Title
A nonparametric Bayesian approach toward robot learning by demonstration
Abstract
In the past years, many authors have considered application of machine learning methodologies to effect robot learning by demonstration. Gaussian mixture regression (GMR) is one of the most successful methodologies used for this purpose. A major limitation of GMR models concerns automatic selection of the proper number of model states, i.e., the number of model component densities. Existing methods, including likelihood- or entropy-based criteria, usually tend to yield noisy model size estimates while imposing heavy computational requirements. Recently, Dirichlet process (infinite) mixture models have emerged in the cornerstone of nonparametric Bayesian statistics as promising candidates for clustering applications where the number of clusters is unknown a priori. Under this motivation, to resolve the aforementioned issues of GMR-based methods for robot learning by demonstration, in this paper we introduce a nonparametric Bayesian formulation for the GMR model, the Dirichlet process GMR model. We derive an efficient variational Bayesian inference algorithm for the proposed model, and we experimentally investigate its efficacy as a robot learning by demonstration methodology, considering a number of demanding robot learning by demonstration scenarios.
Year
DOI
Venue
2012
10.1016/j.robot.2012.02.005
Robotics and Autonomous Systems
Keywords
Field
DocType
Gaussian mixture regression,Robot learning by demonstration,Dirichlet process,Variational Bayes,Nonparametric statistics
Robot learning,Dirichlet process,Bayesian inference,Computer science,A priori and a posteriori,Nonparametric statistics,Artificial intelligence,Robot,Cluster analysis,Mixture model,Machine learning
Journal
Volume
Issue
ISSN
60
6
0921-8890
Citations 
PageRank 
References 
14
0.70
19
Authors
3
Name
Order
Citations
PageRank
Sotirios P. Chatzis125024.25
Dimitrios Korkinof2283.68
Yiannis Demiris393886.45