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CIFAR-10N-Aggregate
Image Classification on CIFAR-10N-Aggregate
Metric: Accuracy (mean) (higher is better)
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Model name (A→Z)
#
Model
↕
Accuracy (mean)
▼
Extra Data
Paper
Date
↕
Code
1
ProMix
97.39
No
ProMix: Combating Label Noise via Maximizing Cle...
2022-07-21
Code
2
PSSCL
96.41
No
-
-
Code
3
PGDF
96.11
No
Sample Prior Guided Robust Model Learning to Sup...
2021-12-02
Code
4
SOP+
95.61
No
Robust Training under Label Noise by Over-parame...
2022-02-28
Code
5
ILL
95.47
No
Imprecise Label Learning: A Unified Framework fo...
2023-05-22
Code
6
CORES*
95.25
No
Learning with Instance-Dependent Label Noise: A ...
2020-10-05
Code
7
Divide-Mix
95.01
No
DivideMix: Learning with Noisy Labels as Semi-su...
2020-02-18
Code
8
ELR+
94.83
No
Early-Learning Regularization Prevents Memorizat...
2020-06-30
Code
9
PES (Semi)
94.66
No
Understanding and Improving Early Stopping for L...
2021-06-30
Code
10
GNL
92.57
No
Partial Label Supervision for Agnostic Generativ...
2023-08-02
Code
11
ELR
92.38
No
Early-Learning Regularization Prevents Memorizat...
2020-06-30
Code
12
CAL
91.97
No
Clusterability as an Alternative to Anchor Point...
2021-02-10
Code
13
Negative-LS
91.97
No
To Smooth or Not? When Label Smoothing Meets Noi...
2021-06-08
Code
14
F-div
91.64
No
When Optimizing $f$-divergence is Robust with La...
2020-11-07
Code
15
Positive-LS
91.57
No
Does label smoothing mitigate label noise?
2020-03-05
-
16
JoCoR
91.44
No
Combating noisy labels by agreement: A joint tra...
2020-03-05
Code
17
CORES
91.23
No
Learning with Instance-Dependent Label Noise: A ...
2020-10-05
Code
18
Co-Teaching
91.2
No
Co-teaching: Robust Training of Deep Neural Netw...
2018-04-18
Code
19
Peer Loss
90.75
No
Peer Loss Functions: Learning from Noisy Labels ...
2019-10-08
Code
20
Co-Teaching+
90.61
No
How does Disagreement Help Generalization agains...
2019-01-14
Code
21
VolMinNet
89.7
No
Provably End-to-end Label-Noise Learning without...
2021-02-04
Code
22
T-Revision
88.52
No
Are Anchor Points Really Indispensable in Label-...
2019-06-01
Code
23
Forward-T
88.24
No
Making Deep Neural Networks Robust to Label Nois...
2016-09-13
Code
24
Backward-T
88.13
No
Making Deep Neural Networks Robust to Label Nois...
2016-09-13
Code
25
GCE
87.85
No
Generalized Cross Entropy Loss for Training Deep...
2018-05-20
Code
26
CE
87.77
No
-
-
-
#1
ProMix
SOTA
97.39
Accuracy (mean)
· 2022-07-21
ProMix: Combating Label Noise via Maximizing Clean Sample Utility
Code
#2
PSSCL
96.41
Accuracy (mean)
No paper
Code
#3
PGDF
SOTA
96.11
Accuracy (mean)
· 2021-12-02
Sample Prior Guided Robust Model Learning to Suppress Noisy Labels
Code
#4
SOP+
95.61
Accuracy (mean)
· 2022-02-28
Robust Training under Label Noise by Over-parameterization
Code
#5
ILL
95.47
Accuracy (mean)
· 2023-05-22
Imprecise Label Learning: A Unified Framework for Learning with Various Imprecise Label Configurations
Code
#6
CORES*
SOTA
95.25
Accuracy (mean)
· 2020-10-05
Learning with Instance-Dependent Label Noise: A Sample Sieve Approach
Code
#7
Divide-Mix
SOTA
95.01
Accuracy (mean)
· 2020-02-18
DivideMix: Learning with Noisy Labels as Semi-supervised Learning
Code
#8
ELR+
94.83
Accuracy (mean)
· 2020-06-30
Early-Learning Regularization Prevents Memorization of Noisy Labels
Code
#9
PES (Semi)
94.66
Accuracy (mean)
· 2021-06-30
Understanding and Improving Early Stopping for Learning with Noisy Labels
Code
#10
GNL
92.57
Accuracy (mean)
· 2023-08-02
Partial Label Supervision for Agnostic Generative Noisy Label Learning
Code
#11
ELR
92.38
Accuracy (mean)
· 2020-06-30
Early-Learning Regularization Prevents Memorization of Noisy Labels
Code
#12
CAL
91.97
Accuracy (mean)
· 2021-02-10
Clusterability as an Alternative to Anchor Points When Learning with Noisy Labels
Code
#13
Negative-LS
91.97
Accuracy (mean)
· 2021-06-08
To Smooth or Not? When Label Smoothing Meets Noisy Labels
Code
#14
F-div
91.64
Accuracy (mean)
· 2020-11-07
When Optimizing $f$-divergence is Robust with Label Noise
Code
#15
Positive-LS
91.57
Accuracy (mean)
· 2020-03-05
Does label smoothing mitigate label noise?
#16
JoCoR
91.44
Accuracy (mean)
· 2020-03-05
Combating noisy labels by agreement: A joint training method with co-regularization
Code
#17
CORES
91.23
Accuracy (mean)
· 2020-10-05
Learning with Instance-Dependent Label Noise: A Sample Sieve Approach
Code
#18
Co-Teaching
SOTA
91.2
Accuracy (mean)
· 2018-04-18
Co-teaching: Robust Training of Deep Neural Networks with Extremely Noisy Labels
Code
#19
Peer Loss
90.75
Accuracy (mean)
· 2019-10-08
Peer Loss Functions: Learning from Noisy Labels without Knowing Noise Rates
Code
#20
Co-Teaching+
90.61
Accuracy (mean)
· 2019-01-14
How does Disagreement Help Generalization against Label Corruption?
Code
#21
VolMinNet
89.7
Accuracy (mean)
· 2021-02-04
Provably End-to-end Label-Noise Learning without Anchor Points
Code
#22
T-Revision
88.52
Accuracy (mean)
· 2019-06-01
Are Anchor Points Really Indispensable in Label-Noise Learning?
Code
#23
Forward-T
SOTA
88.24
Accuracy (mean)
· 2016-09-13
Making Deep Neural Networks Robust to Label Noise: a Loss Correction Approach
Code
#24
Backward-T
88.13
Accuracy (mean)
· 2016-09-13
Making Deep Neural Networks Robust to Label Noise: a Loss Correction Approach
Code
#25
GCE
87.85
Accuracy (mean)
· 2018-05-20
Generalized Cross Entropy Loss for Training Deep Neural Networks with Noisy Labels
Code
#26
CE
87.77
Accuracy (mean)
No paper