论文标题

主持人 - 通道共同进化灵感算法可实现强大的gan训练

Host-Pathongen Co-evolution Inspired Algorithm Enables Robust GAN Training

论文作者

Kucharavy, Andrei, Mhamdi, El Mahdi El, Guerraoui, Rachid

论文摘要

生成对抗网络(GAN)是一对人工神经网络,它们相互训练。来自发电机的输出与鉴别器的现实世界输入混合在一起,并训练两个网络,直到达到平衡为止,在该平衡中,鉴别器无法将生成的输入与真实的输入区分开。自引入以来,甘斯(Gans)允许产生真实电影,图像和文本的令人印象深刻的模仿,这些电影,图像和文字几乎没有人类明显。尽管表现令人印象深刻,但由于训练过程的稳定性,培训甘斯仍然比可靠的程序更重要,而不是可靠的程序。发电机容易受到模式下降和收敛到随机模式的影响,必须通过计算昂贵的多个重新启动来减轻这些模式。奇怪的是,甘斯与病原体及其宿主在生物学中的免疫系统的共同进化具有不可思议的相似性。在生物学的背景下,大多数潜在病原体确实永远不会做到,并被HOTS的免疫系统避免了。然而,有些人足够有效地出现严重状况和反复感染的风险。在这里,我们探讨了提出更强大的gan培训算法的相似性。我们从经验上表明,在使用较少的计算能力的同时,稳定性提高和更好地产生高质量图像的能力。

Generative adversarial networks (GANs) are pairs of artificial neural networks that are trained one against each other. The outputs from a generator are mixed with the real-world inputs to the discriminator and both networks are trained until an equilibrium is reached, where the discriminator cannot distinguish generated inputs from real ones. Since their introduction, GANs have allowed for the generation of impressive imitations of real-life films, images and texts, whose fakeness is barely noticeable to humans. Despite their impressive performance, training GANs remains to this day more of an art than a reliable procedure, in a large part due to training process stability. Generators are susceptible to mode dropping and convergence to random patterns, which have to be mitigated by computationally expensive multiple restarts. Curiously, GANs bear an uncanny similarity to a co-evolution of a pathogen and its host's immune system in biology. In a biological context, the majority of potential pathogens indeed never make it and are kept at bay by the hots' immune system. Yet some are efficient enough to present a risk of a serious condition and recurrent infections. Here, we explore that similarity to propose a more robust algorithm for GANs training. We empirically show the increased stability and a better ability to generate high-quality images while using less computational power.

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