Back to Search Start Over

Neural Predictor for Neural Architecture Search

Authors :
Wen, Wei
Liu, Hanxiao
Li, Hai
Chen, Yiran
Bender, Gabriel
Kindermans, Pieter-Jan
Publication Year :
2019

Abstract

Neural Architecture Search methods are effective but often use complex algorithms to come up with the best architecture. We propose an approach with three basic steps that is conceptually much simpler. First we train N random architectures to generate N (architecture, validation accuracy) pairs and use them to train a regression model that predicts accuracy based on the architecture. Next, we use this regression model to predict the validation accuracies of a large number of random architectures. Finally, we train the top-K predicted architectures and deploy the model with the best validation result. While this approach seems simple, it is more than 20 times as sample efficient as Regularized Evolution on the NASBench-101 benchmark and can compete on ImageNet with more complex approaches based on weight sharing, such as ProxylessNAS.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1912.00848
Document Type :
Working Paper