Automated planning is a well studied research topic thanks to its wide range of real-world applications. Despite significant progress in this area many planning problems still remain hard and challenging. Some techniques such as learning macro-operators improve the planning process by reformulating the (original) planning problem. While many encouraging practical results have been derived from such reformulation methods, little attention has been paid to the theoretical properties of reformulation such as soundness, completeness, and algorithmic complexity. In this paper we build up a theoretical framework describing reformulation schemes such as action elimination or creating macro-actions. Using this framework, we show that finding entan...
In Automated Planning, learning and exploiting structural patterns of plans, domain models and/or pr...
The problem of automated planning is known to be intractable in general. Moreover, it has been prove...
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...
In Automated planning, learning and exploiting additional knowledge within a domain model, in order ...
Abstract—Planning techniques recorded a significant progress during recent years. However, many pla...
Despite a big progress in solving planning problems, more complex problems still remain hard and cha...
Many complex domains and even larger problems in simple domains remain challenging in spite of the r...
The action planning problem is known to be computationally hard in the general case. Propositional p...
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...
Research in the field of Automated Planning is largely focused on the problem of constructing plans ...
There are many approaches for solving planning problems. Many of these approaches are based on ‘brut...
Reducing accidental complexity in planning problems is a well-established method for increasing effi...
In Automated Planning, learning and exploiting structural patterns of plans, domain models and/or pr...
The problem of automated planning is known to be intractable in general. Moreover, it has been prove...
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...
In Automated planning, learning and exploiting additional knowledge within a domain model, in order ...
Abstract—Planning techniques recorded a significant progress during recent years. However, many pla...
Despite a big progress in solving planning problems, more complex problems still remain hard and cha...
Many complex domains and even larger problems in simple domains remain challenging in spite of the r...
The action planning problem is known to be computationally hard in the general case. Propositional p...
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...
Research in the field of Automated Planning is largely focused on the problem of constructing plans ...
There are many approaches for solving planning problems. Many of these approaches are based on ‘brut...
Reducing accidental complexity in planning problems is a well-established method for increasing effi...
In Automated Planning, learning and exploiting structural patterns of plans, domain models and/or pr...
The problem of automated planning is known to be intractable in general. Moreover, it has been prove...
Despite recent progress in planning, many complex domains and even simple domains with large problem...