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CONDITIONAL GRADIENT SLIDING FOR CONVEX OPTIMIZATION

机译:有条件的梯度滑动可优化凸面

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摘要

In this paper, we present a new conditional gradient type method for convex optimization by calling a linear optimization (LO) oracle to minimize a series of linear functions over the feasible set. Different from the classic conditional gradient method, the conditional gradient sliding (CGS) algorithm developed herein can skip the computation of gradients from time to time and, as a result, can achieve the optimal complexity bounds in terms of not only the number of calls to the LO oracle but also the number of gradient evaluations. More specifically, we show that the CGS method requires O (1/root epsilon) and O(log(1/epsilon)) gradient evaluations, respectively, for solving smooth and strongly convex problems, while still maintaining the optimal O(1/epsilon) bound on the number of calls to the LO oracle. We also develop variants of the CGS method which can achieve the optimal complexity bounds for solving stochastic optimization problems and an important class of saddle point optimization problems. To the best of our knowledge, this is the first time that these types of projection-free optimal first-order methods have been developed in the literature. Some preliminary numerical results have also been provided to demonstrate the advantages of the CGS method.
机译:在本文中,我们通过调用线性优化(LO)oracle以最小化可行集上的一系列线性函数,提出了一种新的条件梯度型凸优化方法。与经典的条件梯度方法不同,本文开发的条件梯度滑动(CGS)算法可以不时跳过梯度的计算,结果,不仅在调用次数上,还可以达到最佳复杂度范围LO oracle也包括梯度评估的次数。更具体地说,我们表明CGS方法分别需要O(1 / root epsilon)和O(log(1 / epsilon))梯度评估,以解决光滑和强凸问题,同时仍保持最佳O(1 / epsilon) )绑定到LO oracle的调用次数。我们还开发了CGS方法的变体,可以实现解决随机优化问题和一类重要的鞍点优化问题的最佳复杂度范围。据我们所知,这是文献中首次开发出这些类型的无投影最优一阶方法。还提供了一些初步的数值结果来证明CGS方法的优点。

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