Back to Search Start Over

CILIATE: Towards Fairer Class-based Incremental Learning by Dataset and Training Refinement

Authors :
Gao, Xuanqi
Zhai, Juan
Ma, Shiqing
Shen, Chao
Chen, Yufei
Wang, Shiwei
Publication Year :
2023

Abstract

Due to the model aging problem, Deep Neural Networks (DNNs) need updates to adjust them to new data distributions. The common practice leverages incremental learning (IL), e.g., Class-based Incremental Learning (CIL) that updates output labels, to update the model with new data and a limited number of old data. This avoids heavyweight training (from scratch) using conventional methods and saves storage space by reducing the number of old data to store. But it also leads to poor performance in fairness. In this paper, we show that CIL suffers both dataset and algorithm bias problems, and existing solutions can only partially solve the problem. We propose a novel framework, CILIATE, that fixes both dataset and algorithm bias in CIL. It features a novel differential analysis guided dataset and training refinement process that identifies unique and important samples overlooked by existing CIL and enforces the model to learn from them. Through this process, CILIATE improves the fairness of CIL by 17.03%, 22.46%, and 31.79% compared to state-of-the-art methods, iCaRL, BiC, and WA, respectively, based on our evaluation on three popular datasets and widely used ResNet models.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2304.04222
Document Type :
Working Paper