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Decoupling "when to update" from "how to update"

Decoupling "when to update" from "how to update"

8 June 2017
Eran Malach
Shai Shalev-Shwartz
    NoLa
ArXivPDFHTML

Papers citing "Decoupling "when to update" from "how to update""

50 / 106 papers shown
Title
Learning with Noisy Labels: the Exploration of Error Bounds in Classification
Haixia Liu
Boxiao Li
Can Yang
Yang Wang
41
0
0
28 Jan 2025
Combating Semantic Contamination in Learning with Label Noise
Combating Semantic Contamination in Learning with Label Noise
Wenxiao Fan
Kan Li
NoLa
226
0
0
16 Dec 2024
Paint Outside the Box: Synthesizing and Selecting Training Data for Visual Grounding
Paint Outside the Box: Synthesizing and Selecting Training Data for Visual Grounding
Zilin Du
Haoxin Li
Jianfei Yu
Boyang Li
191
0
0
01 Dec 2024
Training Gradient Boosted Decision Trees on Tabular Data Containing Label Noise for Classification Tasks
Training Gradient Boosted Decision Trees on Tabular Data Containing Label Noise for Classification Tasks
Anita Eisenburger
Daniel Otten
Anselm Hudde
F. Hopfgartner
NoLa
50
1
0
13 Sep 2024
CromSS: Cross-modal pre-training with noisy labels for remote sensing image segmentation
CromSS: Cross-modal pre-training with noisy labels for remote sensing image segmentation
Chenying Liu
C. Albrecht
Yi Wang
Xiao Xiang Zhu
65
2
0
02 May 2024
LaneCorrect: Self-supervised Lane Detection
LaneCorrect: Self-supervised Lane Detection
Ming-Jun Nie
Xinyue Cai
Han Xu
Li Zhang
SSL
64
4
0
23 Apr 2024
QMix: Quality-aware Learning with Mixed Noise for Robust Retinal Disease Diagnosis
QMix: Quality-aware Learning with Mixed Noise for Robust Retinal Disease Diagnosis
Junlin Hou
Jilan Xu
Rui Feng
Hao Chen
23
0
0
08 Apr 2024
ConFit: Improving Resume-Job Matching using Data Augmentation and
  Contrastive Learning
ConFit: Improving Resume-Job Matching using Data Augmentation and Contrastive Learning
Xiao Yu
Jinzhong Zhang
Zhou Yu
43
1
0
29 Jan 2024
Training on Synthetic Data Beats Real Data in Multimodal Relation
  Extraction
Training on Synthetic Data Beats Real Data in Multimodal Relation Extraction
Zilin Du
Haoxin Li
Xu Guo
Boyang Li
35
1
0
05 Dec 2023
PNT-Edge: Towards Robust Edge Detection with Noisy Labels by Learning
  Pixel-level Noise Transitions
PNT-Edge: Towards Robust Edge Detection with Noisy Labels by Learning Pixel-level Noise Transitions
Wenjie Xuan
Shanshan Zhao
Yu Yao
Juhua Liu
Tongliang Liu
Yixin Chen
Bo Du
Dacheng Tao
NoLa
34
6
0
26 Jul 2023
Omnipotent Adversarial Training in the Wild
Omnipotent Adversarial Training in the Wild
Guanlin Li
Kangjie Chen
Yuan Xu
Han Qiu
Tianwei Zhang
29
0
0
14 Jul 2023
Instance-dependent Noisy-label Learning with Graphical Model Based
  Noise-rate Estimation
Instance-dependent Noisy-label Learning with Graphical Model Based Noise-rate Estimation
Arpit Garg
Cuong C. Nguyen
Rafael Felix
Thanh-Toan Do
G. Carneiro
NoLa
41
1
0
31 May 2023
ReSup: Reliable Label Noise Suppression for Facial Expression
  Recognition
ReSup: Reliable Label Noise Suppression for Facial Expression Recognition
Xiang Zhang
Yan Lu
Huan Yan
Jingyang Huang
Yusheng Ji
Yu Gu
35
3
0
29 May 2023
Improved Naive Bayes with Mislabeled Data
Improved Naive Bayes with Mislabeled Data
Qianhan Zeng
Yingqiu Zhu
Xuening Zhu
Feifei Wang
Weichen Zhao
Shuning Sun
Meng Su
Hansheng Wang
NoLa
13
2
0
13 Apr 2023
Learning from Noisy Crowd Labels with Logics
Learning from Noisy Crowd Labels with Logics
Zhijun Chen
Hailong Sun
Haoqian He
Pengpeng Chen
NoLa
NAI
32
7
0
13 Feb 2023
When Source-Free Domain Adaptation Meets Learning with Noisy Labels
When Source-Free Domain Adaptation Meets Learning with Noisy Labels
L. Yi
Gezheng Xu
Pengcheng Xu
Jiaqi Li
Ruizhi Pu
Charles Ling
A. McLeod
Boyu Wang
25
39
0
31 Jan 2023
Knockoffs-SPR: Clean Sample Selection in Learning with Noisy Labels
Knockoffs-SPR: Clean Sample Selection in Learning with Noisy Labels
Yikai Wang
Yanwei Fu
Xinwei Sun
NoLa
55
8
0
02 Jan 2023
Learning Confident Classifiers in the Presence of Label Noise
Learning Confident Classifiers in the Presence of Label Noise
Asma Ahmed Hashmi
Aigerim Zhumabayeva
Nikita Kotelevskii
A. Agafonov
Mohammad Yaqub
Maxim Panov
Martin Takávc
NoLa
64
2
0
02 Jan 2023
CrossSplit: Mitigating Label Noise Memorization through Data Splitting
CrossSplit: Mitigating Label Noise Memorization through Data Splitting
Jihye Kim
A. Baratin
Yan Zhang
Simon Lacoste-Julien
NoLa
18
7
0
03 Dec 2022
Model and Data Agreement for Learning with Noisy Labels
Model and Data Agreement for Learning with Noisy Labels
Yuhang Zhang
Weihong Deng
Xingchen Cui
Yunfeng Yin
Hongzhi Shi
Dongchao Wen
NoLa
34
5
0
02 Dec 2022
FoPro: Few-Shot Guided Robust Webly-Supervised Prototypical Learning
FoPro: Few-Shot Guided Robust Webly-Supervised Prototypical Learning
Yulei Qin
Xingyu Chen
Chao Chen
Yunhang Shen
Bohan Ren
Yun Gu
Jie-jin Yang
Chunhua Shen
44
4
0
01 Dec 2022
On Robust Learning from Noisy Labels: A Permutation Layer Approach
On Robust Learning from Noisy Labels: A Permutation Layer Approach
Salman Alsubaihi
Mohammed Alkhrashi
Raied Aljadaany
Fahad Albalawi
Guohao Li
NoLa
23
0
0
29 Nov 2022
Establishment of Neural Networks Robust to Label Noise
Establishment of Neural Networks Robust to Label Noise
Pengwei Yang
Angel Teng
Jack Mangos
NoLa
19
0
0
28 Nov 2022
Learning with Silver Standard Data for Zero-shot Relation Extraction
Tianyi Wang
Jianwei Wang
Ziqian Zeng
32
2
0
25 Nov 2022
TIER-A: Denoising Learning Framework for Information Extraction
TIER-A: Denoising Learning Framework for Information Extraction
Yongkang Li
M. Zhang
21
0
0
13 Nov 2022
Robust Training of Graph Neural Networks via Noise Governance
Robust Training of Graph Neural Networks via Noise Governance
Siyi Qian
Haochao Ying
Renjun Hu
Jingbo Zhou
Jintai Chen
Danny Chen
Jian Wu
NoLa
33
34
0
12 Nov 2022
Private Semi-supervised Knowledge Transfer for Deep Learning from Noisy
  Labels
Private Semi-supervised Knowledge Transfer for Deep Learning from Noisy Labels
Qiuchen Zhang
Jing Ma
Jian Lou
Li Xiong
Xiaoqian Jiang
NoLa
21
0
0
03 Nov 2022
Dual Clustering Co-teaching with Consistent Sample Mining for
  Unsupervised Person Re-Identification
Dual Clustering Co-teaching with Consistent Sample Mining for Unsupervised Person Re-Identification
Zeqi Chen
Zhichao Cui
Chi Zhang
Jiahuan Zhou
Yuehu Liu
NoLa
46
17
0
07 Oct 2022
The Dynamic of Consensus in Deep Networks and the Identification of
  Noisy Labels
The Dynamic of Consensus in Deep Networks and the Identification of Noisy Labels
Daniel Shwartz
Uri Stern
D. Weinshall
NoLa
36
2
0
02 Oct 2022
Robust Product Classification with Instance-Dependent Noise
Robust Product Classification with Instance-Dependent Noise
Huy-Thanh Nguyen
Devashish Khatwani
NoLa
34
8
0
14 Sep 2022
Instance-Dependent Noisy Label Learning via Graphical Modelling
Instance-Dependent Noisy Label Learning via Graphical Modelling
Arpit Garg
Cuong C. Nguyen
Rafael Felix
Thanh-Toan Do
G. Carneiro
NoLa
39
27
0
02 Sep 2022
Learning from Noisy Labels with Coarse-to-Fine Sample Credibility
  Modeling
Learning from Noisy Labels with Coarse-to-Fine Sample Credibility Modeling
Boshen Zhang
Yuxi Li
Yuanpeng Tu
Jinlong Peng
Yabiao Wang
Cunlin Wu
Yanghua Xiao
Cairong Zhao
NoLa
38
6
0
23 Aug 2022
Maximising the Utility of Validation Sets for Imbalanced Noisy-label
  Meta-learning
Maximising the Utility of Validation Sets for Imbalanced Noisy-label Meta-learning
D. Hoang
Cuong C. Nguyen
Cuong Nguyen anh Belagiannis Vasileios
G. Carneiro
28
2
0
17 Aug 2022
Centrality and Consistency: Two-Stage Clean Samples Identification for
  Learning with Instance-Dependent Noisy Labels
Centrality and Consistency: Two-Stage Clean Samples Identification for Learning with Instance-Dependent Noisy Labels
Ganlong Zhao
Guanbin Li
Yipeng Qin
Feng Liu
Yizhou Yu
NoLa
33
22
0
29 Jul 2022
Learning from Data with Noisy Labels Using Temporal Self-Ensemble
Learning from Data with Noisy Labels Using Temporal Self-Ensemble
Jun Ho Lee
J. Baik
Taebaek Hwang
J. Choi
NoLa
28
1
0
21 Jul 2022
Learn From All: Erasing Attention Consistency for Noisy Label Facial
  Expression Recognition
Learn From All: Erasing Attention Consistency for Noisy Label Facial Expression Recognition
Yuhang Zhang
Chengrui Wang
Xu Ling
Weihong Deng
45
136
0
21 Jul 2022
ProSelfLC: Progressive Self Label Correction Towards A Low-Temperature
  Entropy State
ProSelfLC: Progressive Self Label Correction Towards A Low-Temperature Entropy State
Xinshao Wang
Yang Hua
Elyor Kodirov
S. Mukherjee
David A. Clifton
N. Robertson
25
6
0
30 Jun 2022
Gray Learning from Non-IID Data with Out-of-distribution Samples
Gray Learning from Non-IID Data with Out-of-distribution Samples
Zhilin Zhao
LongBing Cao
Changbao Wang
OOD
OODD
45
1
0
19 Jun 2022
Transductive CLIP with Class-Conditional Contrastive Learning
Transductive CLIP with Class-Conditional Contrastive Learning
Junchu Huang
Weijie Chen
Shicai Yang
Di Xie
Shiliang Pu
Yueting Zhuang
VLM
BDL
NoLa
27
6
0
13 Jun 2022
Hyperspherical Consistency Regularization
Hyperspherical Consistency Regularization
Cheng Tan
Zhangyang Gao
Lirong Wu
Siyuan Li
Stan Z. Li
36
25
0
02 Jun 2022
Context-based Virtual Adversarial Training for Text Classification with
  Noisy Labels
Context-based Virtual Adversarial Training for Text Classification with Noisy Labels
Do-Myoung Lee
Yeachan Kim
Chang-gyun Seo
NoLa
21
2
0
29 May 2022
Boosting Facial Expression Recognition by A Semi-Supervised Progressive
  Teacher
Boosting Facial Expression Recognition by A Semi-Supervised Progressive Teacher
Jing Jiang
Weihong Deng
32
23
0
28 May 2022
Bayesian Robust Graph Contrastive Learning
Bayesian Robust Graph Contrastive Learning
Yancheng Wang
Yingzhen Yang
OOD
25
1
0
27 May 2022
ReSmooth: Detecting and Utilizing OOD Samples when Training with Data
  Augmentation
ReSmooth: Detecting and Utilizing OOD Samples when Training with Data Augmentation
Chenyang Wang
Junjun Jiang
Xiong Zhou
Xianming Liu
37
3
0
25 May 2022
Co-Teaching for Unsupervised Domain Adaptation and Expansion
Co-Teaching for Unsupervised Domain Adaptation and Expansion
Kaibin Tian
Qijie Wei
Xirong Li
29
1
0
04 Apr 2022
Agreement or Disagreement in Noise-tolerant Mutual Learning?
Agreement or Disagreement in Noise-tolerant Mutual Learning?
Jiarun Liu
Daguang Jiang
Yukun Yang
Ruirui Li
NoLa
23
2
0
29 Mar 2022
UNICON: Combating Label Noise Through Uniform Selection and Contrastive
  Learning
UNICON: Combating Label Noise Through Uniform Selection and Contrastive Learning
Nazmul Karim
Mamshad Nayeem Rizve
Nazanin Rahnavard
Ajmal Mian
M. Shah
NoLa
37
98
0
28 Mar 2022
Multi-class Label Noise Learning via Loss Decomposition and Centroid
  Estimation
Multi-class Label Noise Learning via Loss Decomposition and Centroid Estimation
Yongliang Ding
Tao Zhou
Chuang Zhang
Yijing Luo
Juan Tang
Chen Gong
NoLa
32
4
0
21 Mar 2022
Selective-Supervised Contrastive Learning with Noisy Labels
Selective-Supervised Contrastive Learning with Noisy Labels
Shikun Li
Xiaobo Xia
Shiming Ge
Tongliang Liu
NoLa
27
172
0
08 Mar 2022
Do We Need to Penalize Variance of Losses for Learning with Label Noise?
Do We Need to Penalize Variance of Losses for Learning with Label Noise?
Yexiong Lin
Yu Yao
Yuxuan Du
Jun Yu
Bo Han
Biwei Huang
Tongliang Liu
NoLa
53
3
0
30 Jan 2022
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