咨询与建议

限定检索结果

文献类型

  • 1 篇 期刊文献

馆藏范围

  • 1 篇 电子文献
  • 0 种 纸本馆藏

日期分布

学科分类号

  • 1 篇 理学
    • 1 篇 数学
    • 1 篇 化学
  • 1 篇 工学
    • 1 篇 电气工程
    • 1 篇 信息与通信工程
    • 1 篇 计算机科学与技术...

主题

  • 1 篇 multi-label lear...
  • 1 篇 relative labelin...
  • 1 篇 label correlatio...
  • 1 篇 binary relevance
  • 1 篇 class-imbalance
  • 1 篇 machine learning

机构

  • 1 篇 collaborative in...
  • 1 篇 school of comput...
  • 1 篇 key laboratory o...

作者

  • 1 篇 xin geng
  • 1 篇 xu-ying liu
  • 1 篇 min-ling zhang
  • 1 篇 yu-kun li

语言

  • 1 篇 英文
检索条件"主题词=relative labeling-importance"
1 条 记 录,以下是1-10 订阅
排序:
Binary relevance for multi-label learning: an overview
收藏 引用
Frontiers of Computer Science 2018年 第2期12卷 191-202页
作者: Min-Ling ZHANG Yu-Kun LI Xu-Ying LIU Xin GENG School of Computer Science and Engineering Southeast University Nanjing 210096 China Key Laboratory of Computer Network and Information Integration (Southeast University) Ministry of Education China Collaborative Innovation Center for Wireless Communications Technology Nanjing 211100 China
Multi-label learning deals with problems where each example is represented by a single instance while being associated with multiple class labels simultaneously. Binary relevance is arguably the most intuitive solutio... 详细信息
来源: 维普期刊数据库 维普期刊数据库 评论