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CIFAR-10 (with noisy labels)
CIFAR-10 (with noisy labels)
Benchmarks
Image Classification
/
Accuracy (under 20% Sym. label noise)
Image Classification
/
Accuracy (under 50% Sym. label noise)
Image Classification
/
Accuracy (under 80% Sym. label noise)
Image Classification
/
Accuracy (under 90% Sym. label noise)
Image Classification
/
Accuracy (under 95% Sym. label noise)
Related Benchmarks
CIFAR-10
/
2D Classification
/
Size (MB)
CIFAR-10
/
Adversarial Attack
/
Attack: AutoAttack
CIFAR-10
/
Adversarial Attack
/
Attack: DeepFool
CIFAR-10
/
Adversarial Attack
/
Attack: PGD20
CIFAR-10
/
Adversarial Attack
/
Robust Accuracy
CIFAR-10
/
Adversarial Defense
/
Accuracy
CIFAR-10
/
Adversarial Defense
/
Attack: AutoAttack
CIFAR-10
/
Adversarial Defense
/
Robust Accuracy
CIFAR-10
/
Adversarial Robustness
/
Accuracy
CIFAR-10
/
Adversarial Robustness
/
Attack: AutoAttack
CIFAR-10
/
Adversarial Robustness
/
Robust Accuracy
CIFAR-10
/
Anomaly Detection
/
AUC-ROC
CIFAR-10
/
Anomaly Detection
/
Mean AUC
CIFAR-10
/
AutoML
/
Accuracy (% )
CIFAR-10
/
AutoML
/
FLOPS
CIFAR-10
/
AutoML
/
Parameters
CIFAR-10
/
AutoML
/
Search Time (GPU days)
CIFAR-10
/
AutoML
/
Top-1 Error Rate
CIFAR-10
/
Classification
/
Accuracy
CIFAR-10
/
Conditional Image Generation
/
FID
CIFAR-10
/
Conditional Image Generation
/
Inception score
CIFAR-10
/
Conditional Image Generation
/
Intra-FID
CIFAR-10
/
Contrastive Learning
/
Accuracy (Top-1)
CIFAR-10
/
Data Augmentation
/
Percentage error
CIFAR-10
/
Density Estimation
/
Log-likelihood (nats)
CIFAR-10
/
Density Estimation
/
NLL (bits/dim)
CIFAR-10
/
Document Text Classification
/
Test Accuracy
CIFAR-10
/
Federated Learning
/
ACC@1-100Clients
CIFAR-10
/
Federated Learning
/
ACC@1-10Clients
CIFAR-10
/
Federated Learning
/
ACC@1-500Clients
CIFAR-10
/
Federated Learning
/
ACC@1-50Clients
CIFAR-10
/
Graph Classification
/
Accuracy
CIFAR-10
/
Image Classification
/
AUCROC
CIFAR-10
/
Image Classification
/
Accuracy
CIFAR-10
/
Image Classification
/
Accuracy
CIFAR-10
/
Image Classification
/
All accuracy (10% Labeled)
CIFAR-10
/
Image Classification
/
All accuracy (50% Labeled)
CIFAR-10
/
Image Classification
/
Cross Entropy Loss
CIFAR-10
/
Image Classification
/
F1
CIFAR-10
/
Image Classification
/
Novel accuracy (10% Labeled)
CIFAR-10
/
Image Classification
/
Novel accuracy (50% Labeled)
CIFAR-10
/
Image Classification
/
Parameters
CIFAR-10
/
Image Classification
/
Percentage correct
CIFAR-10
/
Image Classification
/
Seen accuracy (10% Labeled)
CIFAR-10
/
Image Classification
/
Seen accuracy (50% Labeled)
CIFAR-10
/
Image Classification
/
Test Accuracy
CIFAR-10
/
Image Classification
/
Top 1 Accuracy
CIFAR-10
/
Image Classification
/
Top-1 Accuracy
CIFAR-10
/
Image Clustering
/
ARI
CIFAR-10
/
Image Clustering
/
Accuracy
CIFAR-10
/
Image Clustering
/
Backbone
CIFAR-10
/
Image Clustering
/
NMI
CIFAR-10
/
Image Clustering
/
Train set
CIFAR-10
/
Image Compression
/
Bit rate
CIFAR-10
/
Image Generation
/
FID
CIFAR-10
/
Image Generation
/
IS
CIFAR-10
/
Image Generation
/
Inception score
CIFAR-10
/
Image Generation
/
Intra-FID
CIFAR-10
/
Image Generation
/
NFE
CIFAR-10
/
Image Retrieval
/
Average-mAP
CIFAR-10
/
Model Compression
/
Size (MB)
CIFAR-10
/
Nature-Inspired Optimization Algorithm
/
training time (s)
CIFAR-10
/
Network Pruning
/
Accuracy
CIFAR-10
/
Network Pruning
/
GFLOPs
CIFAR-10
/
Network Pruning
/
Inference Time (ms)
CIFAR-10
/
Neural Architecture Search
/
Accuracy (% )
CIFAR-10
/
Neural Architecture Search
/
FLOPS
CIFAR-10
/
Neural Architecture Search
/
Parameters
CIFAR-10
/
Neural Architecture Search
/
Search Time (GPU days)
CIFAR-10
/
Neural Architecture Search
/
Top-1 Error Rate
CIFAR-10
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10
/
Out-of-Distribution Detection
/
FPR95
CIFAR-10
/
Quantization
/
MAP
CIFAR-10
/
Self-Supervised Learning
/
Top-1 Accuracy
CIFAR-10
/
Semi-Supervised Image Classification
/
All accuracy (10% Labeled)
CIFAR-10
/
Semi-Supervised Image Classification
/
All accuracy (50% Labeled)
CIFAR-10
/
Semi-Supervised Image Classification
/
Novel accuracy (10% Labeled)
CIFAR-10
/
Semi-Supervised Image Classification
/
Novel accuracy (50% Labeled)
CIFAR-10
/
Semi-Supervised Image Classification
/
Seen accuracy (10% Labeled)
CIFAR-10
/
Semi-Supervised Image Classification
/
Seen accuracy (50% Labeled)
CIFAR-10
/
Stochastic Optimization
/
Accuracy (max)
CIFAR-10
/
Stochastic Optimization
/
Accuracy (mean)
CIFAR-10
/
Supervised Image Retrieval
/
Precision@100
CIFAR-10
/
Unsupervised Anomaly Detection
/
AUC-ROC
CIFAR-10
/
Unsupervised Anomaly Detection with Specified Settings -- 0.1% anomaly
/
AUC-ROC
CIFAR-10
/
Unsupervised Anomaly Detection with Specified Settings -- 1% anomaly
/
AUC-ROC
CIFAR-10
/
Unsupervised Anomaly Detection with Specified Settings -- 10% anomaly
/
AUC-ROC
CIFAR-10
/
Unsupervised Anomaly Detection with Specified Settings -- 30% anomaly
/
AUC-ROC
CIFAR-10
/
Zero-Shot Learning
/
Accuracy
CIFAR-10 (10% data)
/
Image Generation
/
FID
CIFAR-10 (20% data)
/
Image Generation
/
FID
CIFAR-10 (250 Labels, ImageNet-100 Unlabeled)
/
Image Classification
/
Accuracy
CIFAR-10 (250 Labels, ImageNet-100 Unlabeled)
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-10 (40 Labels, ImageNet-100 Unlabeled)
/
Image Classification
/
Accuarcy
CIFAR-10 (4000 Labels, ImageNet-100 Unlabeled)
/
Image Classification
/
Accuracy
CIFAR-10 (4000 Labels, ImageNet-100 Unlabeled)
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-10 (Conditional)
/
Density Estimation
/
Log-likelihood
CIFAR-10 (partial ratio 0.1)
/
Partial Label Learning
/
Accuracy
CIFAR-10 (partial ratio 0.3)
/
Partial Label Learning
/
Accuracy
CIFAR-10 (partial ratio 0.5)
/
Partial Label Learning
/
Accuracy
CIFAR-10 Image Classification
/
AutoML
/
FLOPS
CIFAR-10 Image Classification
/
AutoML
/
Params
CIFAR-10 Image Classification
/
AutoML
/
Percentage error
CIFAR-10 Image Classification
/
AutoML
/
Search Time (GPU days)
CIFAR-10 Image Classification
/
Image Classification
/
Params
CIFAR-10 Image Classification
/
Neural Architecture Search
/
FLOPS
CIFAR-10 Image Classification
/
Neural Architecture Search
/
Params
CIFAR-10 Image Classification
/
Neural Architecture Search
/
Percentage error
CIFAR-10 Image Classification
/
Neural Architecture Search
/
Search Time (GPU days)
CIFAR-10 LT
/
Conditional Image Generation
/
FID
CIFAR-10 LT
/
Image Generation
/
FID
CIFAR-10 ResNet-18 - 200 Epochs
/
Stochastic Optimization
/
Accuracy
CIFAR-10 WRN-28-10 - 200 Epochs
/
Stochastic Optimization
/
Accuracy
CIFAR-10 vs CIFAR-10.1
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10 vs CIFAR-10.1 (1000 samples)
/
Two-sample testing
/
Avg accuracy
CIFAR-10 vs CIFAR-100
/
Out-of-Distribution Detection
/
AUPR
CIFAR-10 vs CIFAR-100
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10 vs CIFAR-100
/
Out-of-Distribution Detection
/
FPR95
CIFAR-10 vs Gaussian
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10 vs ImageNet (C)
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10 vs ImageNet (R)
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10 vs LSUN (C)
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10 vs LSUN (R)
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10 vs SVHN
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10 vs SVHN
/
Out-of-Distribution Detection
/
FPR95
CIFAR-10 vs Uniform
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10 vs iSUN
/
Out-of-Distribution Detection
/
AUROC
CIFAR-10, 100 Labels
/
Image Classification
/
Accuracy (%)
CIFAR-10, 100 Labels
/
Image Classification
/
Percentage error
CIFAR-10, 100 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-10, 100 Labels (OpenSet, 6/4)
/
Image Classification
/
Accuracy
CIFAR-10, 100 Labels (OpenSet, 6/4)
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-10, 1000 Labels
/
Image Classification
/
Accuracy
CIFAR-10, 1000 Labels
/
Image Classification
/
Accuracy (%)
CIFAR-10, 1000 Labels
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-10, 20 Labels
/
Image Classification
/
Percentage error
CIFAR-10, 20 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-10, 2000 Labels
/
Image Classification
/
Accuracy
CIFAR-10, 2000 Labels
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-10, 250 Labels
/
Image Classification
/
Percentage error
CIFAR-10, 250 Labels
/
Image Classification
/
Top-1 accuracy %
CIFAR-10, 250 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-10, 30 Labels
/
Image Classification
/
Percentage error
CIFAR-10, 30 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-10, 40 Labels
/
Image Classification
/
Percentage error
CIFAR-10, 40 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-10, 40% Symmetric Noise
/
Image Classification
/
Percentage correct
CIFAR-10, 400 Labels (OpenSet, 6/4)
/
Image Classification
/
Accuracy
CIFAR-10, 400 Labels (OpenSet, 6/4)
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-10, 4000 Labels
/
Image Classification
/
Percentage error
CIFAR-10, 4000 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-10, 50 Labels (OpenSet, 6/4)
/
Image Classification
/
Accuracy
CIFAR-10, 50 Labels (OpenSet, 6/4)
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-10, 500 Labels
/
Image Classification
/
Accuracy
CIFAR-10, 500 Labels
/
Image Classification
/
Accuracy (%)
CIFAR-10, 500 Labels
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-10, 60% Symmetric Noise
/
Image Classification
/
Percentage correct
CIFAR-10, 80 Labels
/
Image Classification
/
Percentage error
CIFAR-10, 80 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-10-LT (ρ=10)
/
Few-Shot Image Classification
/
Error Rate
CIFAR-10-LT (ρ=10)
/
Generalized Few-Shot Classification
/
Error Rate
CIFAR-10-LT (ρ=10)
/
Generalized Few-Shot Learning
/
Error Rate
CIFAR-10-LT (ρ=10)
/
Image Classification
/
Error Rate
CIFAR-10-LT (ρ=10)
/
Long-tail Learning
/
Error Rate
CIFAR-10-LT (ρ=100)
/
Few-Shot Image Classification
/
Error Rate
CIFAR-10-LT (ρ=100)
/
Generalized Few-Shot Classification
/
Error Rate
CIFAR-10-LT (ρ=100)
/
Generalized Few-Shot Learning
/
Error Rate
CIFAR-10-LT (ρ=100)
/
Image Classification
/
Error Rate
CIFAR-10-LT (ρ=100)
/
Long-tail Learning
/
Error Rate
CIFAR-10-LT (ρ=200)
/
Few-Shot Image Classification
/
Error Rate
CIFAR-10-LT (ρ=200)
/
Generalized Few-Shot Classification
/
Error Rate
CIFAR-10-LT (ρ=200)
/
Generalized Few-Shot Learning
/
Error Rate
CIFAR-10-LT (ρ=200)
/
Image Classification
/
Error Rate
CIFAR-10-LT (ρ=200)
/
Long-tail Learning
/
Error Rate
CIFAR-10-LT (ρ=50)
/
Few-Shot Image Classification
/
Error Rate
CIFAR-10-LT (ρ=50)
/
Generalized Few-Shot Classification
/
Error Rate
CIFAR-10-LT (ρ=50)
/
Generalized Few-Shot Learning
/
Error Rate
CIFAR-10-LT (ρ=50)
/
Image Classification
/
Error Rate
CIFAR-10-LT (ρ=50)
/
Long-tail Learning
/
Error Rate
CIFAR-100
/
Adversarial Attack
/
Attack: AutoAttack
CIFAR-100
/
Adversarial Defense
/
Accuracy
CIFAR-100
/
Adversarial Defense
/
autoattack
CIFAR-100
/
Adversarial Robustness
/
AutoAttacked Accuracy
CIFAR-100
/
Adversarial Robustness
/
Clean Accuracy
CIFAR-100
/
AutoML
/
Accuracy (% )
CIFAR-100
/
AutoML
/
FLOPS
CIFAR-100
/
AutoML
/
PARAMS
CIFAR-100
/
AutoML
/
Percentage Error
CIFAR-100
/
AutoML
/
Search Time (GPU days)
CIFAR-100
/
Class Incremental Learning
/
Average Accuracy
CIFAR-100
/
Class Incremental Learning
/
Last Accuracy
CIFAR-100
/
Classification
/
Accuracy
CIFAR-100
/
Classification
/
Expected Calibration Error
CIFAR-100
/
Conditional Image Generation
/
FID
CIFAR-100
/
Conditional Image Generation
/
Inception Score
CIFAR-100
/
Conditional Image Generation
/
Intra-FID
CIFAR-100
/
Continual Learning
/
Average Accuracy
CIFAR-100
/
Continual Learning
/
Last Accuracy
CIFAR-100
/
Document Text Classification
/
Test Accuracy
CIFAR-100
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100
/
Federated Learning
/
ACC@1-10Clients
CIFAR-100
/
Federated Learning
/
ACC@1-500
CIFAR-100
/
Federated Learning
/
ACC@1-50Clients
CIFAR-100
/
Federated Learning
/
ACC@5-100Clients
CIFAR-100
/
Image Classification
/
Accuracy
CIFAR-100
/
Image Classification
/
All accuracy (10% Labeled)
CIFAR-100
/
Image Classification
/
All accuracy (50% Labeled)
CIFAR-100
/
Image Classification
/
Novel accuracy (10% Labeled)
CIFAR-100
/
Image Classification
/
Novel accuracy (50% Labeled)
CIFAR-100
/
Image Classification
/
PARAMS
CIFAR-100
/
Image Classification
/
Percentage correct
CIFAR-100
/
Image Classification
/
Seen accuracy (10% Labeled)
CIFAR-100
/
Image Classification
/
Seen accuracy (50% Labeled)
CIFAR-100
/
Image Classification
/
Test Accuracy
CIFAR-100
/
Image Classification
/
Top 1 Accuracy
CIFAR-100
/
Image Clustering
/
ARI
CIFAR-100
/
Image Clustering
/
Accuracy
CIFAR-100
/
Image Clustering
/
Backbone
CIFAR-100
/
Image Clustering
/
NMI
CIFAR-100
/
Image Clustering
/
Train Set
CIFAR-100
/
Image Generation
/
FID
CIFAR-100
/
Image Generation
/
Inception Score
CIFAR-100
/
Image Generation
/
Intra-FID
CIFAR-100
/
Image Generation
/
Model Size (MB)
CIFAR-100
/
Knowledge Distillation
/
Top-1 Accuracy (%)
CIFAR-100
/
Network Pruning
/
Accuracy
CIFAR-100
/
Network Pruning
/
GFLOPs
CIFAR-100
/
Network Pruning
/
Inference Time (ms)
CIFAR-100
/
Neural Architecture Search
/
Accuracy (% )
CIFAR-100
/
Neural Architecture Search
/
FLOPS
CIFAR-100
/
Neural Architecture Search
/
PARAMS
CIFAR-100
/
Neural Architecture Search
/
Percentage Error
CIFAR-100
/
Neural Architecture Search
/
Search Time (GPU days)
CIFAR-100
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100
/
Out-of-Distribution Detection
/
FPR95
CIFAR-100
/
Quantization
/
CIFAR-100 W4A4 Top-1 Accuracy
CIFAR-100
/
Quantization
/
CIFAR-100 W5A5 Top-1 Accuracy
CIFAR-100
/
Quantization
/
CIFAR-100 W6A6 Top-1 Accuracy
CIFAR-100
/
Quantization
/
CIFAR-100 W8A8 Top-1 Accuracy
CIFAR-100
/
Self-Supervised Learning
/
Top-1 Accuracy
CIFAR-100
/
Semi-Supervised Image Classification
/
All accuracy (10% Labeled)
CIFAR-100
/
Semi-Supervised Image Classification
/
All accuracy (50% Labeled)
CIFAR-100
/
Semi-Supervised Image Classification
/
Novel accuracy (10% Labeled)
CIFAR-100
/
Semi-Supervised Image Classification
/
Novel accuracy (50% Labeled)
CIFAR-100
/
Semi-Supervised Image Classification
/
Seen accuracy (10% Labeled)
CIFAR-100
/
Semi-Supervised Image Classification
/
Seen accuracy (50% Labeled)
CIFAR-100
/
Stochastic Optimization
/
Accuracy (max)
CIFAR-100
/
Stochastic Optimization
/
Accuracy (mean)
CIFAR-100
/
Zero-Shot Learning
/
Accuarcy
CIFAR-100
/
Zero-Shot Learning
/
Accuracy
CIFAR-100 (10000 Labels, ImageNet-100 Unlabeled)
/
Image Classification
/
Accuracy
CIFAR-100 (10000 Labels, ImageNet-100 Unlabeled)
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-100 (250 Labels, ImageNet-100 Unlabeled)
/
Image Classification
/
Accuarcy
CIFAR-100 (250 Labels, ImageNet-100 Unlabeled)
/
Semi-Supervised Image Classification
/
Accuarcy
CIFAR-100 (400 Labels, ImageNet-100 Unlabeled)
/
Image Classification
/
Accuracy
CIFAR-100 (400 Labels, ImageNet-100 Unlabeled)
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-100 (alpha=0, 10 clients per round)
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100 (alpha=0, 20 clients per round)
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100 (alpha=0, 20 clients per round)
/
Image Classification
/
ACC@1-100Clients
CIFAR-100 (alpha=0, 5 clients per round)
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100 (alpha=0.5, 10 clients per round)
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100 (alpha=0.5, 20 clients per round)
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100 (alpha=0.5, 5 clients per round)
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100 (alpha=1000, 10 clients per round)
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100 (alpha=1000, 20 clients per round)
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100 (alpha=1000, 5 clients per round)
/
Federated Learning
/
ACC@1-100Clients
CIFAR-100 (partial ratio 0.01)
/
Partial Label Learning
/
Accuracy
CIFAR-100 (partial ratio 0.05)
/
Partial Label Learning
/
Accuracy
CIFAR-100 (partial ratio 0.1)
/
Partial Label Learning
/
Accuracy
CIFAR-100 - 40 classes + 60 steps of 1 class (Exemplar-free)
/
Incremental Learning
/
Average Incremental Accuracy
CIFAR-100 - 50 classes + 10 steps of 5 classes
/
Class Incremental Learning
/
Final Accuracy
CIFAR-100 - 50 classes + 10 steps of 5 classes
/
Continual Learning
/
Final Accuracy
CIFAR-100 - 50 classes + 10 steps of 5 classes
/
Incremental Learning
/
Average Incremental Accuracy
CIFAR-100 - 50 classes + 2 steps of 25 classes
/
Incremental Learning
/
Average Incremental Accuracy
CIFAR-100 - 50 classes + 25 steps of 2 classes
/
Incremental Learning
/
Average Incremental Accuracy
CIFAR-100 - 50 classes + 5 steps of 10 classes
/
Class Incremental Learning
/
Final Accuracy
CIFAR-100 - 50 classes + 5 steps of 10 classes
/
Continual Learning
/
Final Accuracy
CIFAR-100 - 50 classes + 5 steps of 10 classes
/
Incremental Learning
/
Average Incremental Accuracy
CIFAR-100 - 50 classes + 5 steps of 10 classes
/
Incremental Learning
/
Final Accuracy
CIFAR-100 - 50 classes + 50 steps of 1 class
/
Incremental Learning
/
Average Incremental Accuracy
CIFAR-100 AlexNet - 300 Epoch
/
Continual Learning
/
Accuracy
CIFAR-100 ResNet-18 - 300 Epochs
/
Continual Learning
/
Accuracy
CIFAR-100 WRN-28-10 - 200 Epochs
/
Stochastic Optimization
/
Accuracy
CIFAR-100 vs CIFAR-10
/
Out-of-Distribution Detection
/
AUPR
CIFAR-100 vs CIFAR-10
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100 vs Gaussian
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100 vs ImageNet (C)
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100 vs ImageNet (R)
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100 vs LSUN (C)
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100 vs LSUN (R)
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100 vs SVHN
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100 vs Uniform
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100 vs iSUN
/
Out-of-Distribution Detection
/
AUROC
CIFAR-100, 1000 Labels
/
Image Classification
/
Accuracy
CIFAR-100, 1000 Labels
/
Image Classification
/
Percentage correct
CIFAR-100, 1000 Labels
/
Semi-Supervised Image Classification
/
Percentage correct
CIFAR-100, 200 Labels
/
Image Classification
/
Percentage error
CIFAR-100, 200 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-100, 2500 Labels
/
Image Classification
/
Percentage error
CIFAR-100, 2500 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-100, 40% Symmetric Noise
/
Image Classification
/
Percentage correct
CIFAR-100, 400 Labels
/
Image Classification
/
Percentage error
CIFAR-100, 400 Labels
/
Semi-Supervised Image Classification
/
Percentage error
CIFAR-100, 4000 Labels
/
Image Classification
/
Accuracy
CIFAR-100, 4000 Labels
/
Semi-Supervised Image Classification
/
Accuracy
CIFAR-100, 5000 Labels
/
Image Classification
/
Accuracy (%)
CIFAR-100, 5000 Labels
/
Semi-Supervised Image Classification
/
Accuracy (%)
CIFAR-100, 5000Labels
/
Image Classification
/
Percentage correct
CIFAR-100, 5000Labels
/
Semi-Supervised Image Classification
/
Percentage correct
CIFAR-100, 60% Symmetric Noise
/
Image Classification
/
Percentage correct
CIFAR-100-B0(5steps of 20 classes)
/
Incremental Learning
/
Average Incremental Accuracy
CIFAR-100-LT (ρ=10)
/
Few-Shot Image Classification
/
Error Rate
CIFAR-100-LT (ρ=10)
/
Generalized Few-Shot Classification
/
Error Rate
CIFAR-100-LT (ρ=10)
/
Generalized Few-Shot Learning
/
Error Rate
CIFAR-100-LT (ρ=10)
/
Image Classification
/
Error Rate
CIFAR-100-LT (ρ=10)
/
Long-tail Learning
/
Error Rate
CIFAR-100-LT (ρ=100)
/
Few-Shot Image Classification
/
Error Rate
CIFAR-100-LT (ρ=100)
/
Generalized Few-Shot Classification
/
Error Rate
CIFAR-100-LT (ρ=100)
/
Generalized Few-Shot Learning
/
Error Rate
CIFAR-100-LT (ρ=100)
/
Image Classification
/
Error Rate
CIFAR-100-LT (ρ=100)
/
Long-tail Learning
/
Error Rate
CIFAR-100-LT (ρ=200)
/
Few-Shot Image Classification
/
Error Rate
CIFAR-100-LT (ρ=200)
/
Generalized Few-Shot Classification
/
Error Rate
CIFAR-100-LT (ρ=200)
/
Generalized Few-Shot Learning
/
Error Rate
CIFAR-100-LT (ρ=200)
/
Image Classification
/
Error Rate
CIFAR-100-LT (ρ=200)
/
Long-tail Learning
/
Error Rate
CIFAR-100-LT (ρ=50)
/
Few-Shot Image Classification
/
Error Rate
CIFAR-100-LT (ρ=50)
/
Generalized Few-Shot Classification
/
Error Rate
CIFAR-100-LT (ρ=50)
/
Generalized Few-Shot Learning
/
Error Rate
CIFAR-100-LT (ρ=50)
/
Image Classification
/
Error Rate
CIFAR-100-LT (ρ=50)
/
Long-tail Learning
/
Error Rate
CIFAR-100C
/
Domain Adaptation
/
Accuracy
CIFAR-100C
/
Domain Generalization
/
Accuracy
CIFAR-100C
/
Image Classification
/
Percentage correct
CIFAR-100N
/
Document Text Classification
/
Accuracy (mean)
CIFAR-100N
/
Image Classification
/
Accuracy (mean)
CIFAR-10C
/
Classification
/
Accuracy on Brightness Corrupted Images
CIFAR-10C
/
Domain Adaptation
/
Accuracy
CIFAR-10C
/
Domain Generalization
/
Accuracy
CIFAR-10N
/
Document Text Classification
/
Accuracy
CIFAR-10N
/
Image Classification
/
Accuracy
CIFAR-10N-Aggregate
/
Document Text Classification
/
Accuracy (mean)
CIFAR-10N-Aggregate
/
Image Classification
/
Accuracy (mean)
CIFAR-10N-Random1
/
Document Text Classification
/
Accuracy (mean)
CIFAR-10N-Random1
/
Image Classification
/
Accuracy (mean)
CIFAR-10N-Random2
/
Document Text Classification
/
Accuracy (mean)
CIFAR-10N-Random2
/
Image Classification
/
Accuracy (mean)
CIFAR-10N-Random3
/
Document Text Classification
/
Accuracy (mean)
CIFAR-10N-Random3
/
Image Classification
/
Accuracy (mean)
CIFAR-10N-Worst
/
Document Text Classification
/
Accuracy (mean)
CIFAR-10N-Worst
/
Image Classification
/
Accuracy (mean)
cifar-10, 10 Labels
/
Image Classification
/
Accuracy (Test)
cifar-10, 10 Labels
/
Semi-Supervised Image Classification
/
Accuracy (Test)
cifar-10,4000
/
Image Classification
/
Percentage error
cifar-100, 10000 Labels
/
Image Classification
/
Percentage error
cifar-100, 10000 Labels
/
Semi-Supervised Image Classification
/
Percentage error