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Deep Active Learning with a Neural Architecture Search

机译:具有神经结构的深度积极学习

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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 over-whelmingly outperforms active learning using fixed architectures.
机译:我们考虑积极学习深度神经网络。 在这种情况下,大多数主动学习工作都集中在研究有效的查询机制上,并假设适当的网络架构是针对手头问题已知的先验。 我们挑战这一假设,并提出了一种新的积极策略,其中学习算法在积极学习的同时搜索有效架构。 我们使用三种已知的查询技术(SoftMax Response,MC-Dropout和Coresets)应用我们的策略,并表明所提出的方法超越了使用固定架构的主动学习。

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