RandomNet: Towards Fully Automatic Neural Architecture Design for Multimodal Learning
Alletto, Stefano, Huang, Shenyang, Francois-Lavet, Vincent, Nakata, Yohei, Rabusseau, Guillaume
Almost all neural architecture search methods are evaluated in terms of performance (i.e. test accuracy) of the model structures that it finds. Should it be the only metric for a good autoML approach? To examine aspects beyond performance, we propose a set of criteria aimed at evaluating the core of autoML problem: the amount of human intervention required to deploy these methods into real world scenarios. Based on our proposed evaluation checklist, we study the effectiveness of a random search strategy for fully automated multimodal neural architecture search. Compared to traditional methods that rely on manually crafted feature extractors, our method selects each modality from a large search space with minimal human supervision. We show that our proposed random search strategy performs close to the state of the art on the AV-MNIST dataset while meeting the desirable characteristics for a fully automated design process.
Mar-2-2020
- Country:
- Asia > China
- Liaoning Province > Shenyang (0.04)
- North America > Canada
- Asia > China
- Genre:
- Research Report (0.64)
- Technology: