Noise tolerance of output-coded neural net

K. Al-Mashouq
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引用次数: 3

Abstract

Error correcting codes were used previously to encode the output of feed-forward neural nets. We study the effect of additive noise on the performance of a coded net and compare it to an uncoded net. Some necessary analytical tools are developed to estimate the performance of a neural net in the presence of noise. Simulation examples (isolated word utterances recognition) are also included to show the advantage of coding in reducing the probability of classification error due to noise. In addition we point the use of the estimated performance as a lower limit to the performance of a multilayer neural net.
输出编码神经网络的噪声容忍
纠错码以前被用来对前馈神经网络的输出进行编码。我们研究了加性噪声对编码网络性能的影响,并将其与未编码网络进行了比较。开发了一些必要的分析工具来估计存在噪声的神经网络的性能。还包括仿真示例(孤立单词语音识别),以显示编码在减少由于噪声引起的分类错误概率方面的优势。此外,我们指出使用估计性能作为多层神经网络性能的下限。
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