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Gradient descent with random initialization: fast global convergence for nonconvex phase retrieval

机译:随机初始化的梯度下降:非透露阶段检索的快速全局收敛

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摘要

This paper considers the problem of solving systems of quadratic equations, namely, recovering an object of interest x?Rn from m quadratic equations/samples yi=(ai?x?)2,1im. This problem, also dubbed as phase retrieval, spans multiple domains including physical sciences and machine learning. We investigate the efficacy of gradient descent (or Wirtinger flow) designed for the nonconvex least squares problem. We prove that under Gaussian designs, gradient descentwhen randomly initializedyields an E-accurate solution in O(logn+log(1/E)) iterations given nearly minimal samples, thus achieving near-optimal computational and sample complexities at once. This provides the first global convergence guarantee concerning vanilla gradient descent for phase retrieval, without the need of (i) carefully-designed initialization, (ii) sample splitting, or (iii) sophisticated saddle-point escaping schemes. All of these are achieved by exploiting the statistical models in analyzing optimization algorithms, via a leave-one-out approach that enables the decoupling of certain statistical dependency between the gradient descent iterates and the data.
机译:本文考虑了求解二次方程的系统的问题,即恢复感兴趣的对象x?来自m二次方程/样品yi =(ai≤x≤)2,1im。这个问题也称为相位检索,跨越多个域,包括物理科学和机器学习。我们研究了为非凸起最小二乘问题设计的梯度下降(或丝网流量)的功效。我们证明,在高斯设计下,随机初始化的梯度下降时,在O(logn + log(1 / e))中迭代的e-complate soluations给定几乎最小的样本,从而一次实现近最佳的计算和样本复杂性。这提供了关于Vanilla梯度下降的第一个全局收敛保证,用于相位检索,而不需要(i)仔细设计的初始化,(ii)采样分裂,或(iii)复杂的鞍点转义方案。所有这些都是通过利用在分析优化算法中的统计模型来实现的,通过休假逐一方法来实现,这使得梯度下降迭代和数据之间的某些统计依赖性的解耦。

著录项

  • 来源
    《Mathematical Programming》 |2019年第2期|共33页
  • 作者单位

    Princeton Univ Dept Elect Engn Princeton NJ 08544 USA;

    Carnegie Mellon Univ Dept Elect &

    Comp Engn Pittsburgh PA 15213 USA;

    Princeton Univ Dept Operat Res &

    Financial Engn Princeton NJ 08544 USA;

    Princeton Univ Dept Operat Res &

    Financial Engn Princeton NJ 08544 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 数学;
  • 关键词

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