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UNIFORM-IN-TIME WEAK ERROR ANALYSIS FOR STOCHASTIC GRADIENT DESCENT ALGORITHMS VIA DIFFUSION APPROXIMATION

机译:通过扩散近似随机梯度下降算法的均匀时间弱误差分析

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摘要

Diffusion approximation provides weak approximation for stochastic gradient descent algorithms in a finite time horizon. In this paper, we introduce new tools motivated by the backward error analysis of numerical stochastic differential equations into the theoretical framework of diffusion approximation, extending the validity of the weak approximation from finite to infinite time horizon. The new techniques developed in this paper enable us to characterize the asymptotic behavior of constant-step-size SGD algorithms near a local minimum around which the objective functions are locally strongly convex, a goal previously unreachable within the diffusion approximation framework. Our analysis builds upon a truncated formal power expansion of the solution of a Kolmogorov equation arising from diffusion approximation, where the main technical ingredient is uniform-in-time bounds controlling the long-term behavior of the expansion coefficient functions near the local minimum. We expect these new techniques to bring new understanding of the behaviors of SGD near local minimum and greatly expand the range of applicability of diffusion approximation to cover wider and deeper aspects of stochastic optimization algorithms in data science.
机译:扩散近似为有限时间范围内的随机梯度下降算法提供弱近似。在本文中,我们引入了通过数值随机微分方程的后向误差分析的新工具进入扩散近似的理论框架,从有限到无限时间范围开始延伸弱近似的有效性。本文开发的新技术使我们能够表征恒定步骤尺寸SGD算法的渐近行为,附近局部最小值附近,目标函数在局部强烈凸起,该目标在扩散近似框架内之前无法访问。我们的分析在扩散近似引起的Kolmogorov方程的解决方案的截短正式电力扩展后,主要技术成分是控制局部最小值附近的扩展系数函数的长期行为的均匀界限。我们预计这些新技术将为局部最低限度附近的SGD行为带来新的理解,大大扩展了扩散近似的适用范围,以涵盖数据科学中随机优化算法的更广泛和更深入的方面。

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