论文标题

神经2020竞赛:预测深度学习的概括

NeurIPS 2020 Competition: Predicting Generalization in Deep Learning

论文作者

Jiang, Yiding, Foret, Pierre, Yak, Scott, Roy, Daniel M., Mobahi, Hossein, Dziugaite, Gintare Karolina, Bengio, Samy, Gunasekar, Suriya, Guyon, Isabelle, Neyshabur, Behnam

论文摘要

理解深度学习中的概括可以说是深度学习中最重要的问题之一。从模式识别到复杂的决策,深度学习已成功地采用了许多问题,但是许多最近的研究人员对深度学习提出了许多担忧,其中最重要的是概括。尽管尝试了许多尝试,但传统的统计学习方法尚未能够就深度学习的作用提供令人满意的解释。最近的一系列作品旨在通过试图通过复杂性度量来预测概括性能来解决问题。在这场竞争中,我们邀请社区提出可以准确预测模型概括的复杂性度量。强大而一般的复杂性度量可能会导致对深度学习的潜在机制和深度模型对看不见的数据的行为有更好的了解,或者阐明更好的概括界限。所有这些结果对于使深度学习变得更加强大和可靠至关重要。

Understanding generalization in deep learning is arguably one of the most important questions in deep learning. Deep learning has been successfully adopted to a large number of problems ranging from pattern recognition to complex decision making, but many recent researchers have raised many concerns about deep learning, among which the most important is generalization. Despite numerous attempts, conventional statistical learning approaches have yet been able to provide a satisfactory explanation on why deep learning works. A recent line of works aims to address the problem by trying to predict the generalization performance through complexity measures. In this competition, we invite the community to propose complexity measures that can accurately predict generalization of models. A robust and general complexity measure would potentially lead to a better understanding of deep learning's underlying mechanism and behavior of deep models on unseen data, or shed light on better generalization bounds. All these outcomes will be important for making deep learning more robust and reliable.

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