Adaptive Feature Generation for Online Continual Learning from Imbalanced Data

被引:1
|
作者
Jian, Yingchun [1 ]
Yi, Jinfeng [2 ]
Zhang, Lijun [1 ]
机构
[1] Nanjing Univ, Natl Key Lab Novel Software Technol, Nanjing 210023, Peoples R China
[2] JD AI Res, Beijing, Peoples R China
关键词
Online continual learning; Imbalanced learning; Data augmentation;
D O I
10.1007/978-3-031-05933-9_22
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Online continual learning (OCL) is the setting where deep neural network (DNN) incrementally learns new tasks with online data streams. The major problem in OCL is catastrophic forgetting, that DNN forgets the acquired knowledge on previous tasks quickly. Recently emerged studies tackle a more realistic problem that the data follows an imbalanced class distribution in OCL by storing particular exemplars. However, preserving exemplars causes memory burden and privacy issues. In this paper, we propose a non-exemplar based method-Adaptive Feature Generation (AdaFG) for OCL from imbalanced data, which tackles the class imbalance and catastrophic forgetting problems simultaneously. Specifically, we argue that one common reason for these problems is the decision boundaries of minority or old classes with few or no samples are affected by majority classes. Therefore, we first maintain a representative prototype for each class in the feature space, which dynamically changes with the streaming data to approximate the class mean feature. Then, we generate new features adaptively for old and minority classes based on their prototypes and train the DNN's classifier to adjust the decision boundaries. Experiments on three popular datasets demonstrate AdaFG's effectiveness in consolidating previous knowledge and addressing the class imbalance problem without preserving exemplars.
引用
收藏
页码:276 / 289
页数:14
相关论文
共 50 条
  • [1] Online Continual Learning from Imbalanced Data
    Chrysakis, Aristotelis
    Moens, Marie-Francine
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 119, 2020, 119
  • [2] Online Continual Learning from Imbalanced Data
    Chrysakis, Aristotelis
    Moens, Marie-Francine
    25TH AMERICAS CONFERENCE ON INFORMATION SYSTEMS (AMCIS 2019), 2019,
  • [3] Online Adaptive Asymmetric Active Learning for Budgeted Imbalanced Data
    Zhang, Yifan
    Zhao, Peilin
    Cao, Jiezhang
    Ma, Wenye
    Huang, Junzhou
    Wu, Qingyao
    Tan, Mingkui
    KDD'18: PROCEEDINGS OF THE 24TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2018, : 2768 - 2777
  • [4] Adaptive Shortcut Debiasing for Online Continual Learning
    Kim, Doyoung
    Park, Dongmin
    Shin, Yooju
    Bang, Jihwan
    Song, Hwanjun
    Lee, Jae-Gil
    THIRTY-EIGHTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, VOL 38 NO 12, 2024, : 13122 - 13131
  • [5] Evolutionary Online Machine Learning from Imbalanced Data
    Stein, Anthony
    2016 IEEE 1ST INTERNATIONAL WORKSHOPS ON FOUNDATIONS AND APPLICATIONS OF SELF* SYSTEMS (FAS*W), 2016, : 281 - 286
  • [6] Online Learning From Incomplete and Imbalanced Data Streams
    You, Dianlong
    Xiao, Jiawei
    Wang, Yang
    Yan, Huigui
    Wu, Di
    Chen, Zhen
    Shen, Limin
    Wu, Xindong
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2023, 35 (10) : 10650 - 10665
  • [7] Adaptive Online Domain Incremental Continual Learning
    Gunasekara, Nuwan
    Gomes, Heitor
    Bifet, Albert
    Pfahringer, Bernhard
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2022, PT I, 2022, 13529 : 491 - 502
  • [8] ROSE: robust online self-adjusting ensemble for continual learning on imbalanced drifting data streams
    Alberto Cano
    Bartosz Krawczyk
    Machine Learning, 2022, 111 : 2561 - 2599
  • [9] ROSE: robust online self-adjusting ensemble for continual learning on imbalanced drifting data streams
    Cano, Alberto
    Krawczyk, Bartosz
    MACHINE LEARNING, 2022, 111 (07) : 2561 - 2599
  • [10] KernelADASYN: Kernel Based Adaptive Synthetic Data Generation for Imbalanced Learning
    Tang, Bo
    He, Haibo
    2015 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2015, : 664 - 671