Proceedings of the Korean Information Science Society Conference (한국정보과학회:학술대회논문집)
- 2004.04b
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- Pages.568-570
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- 2004
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- 1598-5164(pISSN)
Improved Error Backpropagation by Elastic Learning Rate and Online Update
가변학습율과 온라인모드를 이용한 개선된 EBP 알고리즘
- Lee, Tae-Seung (Hankuk Aviation University) ;
- Park, Ho-Jin (Information and Communications University)
- Published : 2004.04.01
Abstract
The error-backpropagation (EBP) algerithm for training multilayer perceptrons (MLPs) is known to have good features of robustness and economical efficiency. However, the algorithm has difficulty in selecting an optimal constant learning rate and thus results in non-optimal learning speed and inflexible operation for working data. This paper Introduces an elastic learning rate that guarantees convergence of learning and its local realization by online upoate of MLP parameters Into the original EBP algorithm in order to complement the non-optimality. The results of experiments on a speaker verification system with Korean speech database are presented and discussed to demonstrate the performance improvement of the proposed method in terms of learning speed and flexibility fer working data of the original EBP algorithm.
Keywords