LGAINENAMLApr 11, 2023

Automatic Gradient Descent: Deep Learning without Hyperparameters

MIT
arXiv:2304.05187v118 citationsh-index: 17Has Code
Originality Highly original
AI Analysis

This provides a rigorous theoretical foundation for architecture-dependent optimizers that work automatically, potentially benefiting practitioners by eliminating hyperparameter tuning.

The paper tackles the problem of hyperparameter tuning in deep learning optimizers by developing a new framework that explicitly leverages neural architecture, resulting in automatic gradient descent, a first-order optimizer without hyperparameters that trains networks at ImageNet scale.

The architecture of a deep neural network is defined explicitly in terms of the number of layers, the width of each layer and the general network topology. Existing optimisation frameworks neglect this information in favour of implicit architectural information (e.g. second-order methods) or architecture-agnostic distance functions (e.g. mirror descent). Meanwhile, the most popular optimiser in practice, Adam, is based on heuristics. This paper builds a new framework for deriving optimisation algorithms that explicitly leverage neural architecture. The theory extends mirror descent to non-convex composite objective functions: the idea is to transform a Bregman divergence to account for the non-linear structure of neural architecture. Working through the details for deep fully-connected networks yields automatic gradient descent: a first-order optimiser without any hyperparameters. Automatic gradient descent trains both fully-connected and convolutional networks out-of-the-box and at ImageNet scale. A PyTorch implementation is available at https://github.com/jxbz/agd and also in Appendix B. Overall, the paper supplies a rigorous theoretical foundation for a next-generation of architecture-dependent optimisers that work automatically and without hyperparameters.

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