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Ensembles of Networks Produced from Neural Architecture Search

机译:从神经架构搜索生产的网络集合

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Neural architecture search (NAS) is a popular topic at the intersection of deep learning and high performance computing. NAS focuses on optimizing the architecture of neural networks along with their hyperparameters in order to produce networks with superior performance. Much of the focus has been on how to produce a single best network to solve a machine learning problem, but as NAS methods produce many networks that work very well, this affords the opportunity to ensemble these networks to produce an improved result. Additionally, the diversity of network structures produced by NAS drives a natural bias towards diversity of predictions produced by the individual networks. This results in an improved ensemble over simply creating an ensemble that contains duplicates of the best network architecture retrained to have unique weights.
机译:神经结构搜索(NAS)是深度学习和高性能计算的流行主题。 NAS专注于优化神经网络的架构以及其普遍的参数,以生产具有卓越性能的网络。大部分焦点一直是如何生产单一最佳网络来解决机器学习问题,而且随着NAS方法产生许多工作的网络,这提供了合并这些网络的机会来产生改进的结果。另外,NAS产生的网络结构的多样性驱动了各个网络产生的预测的自然偏差。这导致简单地创建一个包含删除的最佳网络架构重复的集合的合奏改进的集合。

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