We propose a heuristic search algorithm for finding optimal policies in a new class of sequential decision making problems. This class extends Markov decision pro-cesses by a limited type of hidden state, paying tribute to the fact that many robotic problems indeed possess hidden state. The proposed search algorithm exploits the problem formulation to devise a fast bound-searching algorithm, which in turn cuts down the complexity of finding optimal solutions to the decision making problem by orders of magnitude. Extensive comparisons with state-of-the-art MDP and POMDP algorithms illustrate the effectiveness of our approach.
Markov Decision Problems (MDPs) are the foundation for many problems that are of interest to researc...
We present a first search algorithm for solving decentralized partially-observable Markov decision p...
Projecte final de Màster Oficial fet en col.laboració amb Institut de Robàtica i Informàtica Industr...
Many decision problems contain, in some form, a NP-hard combinatorial problem. Therefore decision su...
Partially Observable Markov Decision Processes (pomdps) are gen-eral models of sequential decision p...
We describe a heuristic search algorithm for Markov decision problems, called LAO*, that is derived ...
The search for finite-state controllers for partially observable Markov decision processes (POMDPs) ...
We present a heuristic-based algorithm for solving restricted Markov decision processes (MDPs). Our ...
We describe a planning algorithm that integrates two approaches to solving Markov decision processes...
Abstract: "We present a heuristic-based propagation algorithm for solving Markov decision processes ...
AbstractClassic heuristic search algorithms can find solutions that take the form of a simple path (...
We describe a planning algorithm that integrates two approaches to solving Markov decision processe...
We describe a planning algorithm that integrates two ap-proaches to solving Markov decision processe...
International audienceDecentralized partially observable Markov decision processes (Dec-POMDPs) are ...
We propose a new approach to the problem of searching a space of policies for a Markov decision pr...
Markov Decision Problems (MDPs) are the foundation for many problems that are of interest to researc...
We present a first search algorithm for solving decentralized partially-observable Markov decision p...
Projecte final de Màster Oficial fet en col.laboració amb Institut de Robàtica i Informàtica Industr...
Many decision problems contain, in some form, a NP-hard combinatorial problem. Therefore decision su...
Partially Observable Markov Decision Processes (pomdps) are gen-eral models of sequential decision p...
We describe a heuristic search algorithm for Markov decision problems, called LAO*, that is derived ...
The search for finite-state controllers for partially observable Markov decision processes (POMDPs) ...
We present a heuristic-based algorithm for solving restricted Markov decision processes (MDPs). Our ...
We describe a planning algorithm that integrates two approaches to solving Markov decision processes...
Abstract: "We present a heuristic-based propagation algorithm for solving Markov decision processes ...
AbstractClassic heuristic search algorithms can find solutions that take the form of a simple path (...
We describe a planning algorithm that integrates two approaches to solving Markov decision processe...
We describe a planning algorithm that integrates two ap-proaches to solving Markov decision processe...
International audienceDecentralized partially observable Markov decision processes (Dec-POMDPs) are ...
We propose a new approach to the problem of searching a space of policies for a Markov decision pr...
Markov Decision Problems (MDPs) are the foundation for many problems that are of interest to researc...
We present a first search algorithm for solving decentralized partially-observable Markov decision p...
Projecte final de Màster Oficial fet en col.laboració amb Institut de Robàtica i Informàtica Industr...