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Global Convergence of Block Coordinate Descent in Deep Learning

The paper provides convergence guarantees for block coordinate descent methods in deep neural network training, establishing a rate of O(1/k) and extending to ResNets and general loss functions.

Year
2018
Venue
arXiv 2018
Authors
4
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arxiv.org/abs/1803.00225v4ARXIV-DEFAULT
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Abstract

Deep learning has aroused extensive attention due to its great empirical success. The efficiency of the block coordinate descent (BCD) methods has been recently demonstrated in deep neural network (DNN) training. However, theoretical studies on their convergence properties are limited due to the highly nonconvex nature of DNN training. In this paper, we aim at providing a general methodology for provable convergence guarantees for this type of methods. In particular, for most of the commonly used DNN training models involving both two- and three-splitting schemes, we establish the global convergence to a critical point at a rate of ${\cal O}(1/k)$, where $k$ is the number of iterations. The results extend to general loss functions which have Lipschitz continuous gradients and deep residual networks (ResNets). Our key development adds several new elements to the Kurdyka-{\L}ojasiewicz inequality framework that enables us to carry out the global convergence analysis of BCD in the general scenario of deep learning.

Authors

4