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Uncertainty Quantification for Sparse Deep Learning

机译:稀疏深度学习的不确定性量化

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Deep learning methods continue to have a decided impact on machine learning, both in theory and in practice. Statistical theoretical developments have been mostly concerned with approximability or rates of estimation when recovering infinite dimensional objects (curves or densities). Despite the impressive array of available theoretical results, the literature has been largely silent about uncertainty quantification for deep learning. This paper takes a step forward in this important direction by taking a Bayesian point of view. We study Gaussian approximability of certain aspects of posterior distributions of sparse deep ReLU architectures in non-parametric regression. Building on tools from Bayesian non-parametrics, we provide semi-parametric Bernstein-von Mises theorems for linear and quadratic functionals, which guarantee that implied Bayesian credible regions have valid frequentist coverage. Our results provide new theoretical justifications for (Bayesian) deep learning with ReLU activation functions, highlighting their inferential potential.
机译:深度学习方法继续在理论和实践中对机器学习产生决定的影响。统计学理论发展主要涉及恢复无限尺寸对象(曲线或密度)时估计的近似性或估计率。尽管有令人印象深刻的可用理论结果,但文献在很大程度上沉默了深度学习的不确定性量化。本文通过参加贝叶斯的观点,在这个重要方向前进。我们研究了非参数回归中稀疏的深度框架架构的后分布的若干方面的高斯近似性。在贝叶斯非参数学的工具上建立,我们为线性和二次功能提供半参数伯尔尼斯坦 - von定理,这是暗示贝叶斯可信地区的保证有效的频繁覆盖。我们的结果为recu激活功能提供了新的(贝叶斯)深度学习的新的理论理由,突出了他们的推理潜力。

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