Jan. 1, 2024, midnight | Nachuan Xiao, Xiaoyin Hu, Xin Liu, Kim-Chuan Toh

JMLR www.jmlr.org

In this paper, we present a comprehensive study on the convergence properties of Adam-family methods for nonsmooth optimization, especially in the training of nonsmooth neural networks. We introduce a novel two-timescale framework that adopts a two-timescale updating scheme, and prove its convergence properties under mild assumptions. Our proposed framework encompasses various popular Adam-family methods, providing convergence guarantees for these methods in training nonsmooth neural networks. Furthermore, we develop stochastic subgradient methods that incorporate gradient clipping techniques for training nonsmooth neural …

adam assumptions convergence family framework networks neural networks novel optimization paper popular prove study timescale training

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