We propose and analyze a variant of Sparse Polyak for high dimensional M-estimation problems. Sparse Polyak proposes a novel adaptive step-size rule tailored to suitably estimate the problem's curvature in the high-dimensional setting, guaranteeing that the algorithm's performance does not deteriorate when the ambient dimension increases. However, convergence guarantees can only be obtained by sacrificing solution sparsity and statistical accuracy. In this work, we introduce a variant of Sparse Polyak that retains its desirable scaling properties with respect to the ambient dimension while obtaining sparser and more accurate solutions.
翻译:本文针对高维M估计问题,提出并分析了一种稀疏Polyak算法的变体。稀疏Polyak算法提出了一种新颖的自适应步长规则,专门用于在高维环境下适当地估计问题的曲率,确保算法性能不会随环境维度增加而恶化。然而,其收敛性保证仅能通过牺牲解的稀疏性和统计精度获得。在本研究中,我们引入了一种稀疏Polyak算法的变体,该变体在保持对环境维度理想缩放性质的同时,能够获得更稀疏且更精确的解。