We develop an algorithm for parameter-free stochastic convex optimization (SCO) whose rate of convergence is only a double-logarithmic factor larger than the optimal rate for the corresponding known-parameter setting. In contrast, the best previously known rates for parameter-free SCO are based on online parameter-free regret bounds, which contain unavoidable excess logarithmic terms compared to their known-parameter counterparts. Our algorithm is conceptually simple, has high-probability guarantees, and is also partially adaptive to unknown gradient norms, smoothness, and strong convexity. At the heart of our results is a novel parameter-free certificate for SGD step size choice, and a time-uniform concentration result that assumes no a-priori bounds on SGD iterates.
翻译:我们开发了一种无需参数的随机凸优化(SCO)算法,其收敛速度仅比相应已知参数设置的最优速度慢双对数因子。相比之下,无参数先前已知的最佳SCO速率基于在线无参数后悔界,其与其已知参数对应项相比包含不可避免的额外对数项。我们的算法概念上简单,具有高概率保证,并且还部分自适应于未知的梯度范数,平滑度和强凸性。我们结果的核心是一种新颖的无参数证书SGD步长选择,以及一种时间均匀的浓度结果,其不假设对SGD迭代进行先验的界限。