HyperAI超神经

Image Classification On Clothing1M

评估指标

Accuracy

评测结果

各个模型在此基准测试上的表现结果

比较表格
模型名称Accuracy
unsupervised-label-noise-modeling-and-loss71%
centrality-and-consistency-two-stage-clean75.4%
knockoffs-spr-clean-sample-selection-in75.20%
learning-advisor-networks-for-noisy-image-175.35%
longremix-robust-learning-with-high74.38%
contrastive-learning-improves-model73.27%
learning-to-learn-from-noisy-labeled-data73.47%
contrastive-learning-improves-model73.36%
co-teaching-robust-training-of-deep-neural70.15%
scalable-penalized-regression-for-noise71.16%
winning-ticket-in-noisy-image-classification74.37%
jigsaw-vit-learning-jigsaw-puzzles-in-vision75.4%
label-retrieval-augmented-diffusion-models-175.7%
improving-mae-against-cce-under-label-noise73.2%
push-the-student-to-learn-right-progressive73.72%
early-learning-regularization-prevents74.81%
when-optimizing-f-divergence-is-robust-with-173.09%
combating-noisy-labels-by-agreement-a-joint70.3%
error-bounded-correction-of-noisy-labels-171.74%
learning-with-instance-dependent-label-noise-173.24%
s3-supervised-self-supervised-learning-under-174.91
probabilistic-end-to-end-noise-correction-for73.49%
compressing-features-for-learning-with-noisy75%
understanding-generalized-label-smoothing74.24%
dividemix-learning-with-noisy-labels-as-semi-174.76%
emphasis-regularisation-by-gradient-rescaling73.3%
symmetric-cross-entropy-for-robust-learning71.02%
a-second-order-approach-to-learning-with74.17%
dimensionality-driven-learning-with-noisy69.47%
masking-a-new-perspective-of-noisy71.1%
instance-dependent-noisy-label-learning-via74.40%
safeguarded-dynamic-label-regression-for73.07%
l_dmi-an-information-theoretic-noise-robust72.46%
class-prototype-based-cleaner-for-label-noise75.40±0.10%
joint-optimization-framework-for-learning72.23%
adaptive-sample-selection-for-robust-learning72.28%
beyond-class-conditional-assumption-a-primary70.63%
contrast-to-divide-self-supervised-pre-174.58 ± 0.15%
contrastive-learning-improves-model73.35%
boosting-co-teaching-with-compression74.9%
generalized-cross-entropy-loss-for-training69.75%
augmentation-strategies-for-learning-with75.11%
sample-prior-guided-robust-model-learning-to75.19%
noiserank-unsupervised-label-noise-reduction73.82%
which-strategies-matter-for-noisy-label73.8%
adaptive-sample-selection-for-robust-learning68.94%
clusterability-as-an-alternative-to-anchor73.39%
learning-with-noisy-labels-via-self75.63%
l_dmi-a-novel-information-theoretic-loss72.46%
cross-to-merge-training-with-class-balance74.61%