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Nesterov Acceleration for Equality-Constrained Convex Optimization via Continuously Differentiable Penalty Functions

机译:Nesterov通过连续可分辨率的惩罚功能进行平等约束的凸优化的加速

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摘要

We propose a framework to use Nesterov's accelerated method for constrained convex optimization problems. Our approach consists of first reformulating the original problem as an unconstrained optimization problem using a continuously differentiable exact penalty function. This reformulation is based on replacing the Lagrange multipliers in the augmented Lagrangian of the original problem by Lagrange multiplier functions. The expressions of these Lagrange multiplier functions, which depend upon the gradients of the objective function and the constraints, can make the unconstrained penalty function non-convex in general even if the original problem is convex. We establish sufficient conditions on the objective function and the constraints of the original problem under which the unconstrained penalty function is convex. This enables us to use Nesterov's accelerated gradient method for unconstrained convex optimization and achieve a guaranteed rate of convergence which is better than the state-of-the-art first-order algorithms for constrained convex optimization. Simulations illustrate our results.
机译:我们提出了一个框架,可以使用Nesterov的加速方法进行约束凸优化问题。我们的方法包括使用持续可分散的精确惩罚功能首次将原始问题作为无约束优化问题的重构。这种重构是基于通过拉格朗日乘数函数替换在原始问题的增强拉格朗日中的拉格朗日乘数。这些拉格朗日乘法器函数的表达式取决于目标函数的梯度和约束,即使原始问题是凸的,也可以使不受约束的惩罚功能非凸。我们对客观函数的充分条件和原始问题的限制在于不受约束的惩罚功能是凸的。这使我们能够利用Nesterov的加速梯度方法来针对无约束的凸优化,并实现优于用于约束凸优化的最先进的一阶算法的保证的收敛速度。模拟说明了我们的结果。

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