Title :
Gaussian mixture density modeling and decomposition with weighted likelihood
Author :
Yang, Xiaobing ; Kong, Fansheng ; Xu, Weihua ; Liu, Bihong
Author_Institution :
Artificial Intelligence Inst., Zhejiang Univ., Hangzhou, China
Abstract :
A classic yet challenging research topic, Gaussian mixture density modeling and decomposition, is attracting much attention in a variety of disciplines. A Gaussian mixture density can be viewed as a contaminated Gaussian density with respect to each Gaussian component in the mixture. A component may not be well represented when the data is analyzed from a mixture density. In this article, Gaussian mixture density modeling and decomposition with weighted likelihood is studied. Then based on the Gaussian mixture density decomposition (GMDD) algorithm and weighted likelihood equations (WLEs), a new algorithm, called weighted Gaussian mixture density decomposition (WGMDD) algorithm is proposed. The WGMDD algorithm is effective and robust. It produces estimates with low bias and mean square error, and makes the applications of GMDD algorithm more extensive and more exact. A small simulation experiment illustrates the above point.
Keywords :
Gaussian processes; least mean squares methods; maximum likelihood estimation; modelling; Gaussian component; Gaussian mixture density modeling; means square error methods; weighted Gaussian mixture density decomposition; weighted likelihood equations; Artificial intelligence; Condition monitoring; Data analysis; Equations; Industrial control; Maximum likelihood estimation; Mean square error methods; Parameter estimation; Process control; Robustness;
Conference_Titel :
Intelligent Control and Automation, 2004. WCICA 2004. Fifth World Congress on
Print_ISBN :
0-7803-8273-0
DOI :
10.1109/WCICA.2004.1342311