Enhancing Stochastic Optimization for Statistical Efficiency Using ROOT-SGD with Diminishing Stepsize
Abstract
In this paper, we revisit ROOT-SGD, an innovative method for stochastic optimization to bridge the gap between stochastic optimization and statistical efficiency. The proposed method enhances the performance and reliability of ROOT-SGD by integrating a carefully designed diminishing stepsize strategy. This approach addresses key challenges in optimization, providing robust theoretical guarantees and practical benefits. Our analysis demonstrates that ROOT-SGD with diminishing achieves optimal convergence rates while maintaining computational efficiency. By dynamically adjusting the learning rate, ROOT-SGD ensures improved stability and precision throughout the optimization process. The findings of this study offer valuable insights for developing advanced optimization algorithms that are both efficient and statistically robust.
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