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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""

6 / 106 papers shown
Title
Learning Sound Events From Webly Labeled Data
Learning Sound Events From Webly Labeled Data
Anurag Kumar
Ankit Parag Shah
Bhiksha Raj
Alexander G. Hauptmann
NoLa
29
12
0
25 Nov 2018
Limited Gradient Descent: Learning With Noisy Labels
Limited Gradient Descent: Learning With Noisy Labels
Yi Sun
Yan Tian
Yiping Xu
Jianxiang Li
NoLa
35
13
0
20 Nov 2018
A Two-Stream Mutual Attention Network for Semi-supervised Biomedical
  Segmentation with Noisy Labels
A Two-Stream Mutual Attention Network for Semi-supervised Biomedical Segmentation with Noisy Labels
Shaobo Min
Xiao Chen
Zhengjun Zha
Feng Wu
Yongdong Zhang
26
79
0
31 Jul 2018
SOSELETO: A Unified Approach to Transfer Learning and Training with
  Noisy Labels
SOSELETO: A Unified Approach to Transfer Learning and Training with Noisy Labels
Or Litany
Daniel Freedman
NoLa
20
13
0
24 May 2018
Co-teaching: Robust Training of Deep Neural Networks with Extremely
  Noisy Labels
Co-teaching: Robust Training of Deep Neural Networks with Extremely Noisy Labels
Bo Han
Quanming Yao
Xingrui Yu
Gang Niu
Miao Xu
Weihua Hu
Ivor Tsang
Masashi Sugiyama
NoLa
58
2,028
0
18 Apr 2018
Learning from Binary Labels with Instance-Dependent Corruption
Learning from Binary Labels with Instance-Dependent Corruption
A. Menon
Brendan van Rooyen
Nagarajan Natarajan
NoLa
31
41
0
03 May 2016
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