A Systems Theoretic Approach to Online Machine Learning

被引:1
作者
du Preez, Anli [1 ,2 ]
Beling, Peter [1 ,2 ]
Cody, Tyler [1 ,2 ]
机构
[1] Virginia Tech, Grado Dept Ind & Syst Engn, Blacksburg, VA 24061 USA
[2] Virginia Tech, Responsible Gen Intelligence Lab, Arlington, VA 24061 USA
来源
18TH ANNUAL IEEE INTERNATIONAL SYSTEMS CONFERENCE, SYSCON 2024 | 2024年
关键词
machine learning; online learning; systems theory; learning theory;
D O I
10.1109/SysCon61195.2024.10553476
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
The machine learning formulation of online learning is incomplete from a systems theoretic perspective. Typically, machine learning research emphasizes domains and tasks, and a problem solving worldview. It focuses on algorithm parameters, features, and samples, and neglects the perspective offered by considering system structure and system behavior or dynamics. Online learning is an active field of research and has been widely explored in terms of statistical theory and computational algorithms, however, in general, the literature still lacks formal system theoretical frameworks for modeling online learning systems and resolving systems-related concept drift issues. Furthermore, while the machine learning formulation serves to classify methods and literature, the systems theoretic formulation presented herein serves to provide a framework for the top-down design of online learning systems, including a novel definition of online learning and the identification of key design parameters. The framework is formulated in terms of input-output systems and is further divided into system structure and system behavior. Concept drift is a critical challenge faced in online learning, and this work formally approaches it as part of the system behavior characteristics. Healthcare provider fraud detection using machine learning is used as a case study throughout the paper to ground the discussion in a real-world online learning challenge.
引用
收藏
页数:8
相关论文
共 39 条
  • [1] Ben-David S., 2006, ADV NEURAL INFORM PR, V19, P137, DOI DOI 10.7551/MITPRESS/7503.003.0022
  • [2] Adaptive Online Sequential ELM for Concept Drift Tackling
    Budiman, Arif
    Fanany, Mohamad Ivan
    Basaruddin, Chan
    [J]. COMPUTATIONAL INTELLIGENCE AND NEUROSCIENCE, 2016, 2016
  • [3] Online Learning Algorithms
    Cesa-Bianchi, Nicolo
    Orabona, Francesco
    [J]. ANNUAL REVIEW OF STATISTICS AND ITS APPLICATION, VOL 8, 2021, 2021, 8 : 165 - 190
  • [4] Motivating a Systems Theory of AI
    Cody, Tyler
    Adams, Stephen
    Beling, Peter
    [J]. Insight, 2020, 23 (01) : 37 - 40
  • [5] Cascading Negative Transfer in Networks of Machine Learning Systems
    Cody, Tyler
    Beling, Peter A.
    [J]. 2023 IEEE INTERNATIONAL CONFERENCE ON ASSURED AUTONOMY, ICAA, 2023, : 141 - 148
  • [6] Homomorphisms Between Transfer, Multi-task, and Meta-learning Systems
    Cody, Tyler
    [J]. ARTIFICIAL GENERAL INTELLIGENCE, AGI 2022, 2023, 13539 : 199 - 208
  • [7] A Systems Theory of Transfer Learning
    Cody, Tyler
    Beling, Peter A.
    [J]. IEEE SYSTEMS JOURNAL, 2023, 17 (01): : 26 - 37
  • [8] A Systems Theoretic Perspective on Transfer Learning
    Cody, Tyler
    Adams, Stephen
    Beling, Peter A.
    [J]. 2019 13TH ANNUAL IEEE INTERNATIONAL SYSTEMS CONFERENCE (SYSCON), 2019,
  • [9] Mesarovician Abstract Learning Systems
    Cody, Tyler
    [J]. ARTIFICIAL GENERAL INTELLIGENCE, AGI 2021, 2022, 13154 : 55 - 64
  • [10] System Definition, System Worldviews, and Systemness Characteristics
    Dori, Dov
    Sillitto, Hillary
    Griego, Regina M.
    Mckinney, Dorothy
    Arnold, Eileen P.
    Godfrey, Patrick
    Martin, James
    Jackson, Scott
    Krob, Daniel
    [J]. IEEE SYSTEMS JOURNAL, 2020, 14 (02): : 1538 - 1548