DocumentCode :
1421738
Title :
Multiobjective Neural Network Ensembles Based on Regularized Negative Correlation Learning
Author :
Chen, Huanhuan ; Yao, Xin
Author_Institution :
Centre of Excellence for Res. in Comput. Intell. & Applic. (CERCIA), Univ. of Birmingham, Birmingham, UK
Volume :
22
Issue :
12
fYear :
2010
Firstpage :
1738
Lastpage :
1751
Abstract :
Negative Correlation Learning (NCL) [CHECK END OF SENTENCE], [CHECK END OF SENTENCE] is a neural network ensemble learning algorithm which introduces a correlation penalty term to the cost function of each individual network so that each neural network minimizes its mean-square-error (MSE) together with the correlation. This paper describes NCL in detail and observes that the NCL corresponds to training the entire ensemble as a single learning machine that only minimizes the MSE without regularization. This insight explains that NCL is prone to overfitting the noise in the training set. The paper analyzes this problem and proposes the multiobjective regularized negative correlation learning (MRNCL) algorithm which incorporates an additional regularization term for the ensemble and uses the evolutionary multiobjective algorithm to design ensembles. In MRNCL, we define the crossover and mutation operators and adopt nondominated sorting algorithm with fitness sharing and rank-based fitness assignment. The experiments on synthetic data as well as real-world data sets demonstrate that MRNCL achieves better performance than NCL, especially when the noise level is nontrivial in the data set. In the experimental discussion, we give three reasons why our algorithm outperforms others.
Keywords :
evolutionary computation; learning (artificial intelligence); mathematical operators; mean square error methods; neural nets; sorting; correlation penalty term; cost function; crossover operator; evolutionary multiobjective algorithm; fitness sharing; mean-square-error; multiobjective neural network ensembles; multiobjective regularized negative correlation learning algorithm; mutation operator; neural network ensemble learning algorithm; nondominated sorting algorithm; rank-based fitness assignment; Algorithm design and analysis; Application software; Computational intelligence; Cost function; Genetic mutations; Machine learning; Machine learning algorithms; Neural networks; Noise level; Sorting; Multiobjective algorithm; multiobjective learning; negative correlation learning; neural network ensembles; neural networks; regularization.;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2010.26
Filename :
5416712
Link To Document :
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