Data stream mining: methods and challenges for handling concept drift

被引:0
|
作者
Scott Wares
John Isaacs
Eyad Elyan
机构
[1] Robert Gordon University,The Sir Ian Wood Building
来源
SN Applied Sciences | 2019年 / 1卷
关键词
Stream; Data; Mining; Concept drift;
D O I
暂无
中图分类号
学科分类号
摘要
Mining and analysing streaming data is crucial for many applications, and this area of research has gained extensive attention over the past decade. However, there are several inherent problems that continue to challenge the hardware and the state-of-the art algorithmic solutions. Examples of such problems include the unbound size, varying speed and unknown data characteristics of arriving instances from a data stream. The aim of this research is to portray key challenges faced by algorithmic solutions for stream mining, particularly focusing on the prevalent issue of concept drift. A comprehensive discussion of concept drift and its inherent data challenges in the context of stream mining is presented, as is a critical, in-depth review of relevant literature. Current issues with the evaluative procedure for concept drift detectors is also explored, highlighting problems such as a lack of established base datasets and the impact of temporal dependence on concept drift detection. By exposing gaps in the current literature, this study suggests recommendations for future research which should aid in the progression of stream mining and concept drift detection algorithms.
引用
收藏
相关论文
共 50 条
  • [1] Data stream mining: methods and challenges for handling concept drift
    Wares, Scott
    Isaacs, John
    Elyan, Eyad
    [J]. SN APPLIED SCIENCES, 2019, 1 (11)
  • [2] Efficient Handling of Concept Drift and Concept Evolution over Stream Data
    Haque, Ahsanul
    Khan, Latifur
    Baron, Michael
    Thuraisingham, Bhavani
    Aggarwal, Charu
    [J]. 2016 32ND IEEE INTERNATIONAL CONFERENCE ON DATA ENGINEERING (ICDE), 2016, : 481 - 492
  • [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] Feature Selection for Handling Concept Drift in the Data Stream Classification
    Turkov, Pavel
    Krasotkina, Olga
    Mottl, Vadim
    Sychugov, Alexey
    [J]. MACHINE LEARNING AND DATA MINING IN PATTERN RECOGNITION (MLDM 2016), 2016, 9729 : 614 - 629
  • [5] Handling Concept Drift in Data Streams by Using Drift Detection Methods
    Patil, Malini M.
    [J]. DATA MANAGEMENT, ANALYTICS AND INNOVATION, ICDMAI 2018, VOL 2, 2019, 839 : 155 - 166
  • [6] Concept Drift Detection in Data Stream Mining : A literature review
    Agrahari, Supriya
    Singh, Anil Kumar
    [J]. JOURNAL OF KING SAUD UNIVERSITY-COMPUTER AND INFORMATION SCIENCES, 2022, 34 (10) : 9523 - 9540
  • [7] 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
  • [8] Roadmap of Concept Drift Adaptation in Data Stream Mining, Years Later
    Mahdi, Osama A.
    Ali, Nawfal
    Pardede, Eric
    Alazab, Ammar
    Al-Quraishi, Tahsien
    Das, Bhagwan
    [J]. IEEE ACCESS, 2024, 12 : 21129 - 21146
  • [9] A New Gradual Forgetting Approach for Mining Data Stream with Concept Drift
    Li, Yingrong
    Wei, Yang
    Kolesnikova, Anastasiya
    Lee, Won Don
    [J]. ISISE 2008: INTERNATIONAL SYMPOSIUM ON INFORMATION SCIENCE AND ENGINEERING, VOL 1, 2008, : 556 - 559
  • [10] 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)