Machine Learning in general and Deep Learning in particular has gained much interest in the recent decade and has shown significant performance improvements for many Computer Vision or Natural Language Processing tasks. In order to deal with databases which have just a small amount of training samples or to deal with models which have large amount of parameters, the regularization is indispensable. In this paper, we enforce the manifold preservation (manifold learning) from the original data into latent presentation by using "manifold attack". The later is inspired in a fashion of adversarial learning : finding virtual points that distort mostly the manifold preservation then using these points as supplementary samples to train the model. We show that our approach of regularization provides improvements for the accuracy rate and for the robustness to adversarial examples.
翻译:总体而言,机器学习,特别是深学习,在近十年中引起了很大的兴趣,并表明许多计算机视觉或自然语言处理任务取得了显著的绩效改进。为了处理只有少量培训样本的数据库或处理具有大量参数的模型,规范化是不可或缺的。在本文件中,我们通过使用“玩偶攻击”将原始数据中的多重保存(手工学习)应用到潜在演示中。后一种学习是一种对抗性学习的启发:找到虚拟点,这些点主要扭曲了多重保存,然后用这些点作为补充样本来培训模型。我们表明,我们的规范化方法提高了准确率和对对抗实例的坚固性。