Title :
Bayesian support vector regression using a unified loss function
Author :
Chu, Wei ; Keerthi, S. Sathiya ; Ong, Chong Jin
Author_Institution :
Gatsby Comput. Neurosci. Unit, Univ. Coll. London, UK
Abstract :
In this paper, we use a unified loss function, called the soft insensitive loss function, for Bayesian support vector regression. We follow standard Gaussian processes for regression to set up the Bayesian framework, in which the unified loss function is used in the likelihood evaluation. Under this framework, the maximum a posteriori estimate of the function values corresponds to the solution of an extended support vector regression problem. The overall approach has the merits of support vector regression such as convex quadratic programming and sparsity in solution representation. It also has the advantages of Bayesian methods for model adaptation and error bars of its predictions. Experimental results on simulated and real-world data sets indicate that the approach works well even on large data sets.
Keywords :
Bayes methods; Gaussian processes; regression analysis; support vector machines; Bayesian framework; Bayesian support vector regression; error bars; likelihood evaluation; maximum a posteriori estimation; model adaptation; nonquadratic loss function; soft insensitive loss function; standard Gaussian processes; unified loss function; Bayesian methods; Biological neural networks; Gaussian processes; Ground penetrating radar; Kernel; Maximum a posteriori estimation; Predictive models; Quadratic programming; Support vector machine classification; Support vector machines; Bayes Theorem; Regression Analysis;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2003.820830