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1910.11519
Cited By
Limits of Private Learning with Access to Public Data
25 October 2019
N. Alon
Raef Bassily
Shay Moran
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Papers citing
"Limits of Private Learning with Access to Public Data"
36 / 36 papers shown
Title
Credit Attribution and Stable Compression
Roi Livni
Shay Moran
Kobbi Nissim
Chirag Pabbaraju
72
0
0
22 Jun 2024
Fast Rates for Bandit PAC Multiclass Classification
Liad Erez
Alon Cohen
Tomer Koren
Yishay Mansour
Shay Moran
45
1
0
18 Jun 2024
Joint Selection: Adaptively Incorporating Public Information for Private Synthetic Data
Miguel Fuentes
Brett Mullins
Ryan McKenna
G. Miklau
Daniel Sheldon
73
5
0
12 Mar 2024
Public-data Assisted Private Stochastic Optimization: Power and Limitations
Enayat Ullah
Michael Menart
Raef Bassily
Cristóbal Guzmán
Raman Arora
74
2
0
06 Mar 2024
Oracle-Efficient Differentially Private Learning with Public Data
Adam Block
Mark Bun
Rathin Desai
Abhishek Shetty
Steven Wu
FedML
53
2
0
13 Feb 2024
The sample complexity of multi-distribution learning
Binghui Peng
117
9
0
07 Dec 2023
PCDP-SGD: Improving the Convergence of Differentially Private SGD via Projection in Advance
Haichao Sha
Ruixuan Liu
Yi-xiao Liu
Hong Chen
133
1
0
06 Dec 2023
Mean Estimation Under Heterogeneous Privacy Demands
Syomantak Chaudhuri
Konstantin Miagkov
T. Courtade
77
1
0
19 Oct 2023
Private Distribution Learning with Public Data: The View from Sample Compression
Shai Ben-David
Alex Bie
C. Canonne
Gautam Kamath
Vikrant Singhal
86
13
0
11 Aug 2023
Differentially Private Domain Adaptation with Theoretical Guarantees
Raef Bassily
Corinna Cortes
Anqi Mao
M. Mohri
60
0
0
15 Jun 2023
PILLAR: How to make semi-private learning more effective
Francesco Pinto
Yaxian Hu
Fanny Yang
Amartya Sanyal
92
12
0
06 Jun 2023
Selective Pre-training for Private Fine-tuning
Da Yu
Sivakanth Gopi
Janardhan Kulkarni
Zinan Lin
Saurabh Naik
Tomasz Religa
Jian Yin
Huishuai Zhang
94
19
0
23 May 2023
Mean Estimation Under Heterogeneous Privacy: Some Privacy Can Be Free
Syomantak Chaudhuri
T. Courtade
47
4
0
27 Apr 2023
Why Is Public Pretraining Necessary for Private Model Training?
Arun Ganesh
Mahdi Haghifam
Milad Nasr
Sewoong Oh
Thomas Steinke
Om Thakkar
Abhradeep Thakurta
Lun Wang
68
39
0
19 Feb 2023
Do PAC-Learners Learn the Marginal Distribution?
Max Hopkins
D. Kane
Shachar Lovett
G. Mahajan
200
3
0
13 Feb 2023
Pushing the Boundaries of Private, Large-Scale Query Answering
Brendan Avent
Aleksandra Korolova
78
0
0
09 Feb 2023
Differentially-Private Bayes Consistency
Olivier Bousquet
Haim Kaplan
A. Kontorovich
Yishay Mansour
Shay Moran
Menachem Sadigurschi
Uri Stemmer
51
0
0
08 Dec 2022
Outsourcing Training without Uploading Data via Efficient Collaborative Open-Source Sampling
Junyuan Hong
Lingjuan Lyu
Jiayu Zhou
Michael Spranger
SyDa
86
6
0
23 Oct 2022
Private Estimation with Public Data
Alex Bie
Gautam Kamath
Vikrant Singhal
78
31
0
16 Aug 2022
Private Domain Adaptation from a Public Source
Raef Bassily
M. Mohri
A. Suresh
22
4
0
12 Aug 2022
Mixed Differential Privacy in Computer Vision
Aditya Golatkar
Alessandro Achille
Yu Wang
Aaron Roth
Michael Kearns
Stefano Soatto
PICV
VLM
96
50
0
22 Mar 2022
Federated Learning with Sparsified Model Perturbation: Improving Accuracy under Client-Level Differential Privacy
Rui Hu
Yanmin Gong
Yuanxiong Guo
FedML
87
73
0
15 Feb 2022
Public Data-Assisted Mirror Descent for Private Model Training
Ehsan Amid
Arun Ganesh
Rajiv Mathews
Swaroop Indra Ramaswamy
Shuang Song
Thomas Steinke
Vinith Suriyakumar
Om Thakkar
Abhradeep Thakurta
89
51
0
01 Dec 2021
Realizable Learning is All You Need
Max Hopkins
D. Kane
Shachar Lovett
G. Mahajan
173
23
0
08 Nov 2021
Differentially Private Fine-tuning of Language Models
Da Yu
Saurabh Naik
A. Backurs
Sivakanth Gopi
Huseyin A. Inan
...
Y. Lee
Andre Manoel
Lukas Wutschitz
Sergey Yekhanin
Huishuai Zhang
260
372
0
13 Oct 2021
Iterative Methods for Private Synthetic Data: Unifying Framework and New Methods
Terrance Liu
G. Vietri
Zhiwei Steven Wu
SyDa
70
64
0
14 Jun 2021
Do Not Let Privacy Overbill Utility: Gradient Embedding Perturbation for Private Learning
Da Yu
Huishuai Zhang
Wei Chen
Tie-Yan Liu
FedML
SILM
169
116
0
25 Feb 2021
Leveraging Public Data for Practical Private Query Release
Terrance Liu
G. Vietri
Thomas Steinke
Jonathan R. Ullman
Zhiwei Steven Wu
198
60
0
17 Feb 2021
Revisiting Model-Agnostic Private Learning: Faster Rates and Active Learning
Chong Liu
Yuqing Zhu
Kamalika Chaudhuri
Yu Wang
FedML
68
8
0
06 Nov 2020
Learning from Mixtures of Private and Public Populations
Raef Bassily
Shay Moran
Anupama Nandi
FedML
53
25
0
01 Aug 2020
Bypassing the Ambient Dimension: Private SGD with Gradient Subspace Identification
Yingxue Zhou
Zhiwei Steven Wu
A. Banerjee
74
110
0
07 Jul 2020
Private Query Release Assisted by Public Data
Raef Bassily
Albert Cheu
Shay Moran
Aleksandar Nikolov
Jonathan R. Ullman
Zhiwei Steven Wu
132
49
0
23 Apr 2020
Reasoning About Generalization via Conditional Mutual Information
Thomas Steinke
Lydia Zakynthinou
161
166
0
24 Jan 2020
PAC learning with stable and private predictions
Y. Dagan
Vitaly Feldman
67
13
0
24 Nov 2019
Privately Answering Classification Queries in the Agnostic PAC Model
Anupama Nandi
Raef Bassily
104
26
0
31 Jul 2019
The Power of The Hybrid Model for Mean Estimation
Brendan Avent
Yatharth Dubey
Aleksandra Korolova
79
17
0
29 Nov 2018
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