A Neural Architecture Search Method using Auxiliary Evaluation Metric based on ResNet Architecture

Shang Wang, Huanrong Tang, Jian-quan Ouyang
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Abstract

This paper proposes a neural architecture search space using ResNet as a framework, with search objectives including parameters for convolution, pooling, fully connected layers, and connectivity of the residual network. In addition to recognition accuracy, this paper uses the loss value on the validation set as a secondary objective for optimization. The experimental results demonstrate that the search space of this paper together with the optimisation approach can find competitive network architectures on the MNIST, Fashion-MNIST and CIFAR100 datasets.
一种基于ResNet体系结构的辅助评价度量神经结构搜索方法
本文提出了一个以ResNet为框架的神经网络架构搜索空间,搜索目标包括卷积、池化、全连通层和残差网络的连通性参数。除了识别精度外,本文还将验证集上的损失值作为优化的次要目标。实验结果表明,本文的搜索空间和优化方法可以在MNIST、Fashion-MNIST和CIFAR100数据集上找到具有竞争力的网络架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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