Deep ensembles can be seen as the current state-of-the-art for uncertainty quantification in deep learning. While the approach was originally proposed as an non-Bayesian technique, arguments towards its Bayesian footing have been put forward as well. We show that deep ensembles can be viewed as an approximate Bayesian method by specifying the corresponding assumptions. Our finding leads to an improved approximation which results in an increased epistemic part of the uncertainty. Numerical examples suggest that the improved approximation can lead to more reliable uncertainties. Analytical derivations ensure easy calculation of results.
翻译:深层集合可被视为当前在深层学习中对不确定性进行量化的最先进技术。 虽然最初提出该方法是非拜伊西亚技术,但也提出了对巴伊西亚基础的论据。 我们表明,通过具体说明相应的假设,深层集合可被视为一种近似巴伊西亚方法。我们的调查结果导致近似值的改善,从而导致不确定性的缩略语部分增加。数字实例表明,经过改进的近似值可以导致更可靠的不确定性。分析推算可以确保结果的计算容易。