Partially Observable Monte-Carlo Planning (POMCP) is a powerful online algorithm able to generate approximate policies for large Partially Observable Markov Decision Processes. The online nature of this method supports scalability by avoiding complete policy representation. The lack of an explicit representation however hinders interpretability. In this work, we propose a methodology based on Satisfiability Modulo Theory (SMT) for analyzing POMCP policies by inspecting their traces, namely sequences of belief-action-observation triplets generated by the algorithm. The proposed method explores local properties of policy behavior to identify unexpected decisions. We propose an iterative process of trace analysis consisting of three main steps...
RECENT research in the field of robotics has demonstrated the utility of probabilistic models for pe...
Autonomous mobile robots employed in industrial applications often operate in complex and uncertain ...
This thesis experimentally addresses the issue of planning under uncertainty in robotics, with refer...
Partially Observable Monte-Carlo Planning (POMCP) is a powerful online algorithm able to generate ap...
Partially Observable Monte Carlo Planning (POMCP) is a powerful online algorithm that can generate a...
Partially Observable Monte-Carlo Planning (POMCP) is a powerful online algorithm that can generate o...
Partially Observable Monte-Carlo Planning (POMCP) is a powerful online algorithm able to generate ap...
Partially Observable Monte Carlo Planning is a recently proposed online planning algorithm which mak...
Partially Observable Markov Decision Processes (POMDPs) define a useful formalism to express probabi...
We address the problem of learning relationships on state variables in Partially Observable Markov D...
AbstractIn this paper, we bring techniques from operations research to bear on the problem of choosi...
Online planning methods for partially observable Markov decision processes (POMDPs) have re- cently ...
AbstractThis study extends the framework of partially observable Markov decision processes (POMDPs) ...
Deciding how to act in partially observable environments remains an active area of research. Identi...
Autonomous agents that operate in the real world must often deal with partial observability, which i...
RECENT research in the field of robotics has demonstrated the utility of probabilistic models for pe...
Autonomous mobile robots employed in industrial applications often operate in complex and uncertain ...
This thesis experimentally addresses the issue of planning under uncertainty in robotics, with refer...
Partially Observable Monte-Carlo Planning (POMCP) is a powerful online algorithm able to generate ap...
Partially Observable Monte Carlo Planning (POMCP) is a powerful online algorithm that can generate a...
Partially Observable Monte-Carlo Planning (POMCP) is a powerful online algorithm that can generate o...
Partially Observable Monte-Carlo Planning (POMCP) is a powerful online algorithm able to generate ap...
Partially Observable Monte Carlo Planning is a recently proposed online planning algorithm which mak...
Partially Observable Markov Decision Processes (POMDPs) define a useful formalism to express probabi...
We address the problem of learning relationships on state variables in Partially Observable Markov D...
AbstractIn this paper, we bring techniques from operations research to bear on the problem of choosi...
Online planning methods for partially observable Markov decision processes (POMDPs) have re- cently ...
AbstractThis study extends the framework of partially observable Markov decision processes (POMDPs) ...
Deciding how to act in partially observable environments remains an active area of research. Identi...
Autonomous agents that operate in the real world must often deal with partial observability, which i...
RECENT research in the field of robotics has demonstrated the utility of probabilistic models for pe...
Autonomous mobile robots employed in industrial applications often operate in complex and uncertain ...
This thesis experimentally addresses the issue of planning under uncertainty in robotics, with refer...