• DocumentCode
    12157
  • Title

    Resampling-Based Ensemble Methods for Online Class Imbalance Learning

  • Author

    Shuo Wang ; Minku, Leandro L. ; Xin Yao

  • Author_Institution
    Centre of Excellence for Res. in Comput. Intell. & Applic. (CERCIA), Univ. of Birmingham, Birmingham, UK
  • Volume
    27
  • Issue
    5
  • fYear
    2015
  • fDate
    May 1 2015
  • Firstpage
    1356
  • Lastpage
    1368
  • Abstract
    Online class imbalance learning is a new learning problem that combines the challenges of both online learning and class imbalance learning. It deals with data streams having very skewed class distributions. This type of problems commonly exists in real-world applications, such as fault diagnosis of real-time control monitoring systems and intrusion detection in computer networks. In our earlier work, we defined class imbalance online, and proposed two learning algorithms OOB and UOB that build an ensemble model overcoming class imbalance in real time through resampling and time-decayed metrics. In this paper, we further improve the resampling strategy inside OOB and UOB, and look into their performance in both static and dynamic data streams. We give the first comprehensive analysis of class imbalance in data streams, in terms of data distributions, imbalance rates and changes in class imbalance status. We find that UOB is better at recognizing minority-class examples in static data streams, and OOB is more robust against dynamic changes in class imbalance status. The data distribution is a major factor affecting their performance. Based on the insight gained, we then propose two new ensemble methods that maintain both OOB and UOB with adaptive weights for final predictions, called WEOB1 and WEOB2. They are shown to possess the strength of OOB and UOB with good accuracy and robustness.
  • Keywords
    data handling; learning (artificial intelligence); sampling methods; OOB; UOB; WEOB1; WEOB2; class imbalance status; data distributions; dynamic data stream; imbalance rates; online class imbalance learning; resampling-based ensemble method; skewed class distributions; static data stream; static data streams; time-decayed metrics; Accuracy; Algorithm design and analysis; Bagging; Frequency modulation; Measurement; Robustness; Training; Bagging; Class imbalance; ensemble learning; online learning; resampling;
  • fLanguage
    English
  • Journal_Title
    Knowledge and Data Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1041-4347
  • Type

    jour

  • DOI
    10.1109/TKDE.2014.2345380
  • Filename
    6871400