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

模型名称
Accuracy
Paper TitleRepository
DY71%Unsupervised Label Noise Modeling and Loss Correction
CC75.4%Centrality and Consistency: Two-Stage Clean Samples Identification for Learning with Instance-Dependent Noisy Labels
Knockoffs-SPR75.20%Knockoffs-SPR: Clean Sample Selection in Learning with Noisy Labels
MFRW75.35%Learning advisor networks for noisy image classification
LongReMix74.38%LongReMix: Robust Learning with High Confidence Samples in a Noisy Label Environment
CCE (SimCLR)73.27%Contrastive Learning Improves Model Robustness Under Label Noise
MLNT73.47%Learning to Learn from Noisy Labeled Data
MAE (SimCLR)73.36%Contrastive Learning Improves Model Robustness Under Label Noise
CoT70.15%Co-teaching: Robust Training of Deep Neural Networks with Extremely Noisy Labels
SPR71.16%Scalable Penalized Regression for Noise Detection in Learning with Noisy Labels
FINE + DivideMix74.37%FINE Samples for Learning with Noisy Labels
Jigsaw-ViT+NCT75.4%Jigsaw-ViT: Learning Jigsaw Puzzles in Vision Transformer
LRA-diffusion (CC)75.7%Label-Retrieval-Augmented Diffusion Models for Learning from Noisy Labels
IMAE73.2%IMAE for Noise-Robust Learning: Mean Absolute Error Does Not Treat Examples Equally and Gradient Magnitude's Variance Matters
MW-Net73.72%Meta-Weight-Net: Learning an Explicit Mapping For Sample Weighting
ELR+74.81%Early-Learning Regularization Prevents Memorization of Noisy Labels
Robust f-divergence73.09%When Optimizing $f$-divergence is Robust with Label Noise
JoCoR70.3%Combating noisy labels by agreement: A joint training method with co-regularization
LRT71.74%Error-Bounded Correction of Noisy Labels
CORES273.24%Learning with Instance-Dependent Label Noise: A Sample Sieve Approach
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