A Stopping Criterion for the Training Process of the Specific Signal Generator

INFORMATION TECHNOLOGY AND CONTROL(2021)

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摘要
Mathematical description for a complex signal is very important in engineering application but there are many challenges in reality. The emergence of the Generative Adversarial Network (GAN) shows the possibility to train a single neural network to be a Specific Signal Generator (SSG), which is only controlled by a random vector with several elements. However, there is no explicit criterion for the GAN training process to stop, and in real applications the training always stops after a certain big iteration. In this paper, a serious issue was discussed during the process to use GAN as a SSG. And, an explicit criterion for the GAN as a SSG to stop the training process were proposed. Several experiments were carried out to illustrate the issues mentioned above and the effectiveness of the stopping criterion proposed in this paper.
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关键词
Generative Adversarial Network, Specific Signal Generator, Stopping Criterion
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