The field of Deep Learning is rich with empirical evidence of human-like performance on a variety of regression, classification, and control tasks. However, despite these successes, the field lacks strong theoretical error bounds and consistent measures of network generalization and learned invariances. In this work, we introduce two new measures, the Gi-score and Pal-score, that capture a deep neural network's generalization capabilities. Inspired by the Gini coefficient and Palma ratio, measures of income inequality, our statistics are robust measures of a network's invariance to perturbations that accurately predict generalization gaps, i.e., the difference between accuracy on training and test sets.
翻译:深层学习领域丰富了各种回归、分类和控制任务方面的类似人类业绩的经验证据,然而,尽管取得了这些成功,这个领域缺乏很强的理论错误界限和一致的网络通用和学习差异计量标准。在这项工作中,我们引入了两项新措施,即Gi-score和Pal-score,它们捕捉了深层神经网络的概括能力。在基尼系数和帕尔马比率、收入不平等的衡量标准等启发下,我们的统计数据有力地衡量了一个网络在干扰准确预测一般化差距(即培训和测试组合的准确性差异)方面的逆差。