control (PIC) methods. PIC refers to...
Abstract — For controlling high-dimensional robots, most stochastic optimal control algorithms use a...
Presented on February 24, 2016 at 12:00 p.m. in the TSRB Banquet Hall.Evangelos A. Theodorou is an a...
In this paper, we consider a class of continuous-time, continuous-space stochastic optimal control p...
For deterministic nonlinear dynamical systems, approximate dynamic programming based on Pontryagin\u...
In this paper it is shown how Stochastic Approximation theory can be used to derive and analyse well...
Abstract — This paper presents a unified view of stochastic optimal control theory as developed with...
Abstract: Recent work on path integral stochastic optimal control theory Theodorou et al. (2010a); T...
Path integral stochastic optimal control based learning methods are among the most efficient and sca...
The increasing level of autonomy and intelligence of robotic systems in carrying out complex tasks c...
Abstract. This paper considers optimal control of dynamical systems which are represented by nonline...
Decision making under uncertainty is an important problem in engineering that is traditionally appro...
Stochastic Optimal Control is an elegant and general framework for specifying and solving control pr...
Stochastic Optimal Control (SOC) is typically used to plan a movement for a specific situation. Whil...
Abstract: Path integral control solves a class of stochastic optimal control problems with a Monte C...
In this article, we present a generalized view on Path Integral Control (PIC) methods. PIC refers to...
Abstract — For controlling high-dimensional robots, most stochastic optimal control algorithms use a...
Presented on February 24, 2016 at 12:00 p.m. in the TSRB Banquet Hall.Evangelos A. Theodorou is an a...
In this paper, we consider a class of continuous-time, continuous-space stochastic optimal control p...
For deterministic nonlinear dynamical systems, approximate dynamic programming based on Pontryagin\u...
In this paper it is shown how Stochastic Approximation theory can be used to derive and analyse well...
Abstract — This paper presents a unified view of stochastic optimal control theory as developed with...