Detection of Subtle Context-Dependent Model Inaccuracies in High-Dimensional Robot Domains
Abstract
Autonomous robots often rely on models of their sensing and actions for intelligent decision making. However, when operating in unconstrained environments, the complexity of the world makes it infeasible to create models that are accurate in every situation. This article addresses the problem of using potentially large and high-dimensional sets of robot execution data to detect situations in which a robot model is inaccurate-that is, detecting context-dependent model inaccuracies in a high-dimensional context space. To find inaccuracies tractably, the robot conducts an informed search through low-dimensional projections of execution data to find parametric Regions of Inaccurate Modeling (RIMs). Empirical evidence from two robot domains shows that this approach significantly enhances the detection power of existing RIM-detection algorithms in high-dimensional spaces.
BibTeX
@article{Mendoza-2016-122279,author = {Juan Pablo Mendoza and Reid Simmons and Manuela Veloso},
title = {Detection of Subtle Context-Dependent Model Inaccuracies in High-Dimensional Robot Domains},
journal = {Journal of Big Data},
year = {2016},
month = {December},
volume = {4},
number = {4},
pages = {269 - 285},
}