We consider the stochastic shortest path (SSP)problem for succinct Markov decision processes(MDPs), where the MDP consists of a set of vari-ables, and a set of nondeterministic rules that up-date the variables. First, we show that several ex-amples from the AI literature can be modeled assuccinct MDPs. Then we present computationalapproaches for upper and lower bounds for theSSP problem: (a) for computing upper bounds, ourmethod is polynomial-time in the implicit descrip-tion of the MDP; (b) for lower bounds, we present apolynomial-time (in the size of the implicit descrip-tion) reduction to quadratic programming. Our ap-proach is applicable even to infinite-state MDPs.Finally, we present experimental results to demon-strate the effectiven...
Markov decision process (MDP), originally studied in the Operations Research (OR) community, provide...
We consider partially observable Markov decision processes (POMDPs) with a set of target states and ...
Two extreme approaches can be applied to solve a probabilistic planning problem, namely closed loop ...
We consider the stochastic shortest path (SSP)problem for succinct Markov decision processes(MDPs), ...
International audienceThe paper deals with finite-state Markov decision processes (MDPs) with intege...
In this paper, we consider planning in stochastic shortest path problems, a subclass of Markov Decis...
In this invited contribution, we revisit the stochastic shortest path problem, and show how recent r...
This paperc onsidersS tochasticS hortestP ath( SSP)p roblemsi n probabilisticn etworks.A variety of ...
The stochastic shortest path problem (SSPP) asks to resolve the non-deterministic choices in a Marko...
The stochastic shortest path problem lies at the heart of many questions in the formal verification ...
International audienceThe stochastic shortest path problem (SSPP) asks to resolve the non-determinis...
We treat the problem of risk-aware control for stochastic shortest path (SSP) on Markov decision pro...
Stochastic Shortest Path Problems (SSPs) are a common representation for probabilistic planning prob...
Stochastic Shortest Path problems (SSPs) can be efficiently dealt with by the Real-Time Dynamic Prog...
International audienceWe consider the objective of computing an ε-optimal policy in a stochastic sho...
Markov decision process (MDP), originally studied in the Operations Research (OR) community, provide...
We consider partially observable Markov decision processes (POMDPs) with a set of target states and ...
Two extreme approaches can be applied to solve a probabilistic planning problem, namely closed loop ...
We consider the stochastic shortest path (SSP)problem for succinct Markov decision processes(MDPs), ...
International audienceThe paper deals with finite-state Markov decision processes (MDPs) with intege...
In this paper, we consider planning in stochastic shortest path problems, a subclass of Markov Decis...
In this invited contribution, we revisit the stochastic shortest path problem, and show how recent r...
This paperc onsidersS tochasticS hortestP ath( SSP)p roblemsi n probabilisticn etworks.A variety of ...
The stochastic shortest path problem (SSPP) asks to resolve the non-deterministic choices in a Marko...
The stochastic shortest path problem lies at the heart of many questions in the formal verification ...
International audienceThe stochastic shortest path problem (SSPP) asks to resolve the non-determinis...
We treat the problem of risk-aware control for stochastic shortest path (SSP) on Markov decision pro...
Stochastic Shortest Path Problems (SSPs) are a common representation for probabilistic planning prob...
Stochastic Shortest Path problems (SSPs) can be efficiently dealt with by the Real-Time Dynamic Prog...
International audienceWe consider the objective of computing an ε-optimal policy in a stochastic sho...
Markov decision process (MDP), originally studied in the Operations Research (OR) community, provide...
We consider partially observable Markov decision processes (POMDPs) with a set of target states and ...
Two extreme approaches can be applied to solve a probabilistic planning problem, namely closed loop ...