DocumentCode
1757142
Title
Sparse Multivariate Gaussian Mixture Regression
Author
Weruaga, Luis ; Via, Javier
Author_Institution
Technol. & Res., Khalifa Univ. of Sci., Sharjah, United Arab Emirates
Volume
26
Issue
5
fYear
2015
fDate
42125
Firstpage
1098
Lastpage
1108
Abstract
Fitting a multivariate Gaussian mixture to data represents an attractive, as well as challenging problem, in especial when sparsity in the solution is demanded. Achieving this objective requires the concurrent update of all parameters (weight, centers, and precisions) of all multivariate Gaussian functions during the learning process. Such is the focus of this paper, which presents a novel method founded on the minimization of the error of the generalized logarithmic utility function (GLUF). This choice, which allows us to move smoothly from the mean square error (MSE) criterion to the one based on the logarithmic error, yields an optimization problem that resembles a locally convex problem and can be solved with a quasi-Newton method. The GLUF framework also facilitates the comparative study between both extremes, concluding that the classical MSE optimization is not the most adequate for the task. The performance of the proposed novel technique is demonstrated on simulated as well as realistic scenarios.
Keywords
Gaussian processes; mixture models; optimisation; regression analysis; GLUF framework; MSE criterion; MSE optimization; generalized logarithmic utility function; learning process; logarithmic error; mean square error criterion; multivariate Gaussian functions; optimization problem; quasi-Newton method; sparse multivariate Gaussian mixture regression; Cost function; Kernel; Minimization; Sparse matrices; Symmetric matrices; Vectors; Function approximation; Gaussian function mixture (GFM); logarithmic utility function; regression; sparsity; sparsity.;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2014.2334596
Filename
6853395
Link To Document