Folgen
Gang Niu
Gang Niu
RIKEN Center for Advanced Intelligence Project
Bestätigte E-Mail-Adresse bei riken.jp - Startseite
Titel
Zitiert von
Zitiert von
Jahr
Co-teaching: Robust training of deep neural networks with extremely noisy labels
B Han, Q Yao, X Yu, G Niu, M Xu, W Hu, IW Tsang, M Sugiyama
NeurIPS 2018, 2018
19532018
How does disagreement help generalization against label corruption?
X Yu, B Han, J Yao, G Niu, IW Tsang, M Sugiyama
ICML 2019, 2019
7472019
Positive-unlabeled learning with non-negative risk estimator
R Kiryo, G Niu, MC Plessis, M Sugiyama
NeurIPS 2017 (oral), 2017
4802017
Analysis of learning from positive and unlabeled data
MC du Plessis, G Niu, M Sugiyama
NeurIPS 2014, 2014
4082014
Attacks which do not kill training make adversarial learning stronger
J Zhang, X Xu, B Han, G Niu, L Cui, M Sugiyama, M Kankanhalli
ICML 2020, 2020
3822020
Convex formulation for learning from positive and unlabeled data
MC du Plessis, G Niu, M Sugiyama
ICML 2015, 2015
3442015
Are anchor points really indispensable in label-noise learning?
X Xia, T Liu, N Wang, B Han, C Gong, G Niu, M Sugiyama
NeurIPS 2019, 2019
3382019
Does distributionally robust supervised learning give robust classifiers?
W Hu, G Niu, I Sato, M Sugiyama
ICML 2018, 2018
2842018
Part-dependent label noise: Towards instance-dependent label noise
X Xia, T Liu, B Han, N Wang, M Gong, H Liu, G Niu, D Tao, M Sugiyama
NeurIPS 2020 (spotlight), 2020
2462020
Class-prior estimation for learning from positive and unlabeled data
MC du Plessis, G Niu, M Sugiyama
Machine Learning 106 (4), 463--492, 2017
245*2017
Masking: A new perspective of noisy supervision
B Han, J Yao, G Niu, M Zhou, IW Tsang, Y Zhang, M Sugiyama
NeurIPS 2018, 2018
2422018
Geometry-aware instance-reweighted adversarial training
J Zhang, J Zhu, G Niu, B Han, M Sugiyama, M Kankanhalli
ICLR 2021 (oral), 2021
2402021
Dual T: Reducing estimation error for transition matrix in label-noise learning
Y Yao, T Liu, B Han, M Gong, J Deng, G Niu, M Sugiyama
NeurIPS 2020, 2020
2012020
Learning with noisy labels revisited: A study using real-world human annotations
J Wei, Z Zhu, H Cheng, T Liu, G Niu, Y Liu
ICLR 2022, 2022
1752022
Analysis and improvement of policy gradient estimation
T Zhao, H Hachiya, G Niu, M Sugiyama
NeurIPS 2011, 2011
1712011
Learning from complementary labels
T Ishida, G Niu, W Hu, M Sugiyama
NeurIPS 2017, 2017
1642017
Progressive identification of true labels for partial-label learning
J Lv, M Xu, L Feng, G Niu, X Geng, M Sugiyama
ICML 2020, 2020
1572020
Understanding and improving early stopping for learning with noisy labels
Y Bai, E Yang, B Han, Y Yang, J Li, Y Mao, G Niu, T Liu
NeurIPS 2021, 2021
1412021
SIGUA: Forgetting may make learning with noisy labels more robust
B Han, G Niu, X Yu, Q Yao, M Xu, IW Tsang, M Sugiyama
ICML 2020, 2020
132*2020
Theoretical comparisons of positive-unlabeled learning against positive-negative learning
G Niu, MC du Plessis, T Sakai, Y Ma, M Sugiyama
NeurIPS 2016, 2016
1322016
Das System kann den Vorgang jetzt nicht ausführen. Versuchen Sie es später erneut.
Artikel 1–20