Normalized class coherence change-based kNN for classification of imbalanced data
作者:
Highlights:
• NCC-kNN is a k nearest neighbor classification algorithm for imbalanced classification.
• NCC-kNN considers not only imbalance ratio but also the difference in class coherence by classes.
• NCC-kNN normalizes the average class coherence change by the mean class coherence of each class.
• NCC-kNN considers the class coherence of a new sample with the mean class coherence as the base.
• NCC-kNN is prone to detect the rare class by considering the low density in the rare class.
摘要
•NCC-kNN is a k nearest neighbor classification algorithm for imbalanced classification.•NCC-kNN considers not only imbalance ratio but also the difference in class coherence by classes.•NCC-kNN normalizes the average class coherence change by the mean class coherence of each class.•NCC-kNN considers the class coherence of a new sample with the mean class coherence as the base.•NCC-kNN is prone to detect the rare class by considering the low density in the rare class.
论文关键词:kNN,Nearest neighbor classification,Imbalanced data,Class coherence
论文评审过程:Received 24 May 2019, Revised 12 June 2021, Accepted 23 June 2021, Available online 29 June 2021, Version of Record 24 July 2021.
论文官网地址:https://doi.org/10.1016/j.patcog.2021.108126