DocumentCode :
1810834
Title :
Averaging ensembles of self-organising mixture networks for density estimation
Author :
Yin, Hujun ; Allinson, Nigel M.
Author_Institution :
Dept. of Electr. Eng. & Electron., Univ. of Manchester Inst. of Sci. & Technol., UK
Volume :
2
fYear :
1999
fDate :
36342
Firstpage :
1456
Abstract :
The self-organising mixture network (SOMN) is a learning algorithm for mixture densities, derived from minimising the Kullback-Leibler information by means of stochastic approximation methods. It has been shown the SOMN converges faster than the EM-based algorithms and generalises better as it is based on the expected likelihood rather than the sample likelihood. The derived algorithm has similar updating forms to the self-organising map (SOM), thus reveals the mixture interpreter role of the neighbourhood function used in the SOM. When the sample set is small, overfitting problems often occur in most algorithms. Further improvement can be achieved by averaging ensembles of the SOMNs. The algorithms have been applied to both experimental data and real-world problems. The results show that smoothed mixtures with improved accuracy have been obtained. Estimation variance has been reduced
Keywords :
approximation theory; estimation theory; learning (artificial intelligence); probability; self-organising feature maps; stochastic processes; Kullback-Leibler information; averaging ensembles; density estimation; learning algorithm; overfitting; probability; self-organising map; self-organising mixture networks; stochastic approximation; Approximation algorithms; Approximation methods; Bayesian methods; Computational efficiency; Convergence; Iterative algorithms; Maximum likelihood estimation; Prototypes; Stochastic processes; Unsupervised learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 1999. IJCNN '99. International Joint Conference on
Conference_Location :
Washington, DC
ISSN :
1098-7576
Print_ISBN :
0-7803-5529-6
Type :
conf
DOI :
10.1109/IJCNN.1999.831180
Filename :
831180
Link To Document :
بازگشت