We analyze the convergence rate of various momentum-based optimization algorithms from a dynamical systems point of view. Our analysis exploits fundamental topological properties, such as the continuous dependence of iterates on their initial conditions, to provide a simple characterization of convergence rates. In many cases, closed-form expressions are obtained that relate algorithm parameters to the convergence rate. The analysis encompasses discrete time and continuous time, as well as time-invariant and time-variant formulations, and is not limited to a convex or Euclidean setting. In addition, the article rigorously establishes why symplectic discretization schemes are important for momentum-based optimization algorithms, and provides a characterization of algorithms that exhibit accelerated convergence.
翻译:我们从动态系统的角度分析各种动力优化算法的趋同率。我们的分析利用了基本地形特性,例如迭代持续依赖初始条件,对趋同率进行简单的定性。在许多情况下,获取了将算法参数与趋同率相联系的封闭式表达方式。分析包括离散的时间和连续时间,以及时间变化和时间变化的配方,而不限于对流或Euclidean的设置。此外,文章严格地说明了互换分解计划为什么对基于动力的优化算法很重要,并对显示加速趋同的算法作了定性。