AbstractPlanning in nondeterministic domains yields both conceptual and practical difficulties. From the conceptual point of view, different notions of planning problems can be devised: for instance, a plan might either guarantee goal achievement, or just have some chances of success. From the practical point of view, the problem is to devise algorithms that can effectively deal with large state spaces. In this paper, we tackle planning in nondeterministic domains by addressing conceptual and practical problems. We formally characterize different planning problems, where solutions have a chance of success (“weak planning”), are guaranteed to achieve the goal (“strong planning”), or achieve the goal with iterative trial-and-error strategies ...
Most real world environments are non-deterministic. Automatic plan formation in non-deterministic do...
Most real world environments are non-deterministic. Automatic plan formation in non-deterministic do...
Rarely planning domains are fully observable. For this reason, the ability to deal with partial obse...
Planning in nondeterministic domains yields both conceptual and practical difficulties. From the con...
AbstractPlanning in nondeterministic domains yields both conceptual and practical difficulties. From...
Several realistic non-deterministic planning domains require plans that encode iterative trial-and-e...
In the thesis is tackled the Artificial Intelligence (AI) problem of Automatic Planning using Symbol...
Several real world applications require planners that deal with non-deterministic domains and with t...
Interleaving planning and execution is the practical alternative to the problem of planning off-line...
Most real world domains are non-deterministic: the state of the world can be incompletely known, the...
Recent research has addressed the problem of planning in non-deterministic domains. Classical planni...
We tackle the problem of planning in nondeterministic domains, by presenting a new approach to confo...
We tackle the problem of planning in nondeterministic domains, by presenting a new approach to confo...
Conformant planning is the problem of finding a sequence of actions that is guaranteed to achieve th...
Conformant planning is the problem of finding a sequence of actions that is guaranteed to achieve th...
Most real world environments are non-deterministic. Automatic plan formation in non-deterministic do...
Most real world environments are non-deterministic. Automatic plan formation in non-deterministic do...
Rarely planning domains are fully observable. For this reason, the ability to deal with partial obse...
Planning in nondeterministic domains yields both conceptual and practical difficulties. From the con...
AbstractPlanning in nondeterministic domains yields both conceptual and practical difficulties. From...
Several realistic non-deterministic planning domains require plans that encode iterative trial-and-e...
In the thesis is tackled the Artificial Intelligence (AI) problem of Automatic Planning using Symbol...
Several real world applications require planners that deal with non-deterministic domains and with t...
Interleaving planning and execution is the practical alternative to the problem of planning off-line...
Most real world domains are non-deterministic: the state of the world can be incompletely known, the...
Recent research has addressed the problem of planning in non-deterministic domains. Classical planni...
We tackle the problem of planning in nondeterministic domains, by presenting a new approach to confo...
We tackle the problem of planning in nondeterministic domains, by presenting a new approach to confo...
Conformant planning is the problem of finding a sequence of actions that is guaranteed to achieve th...
Conformant planning is the problem of finding a sequence of actions that is guaranteed to achieve th...
Most real world environments are non-deterministic. Automatic plan formation in non-deterministic do...
Most real world environments are non-deterministic. Automatic plan formation in non-deterministic do...
Rarely planning domains are fully observable. For this reason, the ability to deal with partial obse...