Luke Dicks, David E. Graff, et al.
MSDE
We study the convergence of a random iterative sequence of a family of operators on infinite-dimensional Hilbert spaces, inspired by the stochastic gradient descent (SGD) algorithm in the case of the noiseless regression. We identify conditions that are strictly broader than previously known for polynomial convergence rate in various norms, and characterize the roles the randomness plays in determining the best multiplicative constants. Additionally, we prove almost sure convergence of the sequence.
Luke Dicks, David E. Graff, et al.
MSDE
Jiawei Zhou, Tahira Naseem, et al.
NAACL 2021
Joao Lucas de Sousa Almeida, Arthur Cancelieri Pires, et al.
IEEE Transactions on Artificial Intelligence
Andrew Geng, Pin-Yu Chen
IEEE SaTML 2024