Cascade Bagging for Accuracy Prediction with Few Training Samples
- URL: http://arxiv.org/abs/2108.05613v1
- Date: Thu, 12 Aug 2021 09:10:52 GMT
- Title: Cascade Bagging for Accuracy Prediction with Few Training Samples
- Authors: Ruyi Zhang, Ziwei Yang, Zhi Yang, Xubo Yang, Lei Wang and Zheyang Li
- Abstract summary: We propose a novel framework to train an accuracy predictor under few training samples.
The framework consists ofdata augmentation methods and an ensemble learning algorithm.
- Score: 8.373420721376739
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Accuracy predictor is trained to predict the validation accuracy of an
network from its architecture encoding. It can effectively assist in designing
networks and improving Neural Architecture Search(NAS) efficiency. However, a
high-performance predictor depends on adequate trainning samples, which
requires unaffordable computation overhead. To alleviate this problem, we
propose a novel framework to train an accuracy predictor under few training
samples. The framework consists ofdata augmentation methods and an ensemble
learning algorithm. The data augmentation methods calibrate weak labels and
inject noise to feature space. The ensemble learning algorithm, termed cascade
bagging, trains two-level models by sampling data and features. In the end, the
advantages of above methods are proved in the Performance Prediciton Track of
CVPR2021 1st Lightweight NAS Challenge. Our code is made public at:
https://github.com/dlongry/Solutionto-CVPR2021-NAS-Track2.
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