The notion of a Moreau envelope is central to the analysis of first-order optimization algorithms for machine learning. Yet, it has not been developed and extended to be applied to a deep network and, more broadly, to a machine learning system with a differentiable programming implementation. We define a compositional calculus adapted to Moreau envelopes and show how to integrate it within differentiable programming. The proposed framework casts in a mathematical optimization framework several variants of gradient back-propagation related to the idea of the propagation of virtual targets.
翻译:Moreau 信封的概念对于分析用于机器学习的第一阶优化算法至关重要,然而,它尚未开发并推广到深网络,更广义地说,尚未推广到具有不同程序实施的机器学习系统。我们定义了适合Moreau 信封的构成计算法,并展示了如何将其纳入不同程序。拟议框架在数学优化框架中提出了与虚拟目标传播理念有关的几种梯度回推进变式。