DocumentCode :
1335786
Title :
Generalized Constraint Neural Network Regression Model Subject to Linear Priors
Author :
Qu, Ya-Jun ; Hu, Bao-Gang
Author_Institution :
Nat. Lab. of Pattern Recognition, Inst. of Autom., Beijing, China
Volume :
22
Issue :
12
fYear :
2011
Firstpage :
2447
Lastpage :
2459
Abstract :
This paper is reports an extension of our previous investigations on adding transparency to neural networks. We focus on a class of linear priors (LPs), such as symmetry, ranking list, boundary, monotonicity, etc., which represent either linear-equality or linear-inequality priors. A generalized constraint neural network-LPs (GCNN-LPs) model is studied. Unlike other existing modeling approaches, the GCNN-LP model exhibits its advantages. First, any LP is embedded by an explicitly structural mode, which may add a higher degree of transparency than using a pure algorithm mode. Second, a direct elimination and least squares approach is adopted to study the model, which produces better performances in both accuracy and computational cost over the Lagrange multiplier techniques in experiments. Specific attention is paid to both “hard (strictly satisfied)” and “soft (weakly satisfied)” constraints for regression problems. Numerical investigations are made on synthetic examples as well as on the real-world datasets. Simulation results demonstrate the effectiveness of the proposed modeling approach in comparison with other existing approaches.
Keywords :
constraint handling; neural nets; regression analysis; GCNN-LP model; Lagrange multiplier technique; computational cost; generalized constraint neural network regression model; least square approach; linear-inequality priors; real world data sets; regression problem; structural mode; Adaptation models; Data mining; Machine learning; Neural networks; Radial basis function networks; Regression analysis; Training; Linear constraints; linear priors; nonlinear regression; radial basis function networks; transparency; Algorithms; Artificial Intelligence; Computer Simulation; Linear Models; Regression Analysis;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2011.2167348
Filename :
6030948
Link To Document :
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