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Be expert in multiple aspects and good at many modular neural network with reduced subnet relative training complexity

Authors :
Jiasen Wang
Chao Huang
Xudong Ye
Source :
ICCA
Publication Year :
2013
Publisher :
IEEE, 2013.

Abstract

This paper mainly aims at reducing relative learning complexity of subnets originate from “be Expert in Multiple aspects and Good at Many” (EMGM) modular neural network (MNN). Firstly, subnet learning algorithm which has a pure sequential execution style is built and convergence analysis is given. Secondly, in EMGM MNN system, an equivalent learning condition, which satisfies the criterion needed for the efficient training algorithm designed before, is founded for every subnet. Three identification problems have been involved to test the effectiveness and efficiency of the new framework in dealing with low dimension data. Both theoretical and experimental results show the new framework will reduce relative learning complexity of every subnet. The experiment result also shows new framework can achieve comparable generalization capability with original one. Furthermore, Bias Variance analysis shows maximum ability of generalization performance improvement of EMGM MNN may exist and the improvement comes from the improvement of bias estimation accuracy.

Details

Database :
OpenAIRE
Journal :
2013 10th IEEE International Conference on Control and Automation (ICCA)
Accession number :
edsair.doi...........622f79b950a75f0aba48d04766dac13f
Full Text :
https://doi.org/10.1109/icca.2013.6565054