English

Mini-Batch Stochastic ADMMs for Nonconvex Nonsmooth Optimization

Optimization and Control 2019-06-26 v3 Machine Learning Machine Learning

Abstract

With the large rising of complex data, the nonconvex models such as nonconvex loss function and nonconvex regularizer are widely used in machine learning and pattern recognition. In this paper, we propose a class of mini-batch stochastic ADMMs (alternating direction method of multipliers) for solving large-scale nonconvex nonsmooth problems. We prove that, given an appropriate mini-batch size, the mini-batch stochastic ADMM without variance reduction (VR) technique is convergent and reaches a convergence rate of O(1/T)O(1/T) to obtain a stationary point of the nonconvex optimization, where TT denotes the number of iterations. Moreover, we extend the mini-batch stochastic gradient method to both the nonconvex SVRG-ADMM and SAGA-ADMM proposed in our initial manuscript \cite{huang2016stochastic}, and prove these mini-batch stochastic ADMMs also reaches the convergence rate of O(1/T)O(1/T) without condition on the mini-batch size. In particular, we provide a specific parameter selection for step size η\eta of stochastic gradients and penalty parameter ρ\rho of augmented Lagrangian function. Finally, extensive experimental results on both simulated and real-world data demonstrate the effectiveness of the proposed algorithms.

Keywords

Cite

@article{arxiv.1802.03284,
  title  = {Mini-Batch Stochastic ADMMs for Nonconvex Nonsmooth Optimization},
  author = {Feihu Huang and Songcan Chen},
  journal= {arXiv preprint arXiv:1802.03284},
  year   = {2019}
}

Comments

We have fixed some errors in the proofs. arXiv admin note: text overlap with arXiv:1610.02758

R2 v1 2026-06-23T00:17:06.508Z