ISSTA2022

HybridRepair: towards annotation-efficient repair for deep learning models

Yu Li, Muxi Chen, Qiang Xu

10 citations

Abstract

A well-trained deep learning (DL) model often cannot achieve expected performance after deployment due to the mismatch between the distributions of the training data and the field data in the operational environment. Therefore, repairing DL models is critical, especially when deployed on increasingly larger tasks with shifted distributions.