A new robust training algorithm for a class of single-hidden layer feedforward neural networks |
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Authors: | Zhihong ManAuthor Vitae Kevin LeeAuthor VitaeDianhui WangAuthor Vitae Zhenwei CaoAuthor VitaeChunyan MiaoAuthor Vitae |
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Affiliation: | a Faculty of Engineering and Industrial Sciences, Swinburne University of Technology, Vic. 3122, Australia b Department of Computer Science and Computer Engineering, La Trobe University, Vic. 3086, Australia c School of Computer Engineering, Nanyang Technological University, Singapore 639798, Singapore |
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Abstract: | A robust training algorithm for a class of single-hidden layer feedforward neural networks (SLFNs) with linear nodes and an input tapped-delay-line memory is developed in this paper. It is seen that, in order to remove the effects of the input disturbances and reduce both the structural and empirical risks of the SLFN, the input weights of the SLFN are assigned such that the hidden layer of the SLFN performs as a pre-processor, and the output weights are then trained to minimize the weighted sum of the output error squares as well as the weighted sum of the output weight squares. The performance of an SLFN-based signal classifier trained with the proposed robust algorithm is studied in the simulation section to show the effectiveness and efficiency of the new scheme. |
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Keywords: | Linear FIR filter Extreme learning machine Feedforward neural networks Signal processing |
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