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Asynchronous parallel algorithms for nonconvex optimization

机译:异步并行算法,用于非渗透优化

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We propose a new asynchronous parallel block-descent algorithmic framework for the minimization of the sum of a smooth nonconvex function and a nonsmooth convex one, subject to both convex and nonconvex constraints. The proposed framework hinges on successive convex approximation techniques and a novel probabilistic model that captures key elements of modern computational architectures and asynchronous implementations in a more faithful way than current state-of-the-art models. Other key features of the framework are: (1) it covers in a unified way several specific solution methods; (2) it accommodates a variety of possible parallel computing architectures; and (3) it can deal with nonconvex constraints. Almost sure convergence to stationary solutions is proved, and theoretical complexity results are provided, showing nearly ideal linear speedup when the number of workers is not too large.
机译:我们提出了一种新的异步并行块 - 下降算法框架,用于最小化平滑非凸函数和非凸起的非凸起函数的总和,受到凸和非凸起约束。 所提出的框架铰接在连续的凸起近似技术和新的概率模型中,以比当前最先进的模型更忠实的方式捕获现代计算架构和异步实现的关键元素。 框架的其他主要特征是:(1)它以统一的方式涵盖了几种特定的解决方案方法; (2)它适用于各种可能的平行计算架构; (3)它可以处理非透露约束。 事实证明,当工人的数量不太大时,肯定会提供对固定解决方案的融合结果,提供了理论复杂性结果,显示了几乎理想的线性加速。

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