Despite recent progress in AI planning, many benchmarks remain challenging for current planners. In many domains, the performance of a planner can greatly be improved by discovering and exploiting information about the domain structure that is not explicitly encoded in the initial PDDL formulation. In this paper we present and compare two automated methods that learn relevant information from previous experience in a domain and use it to solve new problem instances. Our methods share a common four-step strategy. First, a domain is analyzed and structural information is extracted, then macro-operators are generated based on the previously discovered structure. A filtering and ranking procedure selects the most useful macro-operators. Finally...
Despite recent progress in planning, many complex domains and even larger problems in simple domains...
National audiencePlanning has achieved significant progress in recent years. Among the various appro...
International audienceIntuitively, Automated Planning systems capable of learning from previous expe...
Despite recent progress in AI planning, many benchmarks remain challenging for current planners. In ...
Despite recent progress in AI planning, many problems re-main challenging for current planners. In m...
Abstract—Automated planning has achieved significant breakthroughs in recent years. Nonetheless, att...
The thesis of this dissertation is that automating domain remodeling in AI planning using macro oper...
The acquisition and use of macro actions has been shown to be effective in improving the speed of AI...
Despite recent progress in planning, many complex domains and even simple domains with large problem...
Research into techniques that reformulate problems to make general solvers more efficiently derive s...
Research into techniques that reformulate problems to make general solvers more efficiently derive s...
Many complex domains and even larger problems in simple domains remain challenging in spite of the r...
Domain re-engineering through macro-actions (i.e. macros) provides one potential avenue for research...
International audiencePlanning has achieved significant progress in recent years. Among the various ...
Despite recent progress in planning, many complex domains and even larger problems in simple domains...
Despite recent progress in planning, many complex domains and even larger problems in simple domains...
National audiencePlanning has achieved significant progress in recent years. Among the various appro...
International audienceIntuitively, Automated Planning systems capable of learning from previous expe...
Despite recent progress in AI planning, many benchmarks remain challenging for current planners. In ...
Despite recent progress in AI planning, many problems re-main challenging for current planners. In m...
Abstract—Automated planning has achieved significant breakthroughs in recent years. Nonetheless, att...
The thesis of this dissertation is that automating domain remodeling in AI planning using macro oper...
The acquisition and use of macro actions has been shown to be effective in improving the speed of AI...
Despite recent progress in planning, many complex domains and even simple domains with large problem...
Research into techniques that reformulate problems to make general solvers more efficiently derive s...
Research into techniques that reformulate problems to make general solvers more efficiently derive s...
Many complex domains and even larger problems in simple domains remain challenging in spite of the r...
Domain re-engineering through macro-actions (i.e. macros) provides one potential avenue for research...
International audiencePlanning has achieved significant progress in recent years. Among the various ...
Despite recent progress in planning, many complex domains and even larger problems in simple domains...
Despite recent progress in planning, many complex domains and even larger problems in simple domains...
National audiencePlanning has achieved significant progress in recent years. Among the various appro...
International audienceIntuitively, Automated Planning systems capable of learning from previous expe...