山东大学学报 (工学版)    2018 48 (6): 27-36   ISSN: 1672-3961  CN: 37-1391/T  

基于相关熵和流形学习的多标签特征选择算法
陈红(),杨小飞*(),万青,马盈仓
西安工程大学理学院, 陕西 西安 710048
收稿日期 2018-07-03  修回日期 null  网络版发布日期 2018-12-26
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通讯作者: 杨小飞