HyperAI超神経
ホーム
ニュース
最新論文
チュートリアル
データセット
百科事典
SOTA
LLMモデル
GPU ランキング
学会
検索
サイトについて
日本語
HyperAI超神経
Toggle sidebar
サイトを検索…
⌘
K
ホーム
SOTA
Learning With Noisy Labels
Learning With Noisy Labels On Cifar 10N 2
Learning With Noisy Labels On Cifar 10N 2
評価指標
Accuracy (mean)
評価結果
このベンチマークにおける各モデルのパフォーマンス結果
Columns
モデル名
Accuracy (mean)
Paper Title
Repository
GNL
91.42
Partial Label Supervision for Agnostic Generative Noisy Label Learning
Co-Teaching
90.30
Co-teaching: Robust Training of Deep Neural Networks with Extremely Noisy Labels
Peer Loss
88.76
Peer Loss Functions: Learning from Noisy Labels without Knowing Noise Rates
GCE
87.70
Generalized Cross Entropy Loss for Training Deep Neural Networks with Noisy Labels
CORES*
94.88
Learning with Instance-Dependent Label Noise: A Sample Sieve Approach
ELR+
94.20
Early-Learning Regularization Prevents Memorization of Noisy Labels
Backward-T
86.28
Making Deep Neural Networks Robust to Label Noise: a Loss Correction Approach
T-Revision
87.71
Are Anchor Points Really Indispensable in Label-Noise Learning?
JoCoR
90.21
Combating noisy labels by agreement: A joint training method with co-regularization
SOP
95.31
Robust Training under Label Noise by Over-parameterization
CORES
89.91
Learning with Instance-Dependent Label Noise: A Sample Sieve Approach
Forward-T
86.14
Making Deep Neural Networks Robust to Label Noise: a Loss Correction Approach
ELR
91.61
Early-Learning Regularization Prevents Memorization of Noisy Labels
PSSCL
96.21
PSSCL: A progressive sample selection framework with contrastive loss designed for noisy labels
Divide-Mix
90.90
DivideMix: Learning with Noisy Labels as Semi-supervised Learning
CE
86.46
-
-
CAL
90.75
Clusterability as an Alternative to Anchor Points When Learning with Noisy Labels
Positive-LS
89.35
Does label smoothing mitigate label noise?
-
Negative-LS
90.37
To Smooth or Not? When Label Smoothing Meets Noisy Labels
ILL
95.04
Imprecise Label Learning: A Unified Framework for Learning with Various Imprecise Label Configurations
0 of 23 row(s) selected.
Previous
Next