Recently model checking representation and search techniques were shown to be ef-ciently applicable to planning, in particular to non-deterministic planning. Such plan-ning approaches use Ordered Binary Decision Diagrams (obdds) to encode a planning domain as a non-deterministic nite automaton and then apply fast algorithms frommodel checking to search for a solution. obdds can eectively scale and can provide univer-sal plans for complex planning domains. We are particularly interested in addressing the complexities arising in non-deterministic, multi-agent domains. In this article, we present umop, a new universal obdd-based planning framework for non-deterministic, multi-agent domains. We introduce a new planning domain description langua...
AbstractWe propose an online algorithm for planning under uncertainty in multi-agent settings modele...
Planning in nondeterministic domains yields both conceptual and practical difficulties. From the con...
This work proposes a novel high-level paradigm, agent planning programs, for modeling agents behavio...
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...
Symbolic universal planning based on the reduced Ordered Binary Decision Diagram (OBDD) has been sh...
Automated planning considers selecting and sequencing actions in orderto change the state of a discr...
Symbolic universal planning based on the reduced Ordered Binary Decision Diagram (OBDD) has been sho...
Most real world domains are non-deterministic: the state of the world can be incompletely known, the...
This paper presents an optimal planner for the international probabilistic planning competition at I...
Single-agent planning in a multi-agent environment is chal-lenging because the actions of other agen...
Single-agent planning in a multi-agent environment is challenging because the actions of other agent...
Although several approaches have been developed for planning in nondeterministic domains, solving la...
Several real world applications require planners that deal with non-deterministic domains and with t...
Rarely planning domains are fully observable. For this reason, the ability to deal with partial obse...
AbstractWe propose an online algorithm for planning under uncertainty in multi-agent settings modele...
Planning in nondeterministic domains yields both conceptual and practical difficulties. From the con...
This work proposes a novel high-level paradigm, agent planning programs, for modeling agents behavio...
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...
Symbolic universal planning based on the reduced Ordered Binary Decision Diagram (OBDD) has been sh...
Automated planning considers selecting and sequencing actions in orderto change the state of a discr...
Symbolic universal planning based on the reduced Ordered Binary Decision Diagram (OBDD) has been sho...
Most real world domains are non-deterministic: the state of the world can be incompletely known, the...
This paper presents an optimal planner for the international probabilistic planning competition at I...
Single-agent planning in a multi-agent environment is chal-lenging because the actions of other agen...
Single-agent planning in a multi-agent environment is challenging because the actions of other agent...
Although several approaches have been developed for planning in nondeterministic domains, solving la...
Several real world applications require planners that deal with non-deterministic domains and with t...
Rarely planning domains are fully observable. For this reason, the ability to deal with partial obse...
AbstractWe propose an online algorithm for planning under uncertainty in multi-agent settings modele...
Planning in nondeterministic domains yields both conceptual and practical difficulties. From the con...
This work proposes a novel high-level paradigm, agent planning programs, for modeling agents behavio...