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Agnostic Sample Compression Schemes for Regression
v1v2 (latest)

Agnostic Sample Compression Schemes for Regression

3 October 2018
Idan Attias
Steve Hanneke
A. Kontorovich
Menachem Sadigurschi
ArXiv (abs)PDFHTML

Papers citing "Agnostic Sample Compression Schemes for Regression"

13 / 13 papers shown
Title
Sample Compression Scheme Reductions
Sample Compression Scheme Reductions
Idan Attias
Steve Hanneke
Arvind Ramaswami
MQ
104
1
0
16 Oct 2024
Sample Compression Unleashed: New Generalization Bounds for Real Valued Losses
Sample Compression Unleashed: New Generalization Bounds for Real Valued Losses
Mathieu Bazinet
Valentina Zantedeschi
Pascal Germain
MLTAI4CE
65
1
0
26 Sep 2024
Optimal Learners for Realizable Regression: PAC Learning and Online
  Learning
Optimal Learners for Realizable Regression: PAC Learning and Online Learning
Idan Attias
Steve Hanneke
Alkis Kalavasis
Amin Karbasi
Grigoris Velegkas
73
21
0
07 Jul 2023
Prediction, Learning, Uniform Convergence, and Scale-sensitive
  Dimensions
Prediction, Learning, Uniform Convergence, and Scale-sensitive Dimensions
Peter L. Bartlett
Philip M. Long
127
65
0
21 Apr 2023
A Characterization of Multiclass Learnability
A Characterization of Multiclass Learnability
Nataly Brukhim
Dan Carmon
Irit Dinur
Shay Moran
Amir Yehudayoff
65
54
0
03 Mar 2022
Primal and Dual Combinatorial Dimensions
Primal and Dual Combinatorial Dimensions
P. Kleer
H. Simon
23
7
0
23 Aug 2021
A Theory of PAC Learnability of Partial Concept Classes
A Theory of PAC Learnability of Partial Concept Classes
N. Alon
Steve Hanneke
R. Holzman
Shay Moran
62
51
0
18 Jul 2021
Adversarially Robust Learning with Unknown Perturbation Sets
Adversarially Robust Learning with Unknown Perturbation Sets
Omar Montasser
Steve Hanneke
Nathan Srebro
AAML
71
27
0
03 Feb 2021
Reducing Adversarially Robust Learning to Non-Robust PAC Learning
Reducing Adversarially Robust Learning to Non-Robust PAC Learning
Omar Montasser
Steve Hanneke
Nathan Srebro
77
32
0
22 Oct 2020
VC Classes are Adversarially Robustly Learnable, but Only Improperly
VC Classes are Adversarially Robustly Learnable, but Only Improperly
Omar Montasser
Steve Hanneke
Nathan Srebro
43
140
0
12 Feb 2019
Sample compression schemes for VC classes
Sample compression schemes for VC classes
Shay Moran
Amir Yehudayoff
77
93
0
24 Mar 2015
Optimal Learners for Multiclass Problems
Optimal Learners for Multiclass Problems
Amit Daniely
Shai Shalev-Shwartz
60
86
0
10 May 2014
Multiclass learnability and the ERM principle
Multiclass learnability and the ERM principle
Amit Daniely
Sivan Sabato
Shai Ben-David
Shai Shalev-Shwartz
153
150
0
13 Aug 2013
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