Telecommunications Science ›› 2020, Vol. 36 ›› Issue (3): 100-110.doi: 10.11959/j.issn.1000-0801.2020060
• Comprehensive Review • Previous Articles Next Articles
Yingzhao ZHU
Revised:
2020-03-03
Online:
2020-03-20
Published:
2020-03-26
CLC Number:
Yingzhao ZHU. Review on heterogeneous transfer learning[J]. Telecommunications Science, 2020, 36(3): 100-110.
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方法 | 迁移类别 | 源数据 | 目标数据 | 多源 | 通用解决方案 | 负迁移 |
CLSCL | 基于对称特征 | 标记 | 未标记 | 不支持 | 不支持 | 无 |
HeMap | 基于对称特征 | 标记 | 部分标记 | 不支持 | 支持 | 无 |
DAMA | 基于对称特征 | 标记 | 部分标记 | 支持 | 支持 | 无 |
HTLIC | 基于对称特征 | 未标记 | 大量标记 | 不支持 | 支持 | 无 |
TTI | 基于对称特征 | 标记 | 部分标记 | 不支持 | 不支持 | 无 |
HFA | 基于对称特征 | 标记 | 部分标记 | 不支持 | 支持 | 无 |
SHFA | 基于对称特征 | 标记 | 部分标记 | 不支持 | 支持 | 无 |
ARC-t | 基于非对称特征 | 标记 | 部分标记 | 不支持 | 支持 | 无 |
MOMAP | 基于非对称特征 | 标记 | 部分标记 | 支持 | 支持 | 无 |
SHFR | 基于非对称特征 | 标记 | 部分标记 | 不支持 | 支持 | 无 |
HDP | 基于非对称特征 | 标记 | 未标记 | 不支持 | 支持 | 无 |
HHTL | 基于非对称特征 | 标记 | 未标记 | 不支持 | 不支持 | 无 |
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