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Private Estimation with Public Data

Private Estimation with Public Data

16 August 2022
Alex Bie
Gautam Kamath
Vikrant Singhal
ArXivPDFHTML

Papers citing "Private Estimation with Public Data"

26 / 26 papers shown
Title
Leveraging Vertical Public-Private Split for Improved Synthetic Data Generation
Leveraging Vertical Public-Private Split for Improved Synthetic Data Generation
Samuel Maddock
Shripad Gade
Graham Cormode
Will Bullock
26
0
0
15 Apr 2025
Optimal Differentially Private Sampling of Unbounded Gaussians
Valentio Iverson
Gautam Kamath
Argyris Mouzakis
44
0
0
03 Mar 2025
Differentially Private Prototypes for Imbalanced Transfer Learning
Differentially Private Prototypes for Imbalanced Transfer Learning
Dariush Wahdany
Matthew Jagielski
Adam Dziedzic
Franziska Boenisch
80
0
0
17 Feb 2025
Private Means and the Curious Incident of the Free Lunch
Private Means and the Curious Incident of the Free Lunch
Jack Fitzsimons
James Honaker
Michael Shoemate
Vikrant Singhal
27
2
0
19 Aug 2024
Credit Attribution and Stable Compression
Credit Attribution and Stable Compression
Roi Livni
Shay Moran
Kobbi Nissim
Chirag Pabbaraju
39
0
0
22 Jun 2024
Public-data Assisted Private Stochastic Optimization: Power and
  Limitations
Public-data Assisted Private Stochastic Optimization: Power and Limitations
Enayat Ullah
Michael Menart
Raef Bassily
Cristóbal Guzmán
Raman Arora
30
1
0
06 Mar 2024
On the Convergence of Differentially-Private Fine-tuning: To Linearly
  Probe or to Fully Fine-tune?
On the Convergence of Differentially-Private Fine-tuning: To Linearly Probe or to Fully Fine-tune?
Shuqi Ke
Charlie Hou
Giulia Fanti
Sewoong Oh
34
4
0
29 Feb 2024
Oracle-Efficient Differentially Private Learning with Public Data
Oracle-Efficient Differentially Private Learning with Public Data
Adam Block
Mark Bun
Rathin Desai
Abhishek Shetty
Steven Wu
FedML
16
2
0
13 Feb 2024
Sample-Optimal Locally Private Hypothesis Selection and the Provable
  Benefits of Interactivity
Sample-Optimal Locally Private Hypothesis Selection and the Provable Benefits of Interactivity
A. F. Pour
Hassan Ashtiani
S. Asoodeh
25
0
0
09 Dec 2023
Mean Estimation Under Heterogeneous Privacy Demands
Mean Estimation Under Heterogeneous Privacy Demands
Syomantak Chaudhuri
Konstantin Miagkov
T. Courtade
10
1
0
19 Oct 2023
Mixtures of Gaussians are Privately Learnable with a Polynomial Number
  of Samples
Mixtures of Gaussians are Privately Learnable with a Polynomial Number of Samples
Mohammad Afzali
H. Ashtiani
Christopher Liaw
24
5
0
07 Sep 2023
Private Distribution Learning with Public Data: The View from Sample
  Compression
Private Distribution Learning with Public Data: The View from Sample Compression
Shai Ben-David
Alex Bie
C. Canonne
Gautam Kamath
Vikrant Singhal
27
11
0
11 Aug 2023
Differentially Private Domain Adaptation with Theoretical Guarantees
Differentially Private Domain Adaptation with Theoretical Guarantees
Raef Bassily
Corinna Cortes
Anqi Mao
M. Mohri
25
0
0
15 Jun 2023
Selective Pre-training for Private Fine-tuning
Selective Pre-training for Private Fine-tuning
Da Yu
Sivakanth Gopi
Janardhan Kulkarni
Zi-Han Lin
Saurabh Naik
Tomasz Religa
Jian Yin
Huishuai Zhang
19
19
0
23 May 2023
Mean Estimation Under Heterogeneous Privacy: Some Privacy Can Be Free
Mean Estimation Under Heterogeneous Privacy: Some Privacy Can Be Free
Syomantak Chaudhuri
T. Courtade
11
4
0
27 Apr 2023
A Polynomial Time, Pure Differentially Private Estimator for Binary
  Product Distributions
A Polynomial Time, Pure Differentially Private Estimator for Binary Product Distributions
Vikrant Singhal
13
9
0
13 Apr 2023
Polynomial Time and Private Learning of Unbounded Gaussian Mixture
  Models
Polynomial Time and Private Learning of Unbounded Gaussian Mixture Models
Jamil Arbas
H. Ashtiani
Christopher Liaw
32
23
0
07 Mar 2023
Why Is Public Pretraining Necessary for Private Model Training?
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
11
36
0
19 Feb 2023
Learning-Augmented Private Algorithms for Multiple Quantile Release
Learning-Augmented Private Algorithms for Multiple Quantile Release
M. Khodak
Kareem Amin
Travis Dick
Sergei Vassilvitskii
FedML
18
4
0
20 Oct 2022
Models of fairness in federated learning
Models of fairness in federated learning
Kate Donahue
Jon M. Kleinberg
FedML
23
9
0
01 Dec 2021
A Private and Computationally-Efficient Estimator for Unbounded
  Gaussians
A Private and Computationally-Efficient Estimator for Unbounded Gaussians
Gautam Kamath
Argyris Mouzakis
Vikrant Singhal
Thomas Steinke
Jonathan R. Ullman
50
39
0
08 Nov 2021
Differentially Private Fine-tuning of Language Models
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
134
346
0
13 Oct 2021
Do Not Let Privacy Overbill Utility: Gradient Embedding Perturbation for
  Private Learning
Do Not Let Privacy Overbill Utility: Gradient Embedding Perturbation for Private Learning
Da Yu
Huishuai Zhang
Wei Chen
Tie-Yan Liu
FedML
SILM
91
110
0
25 Feb 2021
Leveraging Public Data for Practical Private Query Release
Leveraging Public Data for Practical Private Query Release
Terrance Liu
G. Vietri
Thomas Steinke
Jonathan R. Ullman
Zhiwei Steven Wu
148
58
0
17 Feb 2021
On the Sample Complexity of Privately Learning Unbounded
  High-Dimensional Gaussians
On the Sample Complexity of Privately Learning Unbounded High-Dimensional Gaussians
Ishaq Aden-Ali
H. Ashtiani
Gautam Kamath
32
41
0
19 Oct 2020
Privately Learning High-Dimensional Distributions
Privately Learning High-Dimensional Distributions
Gautam Kamath
Jerry Li
Vikrant Singhal
Jonathan R. Ullman
FedML
62
147
0
01 May 2018
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