Orit Davidovich, Parikshit Ram, et al.
AAAI 2022
We develop and analyse a variant of the SARAH algorithm, which does not require computation of the exact gradient. Thus this new method can be applied to general expectation minimization problems rather than only finite sum problems. While the original SARAH algorithm, as well as its predecessor, SVRG, requires an exact gradient computation on each outer iteration, the inexact variant of SARAH (iSARAH), which we develop here, requires only stochastic gradient computed on a mini-batch of sufficient size. The proposed method combines variance reduction via sample size selection and iterative stochastic gradient updates. We analyse the convergence rate of the algorithms for strongly convex and non-strongly convex cases, under smooth assumption with appropriate mini-batch size selected for each case. We show that with an additional, reasonable, assumption iSARAH achieves the best-known complexity among stochastic methods in the case of non-strongly convex stochastic functions.
Orit Davidovich, Parikshit Ram, et al.
AAAI 2022
Nianjun Zhou, Dzung Phan, et al.
INFORMS 2021
Phuong Ha Nguyen, Lam Nguyen, et al.
NeurIPS 2019
Dzung Phan, Pavankumar Murali, et al.
INFORMS 2022