论文标题

迪斯科发烧:通过距离相关性的强大网络

DisCo Fever: Robust Networks Through Distance Correlation

论文作者

Kasieczka, Gregor, Shih, David

论文摘要

虽然深度学习已被证明在LHC及其他地区的监督分类任务方面非常成功,但对于实际应用,原始分类精度通常不是唯一的考虑。一个至关重要的问题是网络预测的稳定性,即输入数据的各个特征或针对系统扰动的变化。我们提出了一种基于“距离相关”(迪斯科)的新应用(一种量化非线性相关性的度量),该方法与最先进的对抗性脱字网络相同,但更简单,更稳定,可以训练。为了证明我们的方法的有效性,我们仔细仔细铸造了最新的ATLAS研究,该研究应用于增强,HADRONIC W-TAGGING。我们还展示了迪斯科正规化对更强大的卷积神经网络的可行性,以及Hadronic Top标记的问题。

While deep learning has proven to be extremely successful at supervised classification tasks at the LHC and beyond, for practical applications, raw classification accuracy is often not the only consideration. One crucial issue is the stability of network predictions, either versus changes of individual features of the input data, or against systematic perturbations. We present a new method based on a novel application of "distance correlation" (DisCo), a measure quantifying non-linear correlations, that achieves equal performance to state-of-the-art adversarial decorrelation networks but is much simpler and more stable to train. To demonstrate the effectiveness of our method, we carefully recast a recent ATLAS study of decorrelation methods as applied to boosted, hadronic W-tagging. We also show the feasibility of DisCo regularization for more powerful convolutional neural networks, as well as for the problem of hadronic top tagging.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源