Searching for a Robust Neural Architecture in Four GPU Hours
Searching for a Robust Neural Architecture in Four GPU Hours
Conventional neural architecture search (NAS) approaches are usually based on reinforcement learning or evolutionary strategy, which take more than 1000 GPU hours to find a good model on CIFAR-10. We propose an efficient NAS approach, which learns the searching approach by gradient descent. Our approach represents the search space as …