AbstractIn the last several years, there have been several studies about the computational complexity of classical planning assuming that the planner has complete knowledge about the initial situation. Recently, there have been proposals to use `sensing' actions to plan in the presence of incompleteness. In this paper we study the complexity of planning in such cases. In our study we use the action description language A proposed in 1991 by Gelfond and Lifschitz, and its extensions.It is known that if we consider only plans of tractable (polynomial) duration, planning in A —with complete information about the initial situation—is NP -complete: even checking whether a given objective is attainable from a given initial state is NP -complete. ...
AbstractConformant planning is used to refer to planning for unobservable problems whose solutions, ...
We present a new method for partial order planning in the STRIPS/SNLP style. Our contribution center...
AbstractAutomated planning, the problem of how an agent achieves a goal given a repertoire of action...
AbstractIn the last several years, there have been several studies about the computational complexit...
In the last several years, there have been several studies about the computational complexity of cla...
Many planning problems involve nondeterministic actions-actions whose effects are not completely det...
The main problem of planning is to find a sequence of actions that an agent must perform to achieve ...
Planning is a very important AI problem, and it is also a very time-consuming AI problem. To get an ...
Automated planning in computer science consists of finding a sequence of actions leading from an ini...
vladik csutepedu Planning is a very important AI problem and it is also a very timeconsuming AI pro...
In the last decade, there has been several studies on the computational complexity of planning. Thes...
We show that for conditional planning with partial observ-ability the problem of testing existence o...
Automated planning is known to be computationally hard in the general case. Propositional planning i...
Automated planning is known to be computationally hard in the general case. Propositional planning i...
AbstractA planning problem is k-dependent if each action has at most k pre-conditions on variables u...
AbstractConformant planning is used to refer to planning for unobservable problems whose solutions, ...
We present a new method for partial order planning in the STRIPS/SNLP style. Our contribution center...
AbstractAutomated planning, the problem of how an agent achieves a goal given a repertoire of action...
AbstractIn the last several years, there have been several studies about the computational complexit...
In the last several years, there have been several studies about the computational complexity of cla...
Many planning problems involve nondeterministic actions-actions whose effects are not completely det...
The main problem of planning is to find a sequence of actions that an agent must perform to achieve ...
Planning is a very important AI problem, and it is also a very time-consuming AI problem. To get an ...
Automated planning in computer science consists of finding a sequence of actions leading from an ini...
vladik csutepedu Planning is a very important AI problem and it is also a very timeconsuming AI pro...
In the last decade, there has been several studies on the computational complexity of planning. Thes...
We show that for conditional planning with partial observ-ability the problem of testing existence o...
Automated planning is known to be computationally hard in the general case. Propositional planning i...
Automated planning is known to be computationally hard in the general case. Propositional planning i...
AbstractA planning problem is k-dependent if each action has at most k pre-conditions on variables u...
AbstractConformant planning is used to refer to planning for unobservable problems whose solutions, ...
We present a new method for partial order planning in the STRIPS/SNLP style. Our contribution center...
AbstractAutomated planning, the problem of how an agent achieves a goal given a repertoire of action...