<p>Planning is an essential part of intelligent behavior and a ubiquitous task for both humans and rational agents. One framework for planning in the presence of uncertainty is probabilistic planning, in which actions are described by a probability distribution over their possible outcomes. Probabilistic planning has been applied to different real-world scenarios such as public health, sustainability and robotics; however, the usage of probabilistic planning in practice is limited due to the poor performance of existing planners.</p> <p>In this thesis, we introduce a novel approach to effectively solve probabilistic planning problems by relaxing them into short-sighted problems. A short-sighted problem is a relaxed problem in which the stat...
We address the class of probabilistic planning problems where the objective is to maximize the proba...
The main focus of our work is the use of classical planning algorithms in service of more complex pr...
For the past 25 years, heuristic search has been used to solve domain-independent probabilistic plan...
Probabilistic planning captures the uncertainty of plan execution by probabilisti-cally modeling the...
Two extreme approaches can be applied to solve a probabilistic planning problem, namely closed loop ...
For most real-world problems the agent operates in only par-tially-known environments. Probabilistic...
Search algorithms such as LAO* and LRTDP coupled with admissible heuristics are widely used methods ...
In probabilistic planning an agent interacts with an environment and the objective is to find an opt...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...
In the real-world, robots must often plan despite the environment being partially known. This freque...
Abstract. This paper proposes an unifying formulation for nondeter-ministic and probabilistic planni...
We address the class of probabilistic planning problems where the objective is to maximize the proba...
Stochastic Shortest Path Problems (SSPs) are a common representation for probabilistic planning prob...
Maximizing goal probability is an important objective in probabilistic planning, yet algorithms for ...
Thesis (Ph.D.)--University of Washington, 2013The ability to plan in the presence of uncertainty abo...
We address the class of probabilistic planning problems where the objective is to maximize the proba...
The main focus of our work is the use of classical planning algorithms in service of more complex pr...
For the past 25 years, heuristic search has been used to solve domain-independent probabilistic plan...
Probabilistic planning captures the uncertainty of plan execution by probabilisti-cally modeling the...
Two extreme approaches can be applied to solve a probabilistic planning problem, namely closed loop ...
For most real-world problems the agent operates in only par-tially-known environments. Probabilistic...
Search algorithms such as LAO* and LRTDP coupled with admissible heuristics are widely used methods ...
In probabilistic planning an agent interacts with an environment and the objective is to find an opt...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...
In the real-world, robots must often plan despite the environment being partially known. This freque...
Abstract. This paper proposes an unifying formulation for nondeter-ministic and probabilistic planni...
We address the class of probabilistic planning problems where the objective is to maximize the proba...
Stochastic Shortest Path Problems (SSPs) are a common representation for probabilistic planning prob...
Maximizing goal probability is an important objective in probabilistic planning, yet algorithms for ...
Thesis (Ph.D.)--University of Washington, 2013The ability to plan in the presence of uncertainty abo...
We address the class of probabilistic planning problems where the objective is to maximize the proba...
The main focus of our work is the use of classical planning algorithms in service of more complex pr...
For the past 25 years, heuristic search has been used to solve domain-independent probabilistic plan...