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CIFAR-10, 4000 Labels
Image Classification on CIFAR-10, 4000 Labels
Metric: Percentage error (lower is better)
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#
Model
↕
Percentage error
▲
Extra Data
Paper
Date
↕
Code
1
SimMatch
3.96
No
SimMatch: Semi-supervised Learning with Similari...
2022-03-14
Code
2
Self Meta Pseudo Labels
4.09
No
Self Meta Pseudo Labels: Meta Pseudo Labels With...
2022-12-27
-
3
FixMatch+CR
4.16
No
Contrastive Regularization for Semi-Supervised L...
2022-01-17
-
4
EnAET
4.18
No
EnAET: A Self-Trained framework for Semi-Supervi...
2019-11-21
Code
5
UPS (wrn-28-2)
4.25
No
NP-Match: When Neural Processes meet Semi-Superv...
2022-07-03
Code
6
FixMatch (CTA)
4.31
No
FixMatch: Simplifying Semi-Supervised Learning w...
2020-01-21
Code
7
UPS (Shake-Shake)
4.86
No
In Defense of Pseudo-Labeling: An Uncertainty-Aw...
2021-01-15
Code
8
SWSA
5
No
There Are Many Consistent Explanations of Unlabe...
2018-06-14
Code
9
ReMixMatch
5.14
No
ReMixMatch: Semi-Supervised Learning with Distri...
2019-11-21
Code
10
UDA
5.27
No
Unsupervised Data Augmentation for Consistency T...
2019-04-29
Code
11
R2-D2 (Shake-Shake)
5.72
No
Repetitive Reprediction Deep Decipher for Semi-S...
2019-08-09
Code
12
DMT (WRN-28-2)
5.79
No
DMT: Dynamic Mutual Training for Semi-Supervised...
2020-04-18
Code
13
SHOT-VAE
6.11
No
SHOT-VAE: Semi-supervised Deep Generative Models...
2020-11-21
Code
14
MixMatch
6.24
No
MixMatch: A Holistic Approach to Semi-Supervised...
2019-05-06
Code
15
Mean Teacher
6.28
No
Mean teachers are better role models: Weight-ave...
2017-03-06
Code
16
RealMix
6.38
No
RealMix: Towards Realistic Semi-Supervised Deep ...
2019-12-18
Code
17
Triple-GAN-V2 (ResNet-26)
6.54
No
Triple Generative Adversarial Networks
2019-12-20
Code
18
ICT (CNN-13)
7.29
No
Interpolation Consistency Training for Semi-Supe...
2019-03-09
Code
19
LiDAM
7.48
No
LiDAM: Semi-Supervised Learning with Localized D...
2020-10-13
-
20
ICT (WRN-28-2)
7.66
No
Interpolation Consistency Training for Semi-Supe...
2019-03-09
Code
21
ADA-Net (ConvNet)
8.72
No
Semi-Supervised Learning by Augmented Distributi...
2019-05-20
Code
22
Dual Student (600)
8.89
No
Dual Student: Breaking the Limits of the Teacher...
2019-09-03
Code
23
Triple-GAN-V2 (CNN-13)
10.01
No
Triple Generative Adversarial Networks
2019-12-20
Code
24
VAT+EntMin
10.55
No
Virtual Adversarial Training: A Regularization M...
2017-04-13
Code
25
GLOT-DR
10.6
No
Global-Local Regularization Via Distributional R...
2022-03-01
Code
26
VAT
11.36
No
Virtual Adversarial Training: A Regularization M...
2017-04-13
Code
27
SESEMI SSL (ConvNet)
11.65
No
Exploring Self-Supervised Regularization for Sup...
2019-06-25
Code
28
Pi Model
12.16
No
Temporal Ensembling for Semi-Supervised Learning
2016-10-07
Code
29
Triple-GAN-V2 (CNN-13, no aug)
12.41
No
Triple Generative Adversarial Networks
2019-12-20
Code
30
Bad GAN
14.41
No
Good Semi-supervised Learning that Requires a Ba...
2017-05-27
Code
31
GAN
15.59
No
Improved Techniques for Training GANs
2016-06-10
Code
32
Γ-model
20.4
No
Semi-Supervised Learning with Ladder Networks
2015-07-09
Code
#1
SimMatch
SOTA
3.96
Percentage error
· 2022-03-14
SimMatch: Semi-supervised Learning with Similarity Matching
Code
#2
Self Meta Pseudo Labels
4.09
Percentage error
· 2022-12-27
Self Meta Pseudo Labels: Meta Pseudo Labels Without The Teacher
#3
FixMatch+CR
SOTA
4.16
Percentage error
· 2022-01-17
Contrastive Regularization for Semi-Supervised Learning
#4
EnAET
SOTA
4.18
Percentage error
· 2019-11-21
EnAET: A Self-Trained framework for Semi-Supervised and Supervised Learning with Ensemble Transformations
Code
#5
UPS (wrn-28-2)
4.25
Percentage error
· 2022-07-03
NP-Match: When Neural Processes meet Semi-Supervised Learning
Code
#6
FixMatch (CTA)
4.31
Percentage error
· 2020-01-21
FixMatch: Simplifying Semi-Supervised Learning with Consistency and Confidence
Code
#7
UPS (Shake-Shake)
4.86
Percentage error
· 2021-01-15
In Defense of Pseudo-Labeling: An Uncertainty-Aware Pseudo-label Selection Framework for Semi-Supervised Learning
Code
#8
SWSA
SOTA
5
Percentage error
· 2018-06-14
There Are Many Consistent Explanations of Unlabeled Data: Why You Should Average
Code
#9
ReMixMatch
5.14
Percentage error
· 2019-11-21
ReMixMatch: Semi-Supervised Learning with Distribution Alignment and Augmentation Anchoring
Code
#10
UDA
5.27
Percentage error
· 2019-04-29
Unsupervised Data Augmentation for Consistency Training
Code
#11
R2-D2 (Shake-Shake)
5.72
Percentage error
· 2019-08-09
Repetitive Reprediction Deep Decipher for Semi-Supervised Learning
Code
#12
DMT (WRN-28-2)
5.79
Percentage error
· 2020-04-18
DMT: Dynamic Mutual Training for Semi-Supervised Learning
Code
#13
SHOT-VAE
6.11
Percentage error
· 2020-11-21
SHOT-VAE: Semi-supervised Deep Generative Models With Label-aware ELBO Approximations
Code
#14
MixMatch
6.24
Percentage error
· 2019-05-06
MixMatch: A Holistic Approach to Semi-Supervised Learning
Code
#15
Mean Teacher
SOTA
6.28
Percentage error
· 2017-03-06
Mean teachers are better role models: Weight-averaged consistency targets improve semi-supervised deep learning results
Code
#16
RealMix
6.38
Percentage error
· 2019-12-18
RealMix: Towards Realistic Semi-Supervised Deep Learning Algorithms
Code
#17
Triple-GAN-V2 (ResNet-26)
6.54
Percentage error
· 2019-12-20
Triple Generative Adversarial Networks
Code
#18
ICT (CNN-13)
7.29
Percentage error
· 2019-03-09
Interpolation Consistency Training for Semi-Supervised Learning
Code
#19
LiDAM
7.48
Percentage error
· 2020-10-13
LiDAM: Semi-Supervised Learning with Localized Domain Adaptation and Iterative Matching
#20
ICT (WRN-28-2)
7.66
Percentage error
· 2019-03-09
Interpolation Consistency Training for Semi-Supervised Learning
Code
#21
ADA-Net (ConvNet)
8.72
Percentage error
· 2019-05-20
Semi-Supervised Learning by Augmented Distribution Alignment
Code
#22
Dual Student (600)
8.89
Percentage error
· 2019-09-03
Dual Student: Breaking the Limits of the Teacher in Semi-supervised Learning
Code
#23
Triple-GAN-V2 (CNN-13)
10.01
Percentage error
· 2019-12-20
Triple Generative Adversarial Networks
Code
#24
VAT+EntMin
10.55
Percentage error
· 2017-04-13
Virtual Adversarial Training: A Regularization Method for Supervised and Semi-Supervised Learning
Code
#25
GLOT-DR
10.6
Percentage error
· 2022-03-01
Global-Local Regularization Via Distributional Robustness
Code
#26
VAT
11.36
Percentage error
· 2017-04-13
Virtual Adversarial Training: A Regularization Method for Supervised and Semi-Supervised Learning
Code
#27
SESEMI SSL (ConvNet)
11.65
Percentage error
· 2019-06-25
Exploring Self-Supervised Regularization for Supervised and Semi-Supervised Learning
Code
#28
Pi Model
SOTA
12.16
Percentage error
· 2016-10-07
Temporal Ensembling for Semi-Supervised Learning
Code
#29
Triple-GAN-V2 (CNN-13, no aug)
12.41
Percentage error
· 2019-12-20
Triple Generative Adversarial Networks
Code
#30
Bad GAN
14.41
Percentage error
· 2017-05-27
Good Semi-supervised Learning that Requires a Bad GAN
Code
#31
GAN
SOTA
15.59
Percentage error
· 2016-06-10
Improved Techniques for Training GANs
Code
#32
Γ-model
SOTA
20.4
Percentage error
· 2015-07-09
Semi-Supervised Learning with Ladder Networks
Code