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New Analysis and Algorithm for Learning with Drifting Distributions

New Analysis and Algorithm for Learning with Drifting Distributions

19 May 2012
M. Mohri
Andrés Munoz Medina
ArXivPDFHTML

Papers citing "New Analysis and Algorithm for Learning with Drifting Distributions"

22 / 22 papers shown
Title
Beyond IID: data-driven decision-making in heterogeneous environments
Beyond IID: data-driven decision-making in heterogeneous environments
Omar Besbes
Will Ma
Omar Mouchtaki
42
7
0
03 Jan 2025
Benchmarking Data Heterogeneity Evaluation Approaches for Personalized
  Federated Learning
Benchmarking Data Heterogeneity Evaluation Approaches for Personalized Federated Learning
Zhilong Li
Xiaohu Wu
Xiaoli Tang
Tiantian He
Yew-Soon Ong
Mengmeng Chen
Qiqi Liu
Qicheng Lao
Han Yu
FedML
37
1
0
09 Oct 2024
Domain Adaptation with Cauchy-Schwarz Divergence
Domain Adaptation with Cauchy-Schwarz Divergence
Wenzhe Yin
Shujian Yu
Yicong Lin
Jie Li
J. Sonke
E. Gavves
29
3
0
30 May 2024
Non-stationary Domain Generalization: Theory and Algorithm
Non-stationary Domain Generalization: Theory and Algorithm
Thai-Hoang Pham
Xueru Zhang
Ping Zhang
OOD
51
1
0
10 May 2024
Understanding Server-Assisted Federated Learning in the Presence of
  Incomplete Client Participation
Understanding Server-Assisted Federated Learning in the Presence of Incomplete Client Participation
Haibo Yang
Pei-Yuan Qiu
Prashant Khanduri
Minghong Fang
Jia Liu
FedML
40
1
0
04 May 2024
A Weight-aware-based Multi-source Unsupervised Domain Adaptation Method for Human Motion Intention Recognition
A Weight-aware-based Multi-source Unsupervised Domain Adaptation Method for Human Motion Intention Recognition
Xiao-Yin Liu
Guo-Tao Li
Xiao-Hu Zhou
Xu Liang
Zeng-Guang Hou
67
0
0
19 Apr 2024
A Stability Principle for Learning under Non-Stationarity
A Stability Principle for Learning under Non-Stationarity
Chengpiao Huang
Kaizheng Wang
37
2
0
27 Oct 2023
Revisiting the Robustness of the Minimum Error Entropy Criterion: A
  Transfer Learning Case Study
Revisiting the Robustness of the Minimum Error Entropy Criterion: A Transfer Learning Case Study
Luis P. Silvestrin
Shujian Yu
Mark Hoogendoorn
OOD
31
1
0
17 Jul 2023
An Adaptive Method for Weak Supervision with Drifting Data
An Adaptive Method for Weak Supervision with Drifting Data
Alessio Mazzetto
Reza Esfandiarpoor
E. Upfal
Stephen H. Bach
Stephen H. Bach
65
1
0
02 Jun 2023
Blessings and Curses of Covariate Shifts: Adversarial Learning Dynamics,
  Directional Convergence, and Equilibria
Blessings and Curses of Covariate Shifts: Adversarial Learning Dynamics, Directional Convergence, and Equilibria
Tengyuan Liang
20
1
0
05 Dec 2022
Task-Free Continual Learning via Online Discrepancy Distance Learning
Task-Free Continual Learning via Online Discrepancy Distance Learning
Fei Ye
A. Bors
CLL
19
28
0
12 Oct 2022
The Value of Out-of-Distribution Data
The Value of Out-of-Distribution Data
Ashwin De Silva
Rahul Ramesh
Carey E. Priebe
Pratik Chaudhari
Joshua T. Vogelstein
OODD
19
11
0
23 Aug 2022
Open-environment Machine Learning
Open-environment Machine Learning
Zhi-Hua Zhou
VLM
32
133
0
01 Jun 2022
Minimax risk classifiers with 0-1 loss
Minimax risk classifiers with 0-1 loss
Santiago Mazuelas
Mauricio Romero
Peter Grünwald
32
6
0
17 Jan 2022
How does the Combined Risk Affect the Performance of Unsupervised Domain
  Adaptation Approaches?
How does the Combined Risk Affect the Performance of Unsupervised Domain Adaptation Approaches?
Zhong Li
Zhen Fang
Feng Liu
Jie Lu
Bo Yuan
Guangquan Zhang
25
54
0
30 Dec 2020
A Theory of Multiple-Source Adaptation with Limited Target Labeled Data
A Theory of Multiple-Source Adaptation with Limited Target Labeled Data
Yishay Mansour
M. Mohri
Jae Hun Ro
A. Suresh
Ke Wu
51
28
0
19 Jul 2020
A No-Free-Lunch Theorem for MultiTask Learning
A No-Free-Lunch Theorem for MultiTask Learning
Steve Hanneke
Samory Kpotufe
18
39
0
29 Jun 2020
Adversarial Weighting for Domain Adaptation in Regression
Adversarial Weighting for Domain Adaptation in Regression
Antoine de Mathelin
Guillaume Richard
Francois Deheeger
Mathilde Mougeot
Nicolas Vayatis
OOD
45
45
0
15 Jun 2020
Three Approaches for Personalization with Applications to Federated
  Learning
Three Approaches for Personalization with Applications to Federated Learning
Yishay Mansour
M. Mohri
Jae Hun Ro
A. Suresh
FedML
36
565
0
25 Feb 2020
On the Value of Target Data in Transfer Learning
On the Value of Target Data in Transfer Learning
Steve Hanneke
Samory Kpotufe
17
74
0
12 Feb 2020
Adaptation Algorithm and Theory Based on Generalized Discrepancy
Adaptation Algorithm and Theory Based on Generalized Discrepancy
Corinna Cortes
M. Mohri
Andrés Munoz Medina
44
64
0
07 May 2014
Domain Adaptation: Learning Bounds and Algorithms
Domain Adaptation: Learning Bounds and Algorithms
Yishay Mansour
M. Mohri
Afshin Rostamizadeh
179
789
0
19 Feb 2009
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