LGMLSep 26, 2019

Drawing Early-Bird Tickets: Towards More Efficient Training of Deep Networks

arXiv:1909.11957v6283 citationsHas Code
Originality Incremental advance
AI Analysis

This addresses the high computational cost of training deep networks for researchers and practitioners, offering an incremental improvement over existing pruning methods.

The paper tackles the inefficiency of identifying winning tickets (critical subnetworks) in deep networks by discovering that these tickets can be found early in training, termed early-bird tickets, using low-cost methods like early stopping and low-precision training. It results in up to 4.7x energy savings while maintaining or improving accuracy.

(Frankle & Carbin, 2019) shows that there exist winning tickets (small but critical subnetworks) for dense, randomly initialized networks, that can be trained alone to achieve comparable accuracies to the latter in a similar number of iterations. However, the identification of these winning tickets still requires the costly train-prune-retrain process, limiting their practical benefits. In this paper, we discover for the first time that the winning tickets can be identified at the very early training stage, which we term as early-bird (EB) tickets, via low-cost training schemes (e.g., early stopping and low-precision training) at large learning rates. Our finding of EB tickets is consistent with recently reported observations that the key connectivity patterns of neural networks emerge early. Furthermore, we propose a mask distance metric that can be used to identify EB tickets with low computational overhead, without needing to know the true winning tickets that emerge after the full training. Finally, we leverage the existence of EB tickets and the proposed mask distance to develop efficient training methods, which are achieved by first identifying EB tickets via low-cost schemes, and then continuing to train merely the EB tickets towards the target accuracy. Experiments based on various deep networks and datasets validate: 1) the existence of EB tickets, and the effectiveness of mask distance in efficiently identifying them; and 2) that the proposed efficient training via EB tickets can achieve up to 4.7x energy savings while maintaining comparable or even better accuracy, demonstrating a promising and easily adopted method for tackling cost-prohibitive deep network training. Code available at https://github.com/RICE-EIC/Early-Bird-Tickets.

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