Comparison of Domain Selection Methods for Multi-Source Manifold Feature Transfer Learning in Electroencephalogram Classification

被引:0
|
作者
Maswanganyi, Rito Clifford [1 ]
Tu, Chungling [1 ]
Owolawi, Pius Adewale [1 ]
Du, Shengzhi [2 ]
机构
[1] Tshwane Univ Technol, Dept Comp Syst Engn, ZA-0002 Pretoria, South Africa
[2] Tshwane Univ Technol, Dept Elect Engn, ZA-0002 Pretoria, South Africa
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 06期
基金
新加坡国家研究基金会;
关键词
brain-computer interface (BCI); electroencephalogram (EEG); transfer learning (TL); negative transfer (NT); multi-source manifold feature transfer learning (MMFT); enhanced multi-class MMFT (EMC-MMFT); COMPUTER; ALIGNMENT;
D O I
10.3390/app14062326
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Transfer learning (TL) utilizes knowledge from the source domain (SD) to enhance the classification rate in the target domain (TD). It has been widely used to address the challenge of sessional and inter-subject variations in electroencephalogram (EEG)-based brain-computer interfaces (BCIs). However, utilizing knowledge from a combination of both related and non-related sources can significantly deteriorate the classification performance across individual target domains, resulting in a negative transfer (NT). Hence, NT becomes one of the most significant challenges for transfer learning algorithms. Notably, domain selection techniques have been developed to address the challenge of NT emerging from the transfer of knowledge from non-related sources. However, existing domain selection approaches iterate through domains and remove a single low-beneficial domain at a time, which can massively affect the classification performance in each iteration since SDs respond differently to other sources. In this paper, we compare domain selection techniques for a multi-source manifold feature transfer learning (MMFT) framework to address the challenge of NT and then evaluate the effect of beneficial and non-beneficial sources on TL performance. To evaluate the effect of low-beneficial and high beneficial sources on TL performance, some commonly used domain selection methods are compared, namely, domain transferability estimation (DTE), rank of domain (ROD), label similarity analysis, and enhanced multi-class MMFT (EMC-MMFT), using the same multi-class cross-session and cross-subject classification problems. The experimental results demonstrate the superiority of the EMC-MMFT algorithm in terms of minimizing the effect of NT. The highest classification accuracy (CA) of 100% is achieved when optimal combinations of high beneficial sources are selected for two-class SSMVEP problems, while the highest CAs of 98% and 87% are achieved for three- and four-class SSMVEP problems, respectively. The highest CA of 98% is achieved for two-class MI classification problems, while the highest CAs of 90% and 71.5% are obtained for three- and four-class MI problems, respectively.
引用
收藏
页数:33
相关论文
共 50 条
  • [31] Machining quality prediction of multi-feature parts using integrated multi-source domain dynamic adaptive transfer learning
    Wang, Pei
    Qi, Jingshuai
    Xu, Xun
    Yang, Sheng
    ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING, 2024, 90
  • [32] Unsupervised multi-source domain adaptation via contrastive learning for EEG classification
    Xu, Chengjian
    Song, Yonghao
    Zheng, Qingqing
    Wang, Qiong
    Heng, Pheng-Ann
    EXPERT SYSTEMS WITH APPLICATIONS, 2025, 261
  • [33] Online feature selection for multi-source streaming features
    You, Dianlong
    Sun, Miaomiao
    Liang, Shunpan
    Li, Ruiqi
    Wang, Yang
    Xiao, Jiawei
    Yuan, Fuyong
    Shen, Limin
    Wu, Xindong
    INFORMATION SCIENCES, 2022, 590 : 267 - 295
  • [34] Multi-Source Contribution Learning for Domain Adaptation
    Li, Keqiuyin
    Lu, Jie
    Zuo, Hua
    Zhang, Guangquan
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2022, 33 (10) : 5293 - 5307
  • [35] Multi-layer manifold learning with feature selection
    Dornaika, F.
    APPLIED INTELLIGENCE, 2020, 50 (06) : 1859 - 1871
  • [36] Adaptive multi-source domain collaborative fine-tuning for transfer learning
    Feng, Le
    Yang, Yuan
    Tan, Mian
    Zeng, Taotao
    Tang, Huachun
    Li, Zhiling
    Niu, Zhizhong
    Feng, Fujian
    PEERJ COMPUTER SCIENCE, 2024, 10
  • [37] EEGNet-based multi-source domain filter for BCI transfer learning
    Mengfan Li
    Jundi Li
    Zhiyong Song
    Haodong Deng
    Jiaming Xu
    Guizhi Xu
    Wenzhe Liao
    Medical & Biological Engineering & Computing, 2024, 62 : 675 - 686
  • [38] Multi-layer manifold learning with feature selection
    F. Dornaika
    Applied Intelligence, 2020, 50 : 1859 - 1871
  • [39] Deep Transfer Learning for Multi-source Entity Linkage via Domain Adaptation
    Jin, Di
    Sisman, Bunyamin
    Wei, Hao
    Dong, Xin Luna
    Koutra, Danai
    PROCEEDINGS OF THE VLDB ENDOWMENT, 2021, 15 (03): : 465 - 477
  • [40] EEGNet-based multi-source domain filter for BCI transfer learning
    Li, Mengfan
    Li, Jundi
    Song, Zhiyong
    Deng, Haodong
    Xu, Jiaming
    Xu, Guizhi
    Liao, Wenzhe
    MEDICAL & BIOLOGICAL ENGINEERING & COMPUTING, 2024, 62 (03) : 675 - 686