Probabilistic planning subject to multi-objective probabilistic temporal logic (PLTL) constraints models the problem of computing safe and robust behaviours for agents in stochastic environments. We present novel admissible heuristics to guide the search for cost-optimal policies for these problems. These heuristics project and decompose LTL formulae obtained by progression to estimate the probability that an extension of a partial policy satisfies the constraints. Their computation with linear programming is integrated with the recent PLTL-dual heuristic search algorithm, enabling more aggressive pruning of regions violating the constraints. Our experiments show that they further widen the scalability gap between heuristic search and v...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...
Probabilistic Programming (PP) has recently emerged as an effective approach for building complex pr...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...
Search algorithms such as LAO* and LRTDP coupled with admissible heuristics are widely used methods ...
We present a method to calculate cost-optimal poli-cies for task specifications in co-safe linear te...
We present a method to calculate cost-optimal poli-cies for task specifications in co-safe linear te...
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT...
Formal methods based on the Markov decision process formalism, such as probabilistic computation tre...
AbstractSome of the current best conformant probabilistic planners focus on finding a fixed length p...
For the past 25 years, heuristic search has been used to solve domain-independent probabilistic plan...
We describe the version of the GPT planner used in the probabilistic track of the 4th International ...
In this work we investigate the use of propositional linear temporal logic LTL as a specification la...
Reachability heuristics have lead to impressive scale-ups in deterministic planning making their a...
The Partially Observable Markov Decision Process (POMDP) is widely used in probabilistic planning fo...
This paper presents an approach to artificial intelligence planning based on linear temporal logic ...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...
Probabilistic Programming (PP) has recently emerged as an effective approach for building complex pr...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...
Search algorithms such as LAO* and LRTDP coupled with admissible heuristics are widely used methods ...
We present a method to calculate cost-optimal poli-cies for task specifications in co-safe linear te...
We present a method to calculate cost-optimal poli-cies for task specifications in co-safe linear te...
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT...
Formal methods based on the Markov decision process formalism, such as probabilistic computation tre...
AbstractSome of the current best conformant probabilistic planners focus on finding a fixed length p...
For the past 25 years, heuristic search has been used to solve domain-independent probabilistic plan...
We describe the version of the GPT planner used in the probabilistic track of the 4th International ...
In this work we investigate the use of propositional linear temporal logic LTL as a specification la...
Reachability heuristics have lead to impressive scale-ups in deterministic planning making their a...
The Partially Observable Markov Decision Process (POMDP) is widely used in probabilistic planning fo...
This paper presents an approach to artificial intelligence planning based on linear temporal logic ...
Many heuristics for cost-optimal planning are based on linear programming. We cover several interest...
Probabilistic Programming (PP) has recently emerged as an effective approach for building complex pr...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...