Geometry-Aware Gradient Algorithms for Neural Architecture Search
About
Recent state-of-the-art methods for neural architecture search (NAS) exploit gradient-based optimization by relaxing the problem into continuous optimization over architectures and shared-weights, a noisy process that remains poorly understood. We argue for the study of single-level empirical risk minimization to understand NAS with weight-sharing, reducing the design of NAS methods to devising optimizers and regularizers that can quickly obtain high-quality solutions to this problem. Invoking the theory of mirror descent, we present a geometry-aware framework that exploits the underlying structure of this optimization to return sparse architectural parameters, leading to simple yet novel algorithms that enjoy fast convergence guarantees and achieve state-of-the-art accuracy on the latest NAS benchmarks in computer vision. Notably, we exceed the best published results for both CIFAR and ImageNet on both the DARTS search space and NAS-Bench201; on the latter we achieve near-oracle-optimal performance on CIFAR-10 and CIFAR-100. Together, our theory and experiments demonstrate a principled way to co-design optimizers and continuous relaxations of discrete NAS search spaces.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Classification | CIFAR-10 (test) | -- | 3381 | |
| Image Classification | ImageNet (test) | -- | 235 | |
| Image Classification | ImageNet Mobile Setting (test) | Top-1 Error24 | 165 | |
| Neural Architecture Search | NAS-Bench-201 ImageNet-16-120 (test) | Accuracy46.36 | 86 | |
| Neural Architecture Search | NAS-Bench-201 CIFAR-10 (test) | Accuracy94.1 | 85 | |
| Neural Architecture Search | NAS-Bench-201 CIFAR-100 (test) | Accuracy73.43 | 78 |