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AutoSampling: Search for Effective Data Sampling Schedules

Authors :
Sun, Ming
Dou, Haoxuan
Li, Baopu
Cui, Lei
Yan, Junjie
Ouyang, Wanli
Source :
ICML 2021
Publication Year :
2021

Abstract

Data sampling acts as a pivotal role in training deep learning models. However, an effective sampling schedule is difficult to learn due to the inherently high dimension of parameters in learning the sampling schedule. In this paper, we propose an AutoSampling method to automatically learn sampling schedules for model training, which consists of the multi-exploitation step aiming for optimal local sampling schedules and the exploration step for the ideal sampling distribution. More specifically, we achieve sampling schedule search with shortened exploitation cycle to provide enough supervision. In addition, we periodically estimate the sampling distribution from the learned sampling schedules and perturb it to search in the distribution space. The combination of two searches allows us to learn a robust sampling schedule. We apply our AutoSampling method to a variety of image classification tasks illustrating the effectiveness of the proposed method.<br />Comment: Automl for sampling firstly without any assumpation

Details

Database :
arXiv
Journal :
ICML 2021
Publication Type :
Report
Accession number :
edsarx.2105.13695
Document Type :
Working Paper