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Mahsa Soheil Shamaee

Mahsa Soheil Shamaee

Assistant Professor

College: Faculty of Mathematics

Department: Computer Sciences

Degree: Ph.D

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Mahsa Soheil Shamaee

Assistant Professor Mahsa Soheil Shamaee

College: Faculty of Mathematics - Department: Computer Sciences Degree: Ph.D |

A Second Examination of Trigonometric Step Sizes and Their Impact on Warm Restart SGD for Non-Smooth and Non-Convex Functions

Authorsمهسا سهیل شمائی,سجاد فتحی هفشجانی
JournalMathematics
Page number829
Volume number13
IF2.3
Paper TypeFull Paper
Published At2025-03-01
Journal GradeScientific - research
Journal TypeElectronic
Journal CountryIran, Islamic Republic Of
Journal IndexJCR ,SCOPUS

Abstract

This paper presents a second examination of trigonometric step sizes and their impact on Warm Restart Stochastic Gradient Descent (SGD), an essential optimization technique in deep learning. Building on prior work with cosine-based step sizes, this study introduces three novel trigonometric step sizes aimed at enhancing warm restart methods. These step sizes are formulated to address the challenges posed by non-smooth and non-convex objective functions, ensuring that the algorithm can converge effectively toward the global minimum. Through rigorous theoretical analysis, we demonstrate that the proposed approach achieves an ????(1????−−√) convergence rate for smooth non-convex functions and extend the analysis to non-smooth and non-convex scenarios. Experimental evaluations on FashionMNIST, CIFAR10, and CIFAR100 datasets reveal significant improvements in test accuracy, including a notable 2.14% increase on CIFAR100 compared to existing warm restart strategies. These results underscore the effectiveness of trigonometric step sizes in enhancing optimization performance for deep learning models.