Author
Listed:
- Jianchao Bai
(School of Mathematics and Statistics, Northwestern Polytechnical University, Xi’an 710129, P. R. China)
- Yang Chen
(School of Mathematics and Statistics, Northwestern Polytechnical University, Xi’an 710129, P. R. China)
- Xingju Cai
(School of Mathematical Sciences, Ministry of Education Key Laboratory for NSLSCS, Nanjing Normal University, Nanjing 210023, P. R. China)
- Xue Yu
(Center for Applied Statistics, School of Statistics, Renmin University of China, Beijing 100872, P. R. China4Beijing Advanced Innovation Center for Future, Blockchain and Privacy Computing, Beijing 100191, P. R. China)
Abstract
In this paper, we propose an Inexact Proximal-indefinite Stochastic ADMM (abbreviated as IPS-ADMM) to solve a class of separable convex optimization problems whose objective functions consist of two parts: one is an average of many smooth convex functions and the other is a convex but potentially nonsmooth function. The involved smooth subproblem is tackled by an inexact accelerated stochastic gradient method based on an adaptive expansion step to avoid the scenario that the sample size can be extremely huge so that computing the objective function value or its gradient is much more expensive. The involved nonsmooth subproblem is solved inexactly under a relative error criterion to avoid the case that the proximal operator is potentially unavailable. In contrast to most deterministic and stochastic ADMM algorithms, our dual variable updates twice and allows a more flexible and larger stepsize region. By a variational analysis, we characterize the generated iterates as a variational inequality and finally establish the sublinear convergence rate of this IPS-ADMM in terms of the objective function gap and constraint violation. Experiments on solving the 3D CT reconstruction problem in medical imaging and the graph-guided fused lasso problem in machine learning show that our IPS-ADMM is very promising.
Suggested Citation
Jianchao Bai & Yang Chen & Xingju Cai & Xue Yu, 2025.
"Convergence Analysis on A Data-Driven Inexact Proximal-Indefinite Stochastic ADMM,"
Asia-Pacific Journal of Operational Research (APJOR), World Scientific Publishing Co. Pte. Ltd., vol. 42(05), pages 1-30, October.
Handle:
RePEc:wsi:apjorx:v:42:y:2025:i:05:n:s0217595925500101
DOI: 10.1142/S0217595925500101
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