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Continuous and Discrete-time Accelerated Stochastic Mirror Descent for Strongly Convex Functions

机译:具有强凸功能的连续和离散时间加速随机镜下降

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We provide a second-order stochastic differential equation (SDE), which characterizes the continuous-time dynamics of accelerated stochastic mirror descent (ASMD) for strongly convex functions. This SDE plays a central role in designing new discrete-time ASMD algorithms via numerical discretization, and providing neat analyses of their convergence rates based on Lyapunov functions. Our results suggest that the only existing ASMD algorithm, namely, AC-SA proposed in Ghadimi & Lan (2012) is one instance of its kind, and we can actually derive new instances of ASMD with fewer tuning parameters. This sheds light on revisiting accelerated stochastic optimization through the lens of SDEs, which can lead to a better understanding of acceleration in stochastic optimization, as well as new simpler algorithms. Numerical experiments on both synthetic and real data support our theory.
机译:我们提供了一个二阶随机微分方程(SDE),它描述了强凸函数的加速随机镜下降(ASMD)的连续时间动力学。该SDE在通过数值离散设计新的离散时间ASMD算法以及在基于Lyapunov函数的收敛速度的简洁分析中起着核心作用。我们的结果表明,唯一存在的ASMD算法,即Ghadimi&Lan(2012)中提出的AC-SA是此类实例,并且我们实际上可以使用较少的调整参数来得出ASMD的新实例。这为通过SDE重新审视加速随机优化提供了启示,这可以导致人们更好地理解随机优化中的加速以及新的更简单的算法。综合和真实数据的数值实验都支持我们的理论。

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