Convergence of First-Order Methods for Constrained Nonconvex Optimization with Dependent Data

被引:0
|
作者
Alacaoglu, Ahmet [1 ]
Lyu, Hanbaek [2 ]
机构
[1] Univ Wisconsin Madison, Wisconsin Inst Discovery, Madison, WI USA
[2] Univ Wisconsin Madison, Dept Math, Madison, WI 53706 USA
关键词
DISTRIBUTED OPTIMIZATION;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
We focus on analyzing the classical stochastic projected gradient methods under a general dependent data sampling scheme for constrained smooth nonconvex optimization. We show the worst-case rate of convergence (O) over tilde (t(-1/4)) and complexity (O) over tilde (epsilon(-4)) for achieving an e-near stationary point in terms of the norm of the gradient of Moreau envelope and gradient mapping. While classical convergence guarantee requires i.i.d. data sampling from the target distribution, we only require a mild mixing condition of the conditional distribution, which holds for a wide class of Markov chain sampling algorithms. This improves the existing complexity for the constrained smooth nonconvex optimization with dependent data from (O) over tilde (epsilon(-8)) to (O) over tilde (epsilon(-4)) with a significantly simpler analysis. We illustrate the generality of our approach by deriving convergence results with dependent data for stochastic proximal gradient methods, adaptive stochastic gradient algorithm AdaGrad and stochastic gradient algorithm with heavy ball momentum. As an application, we obtain first online nonnegative matrix factorization algorithms for dependent data based on stochastic projected gradient methods with adaptive step sizes and optimal rate of convergence.
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页码:458 / 489
页数:32
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