AbstractMarkov decision processes (MDPs) have proven to be popular models for decision-theoretic planning, but standard dynamic programming algorithms for solving MDPs rely on explicit, state-based specifications and computations. To alleviate the combinatorial problems associated with such methods, we propose new representational and computational techniques for MDPs that exploit certain types of problem structure. We use dynamic Bayesian networks (with decision trees representing the local families of conditional probability distributions) to represent stochastic actions in an MDP, together with a decision-tree representation of rewards. Based on this representation, we develop versions of standard dynamic programming algorithms that dire...
Real-world planning problems frequently involve mixtures of continuous and discrete state variables ...
Markov Decision Processes (MDPs) are not able to make use of domain information effectively due to t...
Title: Stochastic Dynamic Programming Problems: Theory and Applications Author: Gabriel Lendel Depar...
Markov decision processes(MDPs) have proven to be popular models for decision-theoretic planning, bu...
Markov decision process (MDP), originally studied in the Operations Research (OR) community, provide...
This paper addresses the problem of planning under uncertainty in large Markov Decision Processes (M...
This paper addresses the problem of planning under uncertainty in large Markov Decision Processes (M...
We present a dynamic programming approach for the solution of first-order Markov decisions processes...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
: Partially-observable Markov decision processes provide a very general model for decision-theoretic...
Extended abstract seulement sur internet EA EcolDurExtended abstract seulement sur internet EA EcolD...
Although many real-world stochastic planning problems are more naturally formulated by hybrid models...
We investigate the use Markov Decision Processes a.s a means of representing worlds in which action...
This chapter presents an overview of simulation-based techniques useful for solving Markov decision ...
Extended abstract seulement sur internet EA EcolDurWe are interested in the resolution of general Ma...
Real-world planning problems frequently involve mixtures of continuous and discrete state variables ...
Markov Decision Processes (MDPs) are not able to make use of domain information effectively due to t...
Title: Stochastic Dynamic Programming Problems: Theory and Applications Author: Gabriel Lendel Depar...
Markov decision processes(MDPs) have proven to be popular models for decision-theoretic planning, bu...
Markov decision process (MDP), originally studied in the Operations Research (OR) community, provide...
This paper addresses the problem of planning under uncertainty in large Markov Decision Processes (M...
This paper addresses the problem of planning under uncertainty in large Markov Decision Processes (M...
We present a dynamic programming approach for the solution of first-order Markov decisions processes...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
: Partially-observable Markov decision processes provide a very general model for decision-theoretic...
Extended abstract seulement sur internet EA EcolDurExtended abstract seulement sur internet EA EcolD...
Although many real-world stochastic planning problems are more naturally formulated by hybrid models...
We investigate the use Markov Decision Processes a.s a means of representing worlds in which action...
This chapter presents an overview of simulation-based techniques useful for solving Markov decision ...
Extended abstract seulement sur internet EA EcolDurWe are interested in the resolution of general Ma...
Real-world planning problems frequently involve mixtures of continuous and discrete state variables ...
Markov Decision Processes (MDPs) are not able to make use of domain information effectively due to t...
Title: Stochastic Dynamic Programming Problems: Theory and Applications Author: Gabriel Lendel Depar...