Truncated kernel SGD with spherical RBFs projects stochastic gradients to a finite hypothesis space for minimax-optimal rates on optimization, generalization, and strong RKHS convergence across losses like least-squares and logistic.
Estimation bounds and sharp oracle inequalities of regularized procedures with Lipschitz loss functions.The Annals of Statistics, 47(4):2117–2144, 2019
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Truncated Kernel Stochastic Gradient Descent with General Losses and Spherical Radial Basis Functions
Truncated kernel SGD with spherical RBFs projects stochastic gradients to a finite hypothesis space for minimax-optimal rates on optimization, generalization, and strong RKHS convergence across losses like least-squares and logistic.