Traditional AI planning systems have focussed on batch planning, where an entire plan for achieving a goal is generated. An alternative approach is to select only the next action, a technique that has been used in situated planners, and, more recently, has been effectively applied to traditional AI planning domains. In this paper, we present an action selection framework sensitive to resource limits and based on constraint optimization. While the framework we present is very general, we are concerned with dynamic, time-pressured domains requiring reasoning under uncertainty. In such domains, batch planning is usually inappropriate or impossible to apply. We experimentally compare a number of local search algorithms, and give a detailed exam...
Planning is one of the fundamental problems of artificial intelligence. A classic planning problem ...
The approaches to make an agent generate intelligent actions in the AI field might be roughly catego...
Graduation date: 2015Writing a program that performs well in a complex environment is a challenging ...
The selection of the action to do next is one of the central problems faced by autonomous agents. Na...
Branching and lower bounds are two key notions in heuristic search and combinatorial optimization. B...
Constraint Programming provides a natural way to encode combinatorial search problems. AI Planning p...
The selection of the action to do next is one of the central problems faced by autonomous agents. I...
Abstract – One of the most important problems of traditional A.I. planning methods such as non-linea...
Recently tremendous advances have been made in the performance of AI planning systems. However incre...
An AI planning problem is one in which an agent capable of perceiving certain states and of performi...
Recently tremendous advances have been made in the performance of AI planning systems. However incre...
Constraint satisfaction techniques are used frequently for solving scheduling problems, but they are...
Constraint satisfaction techniques are commonly used for solving scheduling problems, still they are...
AbstractThis paper describes collage, a planner that utilizes a variety of nontraditional methods of...
This paper presents a novel approach to the problem of action selection for an autonomous agent. A...
Planning is one of the fundamental problems of artificial intelligence. A classic planning problem ...
The approaches to make an agent generate intelligent actions in the AI field might be roughly catego...
Graduation date: 2015Writing a program that performs well in a complex environment is a challenging ...
The selection of the action to do next is one of the central problems faced by autonomous agents. Na...
Branching and lower bounds are two key notions in heuristic search and combinatorial optimization. B...
Constraint Programming provides a natural way to encode combinatorial search problems. AI Planning p...
The selection of the action to do next is one of the central problems faced by autonomous agents. I...
Abstract – One of the most important problems of traditional A.I. planning methods such as non-linea...
Recently tremendous advances have been made in the performance of AI planning systems. However incre...
An AI planning problem is one in which an agent capable of perceiving certain states and of performi...
Recently tremendous advances have been made in the performance of AI planning systems. However incre...
Constraint satisfaction techniques are used frequently for solving scheduling problems, but they are...
Constraint satisfaction techniques are commonly used for solving scheduling problems, still they are...
AbstractThis paper describes collage, a planner that utilizes a variety of nontraditional methods of...
This paper presents a novel approach to the problem of action selection for an autonomous agent. A...
Planning is one of the fundamental problems of artificial intelligence. A classic planning problem ...
The approaches to make an agent generate intelligent actions in the AI field might be roughly catego...
Graduation date: 2015Writing a program that performs well in a complex environment is a challenging ...