This paper develops and analyzes an accelerated proximal descent method for finding stationary points of nonconvex composite optimization problems. The objective function is of the form $f+h$ where $h$ is a proper closed convex function, $f$ is a differentiable function on the domain of $h$, and $\nabla f$ is Lipschitz continuous on the domain of $h$. The main advantage of this method is that it is "parameter-free" in the sense that it does not require knowledge of the Lipschitz constant of $\nabla f$ or of any global topological properties of $f$. It is shown that the proposed method can obtain an $\varepsilon$-approximate stationary point with iteration complexity bounds that are optimal, up to logarithmic terms over $\varepsilon$, in both the convex and nonconvex settings. Some discussion is also given about how the proposed method can be leveraged in other existing optimization frameworks, such as min-max smoothing and penalty frameworks for constrained programming, to create more specialized parameter-free methods. Finally, numerical experiments are presented to support the practical viability of the method.
翻译:本文开发并分析一种加速的纯度下降方法, 用于查找非convex复合优化问题的固定点。 客观功能是 $f+h$ 格式, 美元是一个适当的封闭的 convex 函数, $f$是一个在$$的域上可以区分的函数, $nabla f$ 是利普西茨 的域 。 此方法的主要优点在于它“ 无参数 ”, 因为它不需要知道利普西茨常数$\ nabla f$ 或任何全球地貌特性$ff$。 显示, 拟议的方法可以获得 $\ varepsilon $- portal Statreality point 点, 与 $\ varepsluslon 相近, 在 $\ varepslus 和 unconvex 的域中, 。 其主要的优点在于, 如何在其他现有的优化框架中, 如 minom- max sluding frammeal and gramme for the produding the productional- review fial- folvieward