The aim of this thesis is to present a mathematical framework for conceptualizing and constructing adaptive autonomous systems under resource constraints. The first part of this thesis contains a concise presentation of the foundations of classical agency: namely the formalizations of decision making and learning. Decision making includes: (a) subjective expected utility (SEU) theory, the framework of decision making under uncertainty; (b) the maximum SEU principle to choose the optimal solution; and (c) its application to the design of autonomous systems, culminating in the Bellman optimality equations. Learning includes: (a) Bayesian probability theory, the theory for reasoning under uncertainty that extends logic; and (b) Bayes-Optimal a...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...
We study agents situated in partially observable environments, who do not have sufficient resources ...
We derive conditions on the learning environment- which encom-passes both Bayesian and non-Bayesian ...
Intelligent autonomous agents, designed to automate and simplify many aspects of our society, will i...
Intelligent autonomous agents, designed to automate and simplify many aspects of our society, will i...
The application of expected utility theory to construct adaptive agents is both computationally intr...
This thesis deals with decision-theoretic autonomous agents. This work consists in constructing a co...
This thesis deals with decision-theoretic autonomous agents. This work consists in constructing a co...
This thesis deals with decision-theoretic autonomous agents. This work consists in constructing a co...
We present a unified approach to multi-agent autonomous coordination in complex and uncertain enviro...
The goal of this thesis is to develop a mathematical framework for autonomous behavior. We begin by ...
The goal of this thesis is to develop a mathematical framework for autonomous behavior. We begin by ...
The ever-increasing presence of autonomy in our lives calls for immediate and significant investment...
The ever-increasing presence of autonomy in our lives calls for immediate and significant investment...
This paper proposes a method to construct an adaptive agent that is universal with respect to a give...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...
We study agents situated in partially observable environments, who do not have sufficient resources ...
We derive conditions on the learning environment- which encom-passes both Bayesian and non-Bayesian ...
Intelligent autonomous agents, designed to automate and simplify many aspects of our society, will i...
Intelligent autonomous agents, designed to automate and simplify many aspects of our society, will i...
The application of expected utility theory to construct adaptive agents is both computationally intr...
This thesis deals with decision-theoretic autonomous agents. This work consists in constructing a co...
This thesis deals with decision-theoretic autonomous agents. This work consists in constructing a co...
This thesis deals with decision-theoretic autonomous agents. This work consists in constructing a co...
We present a unified approach to multi-agent autonomous coordination in complex and uncertain enviro...
The goal of this thesis is to develop a mathematical framework for autonomous behavior. We begin by ...
The goal of this thesis is to develop a mathematical framework for autonomous behavior. We begin by ...
The ever-increasing presence of autonomy in our lives calls for immediate and significant investment...
The ever-increasing presence of autonomy in our lives calls for immediate and significant investment...
This paper proposes a method to construct an adaptive agent that is universal with respect to a give...
This dissertation considers a particular aspect of sequential decision making under uncertainty in w...
We study agents situated in partially observable environments, who do not have sufficient resources ...
We derive conditions on the learning environment- which encom-passes both Bayesian and non-Bayesian ...