DocumentCode
1462696
Title
Divide-and-conquer learning and modular perceptron networks
Author
Fu, Hsin-Chia ; Lee, Yen-Po ; Chiang, Cheng-Chin ; Pao, Hsiao-Tien
Author_Institution
Dept. of Comput. Sci. & Inf. Eng., Nat. Chiao Tung Univ., Hsinchu, Taiwan
Volume
12
Issue
2
fYear
2001
fDate
3/1/2001 12:00:00 AM
Firstpage
250
Lastpage
263
Abstract
A novel modular perceptron network (MPN) and divide-and-conquer learning (DCL) schemes for the design of modular neural networks are proposed. When a training process in a multilayer perceptron falls into a local minimum or stalls in a flat region, the proposed DCL scheme is applied to divide the current training data region into two easier to be learned regions. The learning process continues when a self-growing perceptron network and its initial weight estimation are constructed for one of the newly partitioned regions. Another partitioned region will resume the training process on the original perceptron network. Data region partitioning, weight estimating and learning are iteratively repeated until all the training data are completely learned by the MPN. We evaluated and compared the proposed MPN with several representative neural networks on the two-spirals problem and real-world dataset. The MPN achieved better weight learning performance by requiring much less data presentations during the network training phases, and better generalization performance, and less processing time during the retrieving phase
Keywords
divide and conquer methods; learning (artificial intelligence); multilayer perceptrons; data region partitioning; divide-and-conquer learning; modular perceptron network; multilayer perceptron; weight estimation; Backpropagation algorithms; Computer science; Councils; Information retrieval; Multilayer perceptrons; Neural networks; Neurons; Pursuit algorithms; Resumes; Training data;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.914522
Filename
914522
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