TS-DM: A Time Segmentation-Based Data Stream Learning Method for Concept Drift Adaptation

被引:3
作者
Wang, Kun [1 ]
Lu, Jie [1 ]
Liu, Anjin [1 ]
Zhang, Guangquan [1 ]
机构
[1] Univ Technol Sydney, Australia Artificial Intelligence Inst, Fac Engn & Informat Technol, Sydney, NSW 2007, Australia
基金
澳大利亚研究理事会;
关键词
Concept drift; Data models; Adaptation models; Time series analysis; Task analysis; Learning systems; Robustness; data stream; ensemble learning; time segmentation;
D O I
10.1109/TCYB.2024.3429459
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Concept drift arises from the uncertainty of data distribution over time and is common in data stream. While numerous methods have been developed to assist machine learning models in adapting to such changeable data, the problem of improperly keeping or discarding data samples remains. This may results in the loss of valuable knowledge that could be utilized in subsequent time points, ultimately affecting the model's accuracy. To address this issue, a novel method called time segmentation-based data stream learning method (TS-DM) is developed to help segment and learn the streaming data for concept drift adaptation. First, a chunk-based segmentation strategy is given to segment normal and drift chunks. Building upon this, a chunk-based evolving segmentation (CES) strategy is proposed to mine and segment the data chunk when both old and new concepts coexist. Furthermore, a warning level data segmentation process (CES-W) and a high-low-drift tradeoff handling process are developed to enhance the generalization and robustness. To evaluate the performance and efficiency of our proposed method, we conduct experiments on both synthetic and real-world datasets. By comparing the results with several state-of-the-art data stream learning methods, the experimental findings demonstrate the efficiency of the proposed method.
引用
收藏
页码:6000 / 6011
页数:12
相关论文
共 50 条
[1]   DATABASE MINING - A PERFORMANCE PERSPECTIVE [J].
AGRAWAL, R ;
IMIELINSKI, T ;
SWAMI, A .
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 1993, 5 (06) :914-925
[2]   ADAPTIVE SEQUENTIAL SEGMENTATION OF PIECEWISE STATIONARY TIME-SERIES [J].
APPEL, U ;
BRANDT, AV .
INFORMATION SCIENCES, 1983, 29 (01) :27-56
[3]  
Bifet A, 2010, J MACH LEARN RES, V11, P1601
[4]   Prequential AUC: properties of the area under the ROC curve for data streams with concept drift [J].
Brzezinski, Dariusz ;
Stefanowski, Jerzy .
KNOWLEDGE AND INFORMATION SYSTEMS, 2017, 52 (02) :531-562
[5]   An evolutionary approach to pattern-based time series segmentation [J].
Chung, FL ;
Fu, TC ;
Ng, V ;
Luk, RWP .
IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION, 2004, 8 (05) :471-489
[6]   Learning High-Dimensional Evolving Data Streams With Limited Labels [J].
Din, Salah Ud ;
Kumar, Jay ;
Shao, Junming ;
Mawuli, Cobbinah Bernard ;
Ndiaye, Waldiodio David .
IEEE TRANSACTIONS ON CYBERNETICS, 2022, 52 (11) :11373-11384
[7]   Learning in Nonstationary Environments: A Survey [J].
Ditzler, Gregory ;
Roveri, Manuel ;
Alippi, Cesare ;
Polikar, Robi .
IEEE COMPUTATIONAL INTELLIGENCE MAGAZINE, 2015, 10 (04) :12-25
[8]  
Domingos P., 2000, Proceedings. KDD-2000. Sixth ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, P71, DOI 10.1145/347090.347107
[9]   A Drift Region-Based Data Sample Filtering Method [J].
Dong, Fan ;
Lu, Jie ;
Song, Yiliao ;
Liu, Feng ;
Zhang, Guangquan .
IEEE TRANSACTIONS ON CYBERNETICS, 2022, 52 (09) :9377-9390
[10]  
Dua D., 2017, UCI MACHINE LEARNING