Concept Drift Detection in Data Stream Mining : A literature review

被引:56
|
作者
Agrahari, Supriya [1 ]
Singh, Anil Kumar [1 ]
机构
[1] Motilal Nehru Natl Inst Technol Allahabad, Prayagraj, India
关键词
Concept drift; Concept evolution; Adaptation mechanism; Data stream mining; NOVELTY DETECTION; ENSEMBLE; CLASSIFIER; FRAMEWORK;
D O I
10.1016/j.jksuci.2021.11.006
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In recent years, the availability of time series streaming information has been growing enormously. Learning from real-time data has been receiving increasingly more attention since the last decade. Online learning encounters the change in the distribution of data while extracting considerable information from data streams. Hidden data contexts, which are not known to the learning algorithms, are known as concept drift. Classifier classifies incoming instances using past training instances of the data stream. The accuracy of the classifier deteriorates because of the concept drift. The traditional classifiers are not expected to learn the patterns in a non-stationary distribution of data. For any real-time use, the classifier needs to detect the concept drift and adapts over time. In the real-time scenario, we have to deal with semi-supervised and unsupervised data, which provide no or fewer labeled data. The motivation behind this paper is to introduce a survey identified with a broad categorization of concept drift detectors with their key points, limitations, and advantages. Eventually, the article suggests research trends, research challenges, and future work. The adaptive mechanisms are also incorporated in this survey. (c) 2021 The Authors. Published by Elsevier B.V. on behalf of King Saud University.
引用
收藏
页码:9523 / 9540
页数:18
相关论文
共 50 条
  • [1] Combining active learning with concept drift detection for data stream mining
    Krawczyk, Bartosz
    Pfahringer, Bernhard
    Wozniak, Michal
    [J]. 2018 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2018, : 2239 - 2244
  • [2] Bayesian Nonparametric Unsupervised Concept Drift Detection for Data Stream Mining
    Xuan, Junyu
    Lu, Jie
    Zhang, Guangquan
    [J]. ACM TRANSACTIONS ON INTELLIGENT SYSTEMS AND TECHNOLOGY, 2021, 12 (01)
  • [3] Scalable concept drift adaptation for stream data mining
    Hu, Lisha
    Li, Wenxiu
    Lu, Yaru
    Hu, Chunyu
    [J]. COMPLEX & INTELLIGENT SYSTEMS, 2024, 10 (05) : 6725 - 6743
  • [4] Concept Drift Detection for Evolving Stream Data
    Lee, Jeonghoon
    Lee, Yoon-Joon
    [J]. IEICE TRANSACTIONS ON INFORMATION AND SYSTEMS, 2011, E94D (11) : 2288 - 2292
  • [5] Adversarial concept drift detection under poisoning attacks for robust data stream mining
    Łukasz Korycki
    Bartosz Krawczyk
    [J]. Machine Learning, 2023, 112 : 4013 - 4048
  • [6] Adversarial concept drift detection under poisoning attacks for robust data stream mining
    Korycki, Lukasz
    Krawczyk, Bartosz
    [J]. MACHINE LEARNING, 2023, 112 (10) : 4013 - 4048
  • [7] Data stream mining: methods and challenges for handling concept drift
    Wares, Scott
    Isaacs, John
    Elyan, Eyad
    [J]. SN APPLIED SCIENCES, 2019, 1 (11)
  • [8] Data stream mining: methods and challenges for handling concept drift
    Scott Wares
    John Isaacs
    Eyad Elyan
    [J]. SN Applied Sciences, 2019, 1
  • [9] Detection of Concept Drift for Learning from Stream Data
    Lee, Jeonghoon
    Magoules, Frederic
    [J]. 2012 IEEE 14TH INTERNATIONAL CONFERENCE ON HIGH PERFORMANCE COMPUTING AND COMMUNICATIONS & 2012 IEEE 9TH INTERNATIONAL CONFERENCE ON EMBEDDED SOFTWARE AND SYSTEMS (HPCC-ICESS), 2012, : 241 - 245
  • [10] Concept drift detection on stream data for revising DBSCAN
    Miyata, Yasushi
    Ishikawa, Hiroshi
    [J]. ELECTRONICS AND COMMUNICATIONS IN JAPAN, 2021, 104 (01) : 87 - 94