标题
Cost sensitive ν-support vector machine with LINEX loss
作者
关键词
Class imbalance, Cost sensitive, Linear-exponential loss, ν-support vector machine, ADMM, GD
出版物
INFORMATION PROCESSING & MANAGEMENT
Volume 59, Issue 2, Pages 102809
出版商
Elsevier BV
发表日期
2021-11-17
DOI
10.1016/j.ipm.2021.102809
参考文献
相关参考文献
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