LGCVOct 16, 2020

G-DARTS-A: Groups of Channel Parallel Sampling with Attention

arXiv:2010.08360v11 citations
Originality Incremental advance
AI Analysis

This work addresses efficiency and robustness issues in neural architecture search for machine learning researchers, but it is incremental as it builds on existing methods like PC-DARTS.

The paper tackles the problem of overfitting and high computational cost in Differentiable Architecture Search (DARTS) by proposing G-DARTS-A, which uses groups of channels with attention to sample the super-network, achieving error rates of 2.57% on CIFAR10 with 0.5 GPU-days.

Differentiable Architecture Search (DARTS) provides a baseline for searching effective network architectures based gradient, but it is accompanied by huge computational overhead in searching and training network architecture. Recently, many novel works have improved DARTS. Particularly, Partially-Connected DARTS(PC-DARTS) proposed the partial channel sampling technique which achieved good results. In this work, we found that the backbone provided by DARTS is prone to overfitting. To mitigate this problem, we propose an approach named Group-DARTS with Attention (G-DARTS-A), using multiple groups of channels for searching. Inspired by the partially sampling strategy of PC-DARTS, we use groups channels to sample the super-network to perform a more efficient search while maintaining the relative integrity of the network information. In order to relieve the competition between channel groups and keep channel balance, we follow the attention mechanism in Squeeze-and-Excitation Network. Each group of channels shares defined weights thence they can provide different suggestion for searching. The searched architecture is more powerful and better adapted to different deployments. Specifically, by only using the attention module on DARTS we achieved an error rate of 2.82%/16.36% on CIFAR10/100 with 0.3GPU-days for search process on CIFAR10. Apply our G-DARTS-A to DARTS/PC-DARTS, an error rate of 2.57%/2.61% on CIFAR10 with 0.5/0.4 GPU-days is achieved.

Foundations

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