Path integral methods have recently been shown to be applicable to a very general class of optimal control problems. Here we examine the path integral formalism from a decision-theoretic point of view, since an optimal controller can always be regarded as an instance of a perfectly rational decision-maker that chooses its actions so as to maximize its expected utility. The problem with perfect rationality is, however, that finding optimal actions is often very difficult due to prohibitive computational resource costs that are not taken into account. In contrast, a bounded rational decision-maker has only limited resources and therefore needs to strike some compromise between the desired utility and the required resource costs. In particular...
We derive the connections of Path Integral(PI) and Kulback-Liebler(KL) con-trol as presented in mach...
AbstractThe following optimality principle is established for finite undiscounted or discounted Mark...
Abstract — This paper presents a unified view of stochastic optimal control theory as developed with...
Abstract—Path integral methods [7], [15],[1] have recently been shown to be applicable to a very gen...
This thesis poses a general model for optimal control subject to information constraint, motivated i...
Deviations from rational decision-making due to limited computational resources have been studied in...
AbstractIn this paper, we generalize the utility theory to allow to use various performance measures...
AbstractThis is the third paper, after Bernhard (Expected value, feared value and partial informatio...
We introduce a notion of pathwise optimality for stochastic control problems over an infinite time h...
Bounded rationality concerns the study of decision makers with limited information processing resour...
Abstract. Path integral (PI) control defines a general class of control problems for which the optim...
Optimality criteria for Markov decision processes have historically been based on a risk neutral for...
The aim of this thesis is to present a mathematical framework for conceptualizing and constructing a...
Perfectly rational decision-makers maximize expected utility, but crucially ignore the resource cost...
In several standard models of dynamic programming (gambling houses, MDPs, POMDPs), we prove the exis...
We derive the connections of Path Integral(PI) and Kulback-Liebler(KL) con-trol as presented in mach...
AbstractThe following optimality principle is established for finite undiscounted or discounted Mark...
Abstract — This paper presents a unified view of stochastic optimal control theory as developed with...
Abstract—Path integral methods [7], [15],[1] have recently been shown to be applicable to a very gen...
This thesis poses a general model for optimal control subject to information constraint, motivated i...
Deviations from rational decision-making due to limited computational resources have been studied in...
AbstractIn this paper, we generalize the utility theory to allow to use various performance measures...
AbstractThis is the third paper, after Bernhard (Expected value, feared value and partial informatio...
We introduce a notion of pathwise optimality for stochastic control problems over an infinite time h...
Bounded rationality concerns the study of decision makers with limited information processing resour...
Abstract. Path integral (PI) control defines a general class of control problems for which the optim...
Optimality criteria for Markov decision processes have historically been based on a risk neutral for...
The aim of this thesis is to present a mathematical framework for conceptualizing and constructing a...
Perfectly rational decision-makers maximize expected utility, but crucially ignore the resource cost...
In several standard models of dynamic programming (gambling houses, MDPs, POMDPs), we prove the exis...
We derive the connections of Path Integral(PI) and Kulback-Liebler(KL) con-trol as presented in mach...
AbstractThe following optimality principle is established for finite undiscounted or discounted Mark...
Abstract — This paper presents a unified view of stochastic optimal control theory as developed with...