Stability and convergence analysis of AdaGrad for non-convex optimization via novel stopping time-based techniques
This provides foundational theoretical guarantees for AdaGrad, a cornerstone optimizer in deep learning, addressing gaps in convergence analysis for non-convex scenarios.
The study tackled the lack of theoretical analysis for AdaGrad in non-convex optimization by introducing a stopping time technique, establishing stability and deriving asymptotically almost sure and mean-square convergence with a near-optimal non-asymptotic convergence rate.
Adaptive gradient optimizers (AdaGrad), which dynamically adjust the learning rate based on iterative gradients, have emerged as powerful tools in deep learning. These adaptive methods have significantly succeeded in various deep learning tasks, outperforming stochastic gradient descent. However, despite AdaGrad's status as a cornerstone of adaptive optimization, its theoretical analysis has not adequately addressed key aspects such as asymptotic convergence and non-asymptotic convergence rates in non-convex optimization scenarios. This study aims to provide a comprehensive analysis of AdaGrad and bridge the existing gaps in the literature. We introduce a new stopping time technique from probability theory, which allows us to establish the stability of AdaGrad under mild conditions. We further derive the asymptotically almost sure and mean-square convergence for AdaGrad. In addition, we demonstrate the near-optimal non-asymptotic convergence rate measured by the average-squared gradients in expectation, which is stronger than the existing high-probability results. The techniques developed in this work are potentially of independent interest for future research on other adaptive stochastic algorithms.