We consider active learning of deep neural networks. Most active learning works in this context have focused on studying effective querying mechanisms and assumed that an appropriate network architecture is a priori known for the problem at hand. We challenge this assumption and propose a novel active strategy whereby the learning algorithm searches for effective architectures on the fly, while actively learning. We apply our strategy using three known querying techniques (softmax response, MC-dropout, and coresets) and show that the proposed approach overwhelmingly outperforms active learning using fixed architectures.
@article{arxiv.1811.07579,
title = {Deep Active Learning with a Neural Architecture Search},
author = {Yonatan Geifman and Ran El-Yaniv},
journal= {arXiv preprint arXiv:1811.07579},
year = {2019}
}