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Frontiers of Computer Science

ISSN 2095-2228

ISSN 2095-2236(Online)

CN 10-1014/TP

邮发代号 80-970

2019 Impact Factor: 1.275

Frontiers of Computer Science  2024, Vol. 18 Issue (5): 185346   https://doi.org/10.1007/s11704-024-3922-6
  本期目录
I know I don’t know: an evidential deep learning framework for traffic classification
Shangsen LI, Lailong LUO(), Yun ZHOU, Deke GUO, Xiang XU
National Key Laboratory of Information Systems Engineering, National University of Defense Technology, Changsha 410000, China
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收稿日期: 2023-11-17      出版日期: 2024-04-30
Corresponding Author(s): Lailong LUO   
 引用本文:   
. [J]. Frontiers of Computer Science, 2024, 18(5): 185346.
Shangsen LI, Lailong LUO, Yun ZHOU, Deke GUO, Xiang XU. I know I don’t know: an evidential deep learning framework for traffic classification. Front. Comput. Sci., 2024, 18(5): 185346.
 链接本文:  
https://academic.hep.com.cn/fcs/CN/10.1007/s11704-024-3922-6
https://academic.hep.com.cn/fcs/CN/Y2024/V18/I5/185346
Fig.1  
Fig.2  
Fig.3  
Fig.4  
AUC_var θ^ FPR/FNR AUC_ent θ^ FPR/FNR AUC_mul θ^ FPR/FNR
MC_BFA 0.9169 0.179589 0.132308 0.9585 0.206277 0.100750 0.9687 0.066278 0.084974
MC_BFL 0.7324 0.168519 0.311261 0.851 0.569718 0.240739 0.9654 0.051725 0.091341
MC_BSA 0.9451 0.182269 0.089815 0.9905 0.381495 0.049791 0.9931 0.115430 0.040437
MC_BSL 0.7273 0.166945 0.283742 0.8423 0.766909 0.266439 0.9732 0.061077 0.093192
MC_MFA 0.7645 0.109668 0.283940 0.8645 0.095713 0.206909 0.9004 0.030432 0.177660
MC_MFL 0.7081 0.123277 0.331513 0.8262 0.414160 0.228796 0.8645 0.067065 0.212942
MC_MSA 0.7558 0.082487 0.294361 0.8287 0.064592 0.231472 0.8719 0.022839 0.191205
MC_MSL 0.7094 0.105639 0.314834 0.8356 0.350706 0.241975 0.8997 0.087567 0.177279
Tab.1  
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