Title :
Robust Relevance Vector Regression With Trimmed Likelihood Function
Author :
Yang, Biao ; Zhang, Zengke ; Sun, Zhengshun
Author_Institution :
Tsinghua Univ., Beijing
Abstract :
This letter proposes a novel robust regression method called trimmed relevance vector regression (TRVR) that redefines the likelihood function as a trimmed likelihood function over a trimmed subset. A re-weighted strategy is introduced to find the robust trimmed subset that does not include outliers. Simultaneously, by maximizing the trimmed likelihood function with the relevance vector machine (RVM) framework, the weights of the regression model can be estimated. The experimental results have been presented to demonstrate that the proposed method is highly robust.
Keywords :
learning (artificial intelligence); maximum likelihood estimation; regression analysis; relevance vector machine; reweighted strategy; trimmed likelihood function; trimmed relevance vector regression; Bayesian methods; Contamination; Estimation error; Gaussian noise; Helium; Kernel; Noise robustness; Resists; Sun; Training data; Least trimmed square (LTS); relevance vector machine (RVM); robust regression;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2007.898327