Abstract We continue to advocate a methodology that we used earlier for pattern discovery through exhaustive search in selected small domains. This time we apply it to the problem of discovering state invariants in planning domains. State invariants are formulas that if true in a state, will be true in all successor states. In this paper, we consider the following four types of state invariants commonly found in AI planning domains: functional dependency constraints, constraints on mutual exclusiveness of categories, type information constraints, and domain closure axioms. As it turned out, for a class of action theories that include many planning benchmarks, for the first three types of constraints, whether they are state invariants can be...
Abstract. We present a CLP-based approach to reasoning about ac-tions in the presence of incomplete ...
This paper addresses the challenge of automated numeric domain model acquisition from observations. ...
We are interested in automatically proving safety properties of infinite state systems. We present a...
As planning is applied to larger and richer domains the effort involved in constructing domain descr...
Constraint Programming provides a natural way to encode combinatorial search problems. AI Planning p...
We describe some new preprocessing techniques that enable faster domain-independent planning. The fi...
DISCOPLAN is an implemented set of efficient preplanning algorithms intended to enable faster domain...
In earlier work, we developed a xpoint algorithm for automatically generating state invariants, prop...
DISCOPLAN is an implemented set of efficient preplanning algorithms intended to enable faster domain...
Planning is a central research area in artificial intelligence, and a lot of effort has gone into co...
State-set search is state space search when the states being manipulated by the search algorithm are...
Stavové invarianty vzájemného vyloučení (mutexy) jsou v kontextu STRIPS plánování definovány jako mn...
Previous research in Artificial Intelligence has identified the possibility of simplifying planning ...
In this paper, a state-based approach for the Constraint Sat-isfaction Problem (CSP) is proposed. Th...
Computation of invariants, which are approximate reachability information for state-space search pro...
Abstract. We present a CLP-based approach to reasoning about ac-tions in the presence of incomplete ...
This paper addresses the challenge of automated numeric domain model acquisition from observations. ...
We are interested in automatically proving safety properties of infinite state systems. We present a...
As planning is applied to larger and richer domains the effort involved in constructing domain descr...
Constraint Programming provides a natural way to encode combinatorial search problems. AI Planning p...
We describe some new preprocessing techniques that enable faster domain-independent planning. The fi...
DISCOPLAN is an implemented set of efficient preplanning algorithms intended to enable faster domain...
In earlier work, we developed a xpoint algorithm for automatically generating state invariants, prop...
DISCOPLAN is an implemented set of efficient preplanning algorithms intended to enable faster domain...
Planning is a central research area in artificial intelligence, and a lot of effort has gone into co...
State-set search is state space search when the states being manipulated by the search algorithm are...
Stavové invarianty vzájemného vyloučení (mutexy) jsou v kontextu STRIPS plánování definovány jako mn...
Previous research in Artificial Intelligence has identified the possibility of simplifying planning ...
In this paper, a state-based approach for the Constraint Sat-isfaction Problem (CSP) is proposed. Th...
Computation of invariants, which are approximate reachability information for state-space search pro...
Abstract. We present a CLP-based approach to reasoning about ac-tions in the presence of incomplete ...
This paper addresses the challenge of automated numeric domain model acquisition from observations. ...
We are interested in automatically proving safety properties of infinite state systems. We present a...