Symmetries provide the basis for well-established approaches to tackle the state explosion problem in state space search and in AI planning. However, although by now there are various symmetry-based techniques available, these techniques have not yet been empirically evaluated and compared to each other in a common setting. In particular, it is unclear which of them should be preferably applied, and whether there are techniques with stronger performance than others. In this paper, we shed light on this issue by providing an empirical case study. We combine and evaluate several symmetry-based techniques for cost-optimal planning as heuristic search. For our evaluation, we use state-of-the-art abstraction heuristics on a large set of benchma...
This thesis focuses on improving the process of automated planing through symmetry breaking. The aim...
Many planning problems exhibit a high degree of symmetry that cannot yet be exploited successfully b...
Automated planning is a prominent Artificial Intelligence (AI) challenge that has been extensively s...
In heuristic search planning, state-space symmetries are mostly ignored by both the search algorithm...
Previous research in Artificial Intelligence has identified the possibility of simplifying planning ...
Searching for computational tools that can further push the boundary of satisficing planning, we sho...
Heuristic search is a state-of-the-art approach to classical planning. Several heuristic families we...
Heuristic search is a state-of-the-art approach to classical planning. Several heuristic families we...
Symmetries arise in planning in a variety of ways. This paper describes the ways that symmetry aises...
Many planning problems contain collections of symmetric objects, actions and structures which render...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...
Symmetry-based state space pruning techniques have proved to greatly improve heuristic search based ...
Many planning problems contain collections of symmetric objects, actions and structures which render...
This paper proposes and investigates a novel way of combining machine learning and heuristic search ...
Many planning problems exhibit a high degree of symmetry that cannot yet be exploited suc-cessfully ...
This thesis focuses on improving the process of automated planing through symmetry breaking. The aim...
Many planning problems exhibit a high degree of symmetry that cannot yet be exploited successfully b...
Automated planning is a prominent Artificial Intelligence (AI) challenge that has been extensively s...
In heuristic search planning, state-space symmetries are mostly ignored by both the search algorithm...
Previous research in Artificial Intelligence has identified the possibility of simplifying planning ...
Searching for computational tools that can further push the boundary of satisficing planning, we sho...
Heuristic search is a state-of-the-art approach to classical planning. Several heuristic families we...
Heuristic search is a state-of-the-art approach to classical planning. Several heuristic families we...
Symmetries arise in planning in a variety of ways. This paper describes the ways that symmetry aises...
Many planning problems contain collections of symmetric objects, actions and structures which render...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...
Symmetry-based state space pruning techniques have proved to greatly improve heuristic search based ...
Many planning problems contain collections of symmetric objects, actions and structures which render...
This paper proposes and investigates a novel way of combining machine learning and heuristic search ...
Many planning problems exhibit a high degree of symmetry that cannot yet be exploited suc-cessfully ...
This thesis focuses on improving the process of automated planing through symmetry breaking. The aim...
Many planning problems exhibit a high degree of symmetry that cannot yet be exploited successfully b...
Automated planning is a prominent Artificial Intelligence (AI) challenge that has been extensively s...