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Joshua Snoke
Joshua Snoke
Statistician, RAND Corporation
在 rand.org 的电子邮件经过验证 - 首页
标题
引用次数
引用次数
年份
General and specific utility measures for synthetic data
J Snoke, GM Raab, B Nowok, C Dibben, A Slavkovic
Journal of the Royal Statistical Society: Series A (Statistics in Society …, 2018
1972018
COVID-19 and the State of K-12 Schools: Results and Technical Documentation from the Fall 2020 American Educator Panels COVID-19 Surveys. Research Report. RR-A168-5.
JH Kaufman, M Diliberti, GP Hunter, D Grant, LS Hamilton, HL Schwartz, ...
RAND Corporation, 2020
133*2020
Comparative study of differentially private synthetic data algorithms from the NIST PSCR differential privacy synthetic data challenge
CMK Bowen, J Snoke
Journal of Privacy and Confidentiality 11 (1), 2021
482021
pMSE Mechanism: Differentially Private Synthetic Data with Maximal Distributional Similarity
J Snoke, A Slavković
International Conference on Privacy in Statistical Databases, 138-159, 2018
412018
American Instructional Resources Surveys
S Doan, PAZ FERNANDEZ, D Grant, JH Kaufman, CM Setodji, J Snoke, ...
332022
COVID-19 and the State of K-12 Schools: Results and Technical Documentation from the Spring 2021 American Educator Panels COVID-19 Surveys
JH Kaufman, MK Diliberti, GP Hunter, J Snoke, DM Grant, CM Setodji, ...
RAND, 2021
202021
A Feasibility Study of Differentially Private Summary Statistics and Regression Analyses with Evaluations on Administrative and Survey Data
AF Barrientos, AR Williams, J Snoke, CMK Bowen
Journal of the American Statistical Association 119 (545), 52-65, 2024
15*2024
How Statisticians Should Grapple with Privacy in a Changing Data Landscape
J Snoke, CMK Bowen
CHANCE 33 (4), 6-13, 2020
132020
synthpop: Generating synthetic versions of sensitive microdata for statistical disclosure control
B Nowok, GM Raab, J Snoke, C Dibben
R package version, 1.3-0, 2016
13*2016
Providing accurate models across private partitioned data: Secure maximum likelihood estimation
J Snoke, TR Brick, A Slavković, MD Hunter
Annals of Applied Statistics 12 (2), 877-914, 2018
112018
Using Neural Generative Models to Release Synthetic Twitter Corpora with Reduced Stylometric Identifiability of Users
AG Ororbia II, F Linder, J Snoke
arXiv preprint arXiv:1606.01151, 2017
9*2017
Organizational Characteristics Associated with Risk of Sexual Assault and Sexual Harassment in the US Army
M Matthews, AR Morral, TL Schell, M Cefalu, J Snoke, RJ Briggs
72021
Disclosing economists’ privacy perspectives: A survey of american economic association members on differential privacy and data fitness for use standards
AR Williams, J Snoke, C Bowen, AF Barrientos
National Bureau of Economic Research, 2023
52023
Incompatibilities Between Current Practices in Statistical Data Analysis and Differential Privacy
J Snoke, CMK Bowen, AR Williams, AF Barrientos
arXiv preprint arXiv:2309.16703, 2023
32023
Do No Harm Guide: Applying Equity Awareness In Data Privacy Methods
C Bowen, J Snoke
Urban Institute, 2023
32023
US Air Force Enlisted Classification and Reclassification: Potential Improvements Using Machine Learning and Optimization Models
S Robson, MC Lytell, M Walsh, KC Hall, KM Keller, V Kilambi, J Snoke, ...
RAND, 2022
3*2022
Leveraging Machine Learning to Improve Human Resource Management: Key Findings and Recommendations for Policymakers
D Schulker, M Walsh, A Calkins, M Graham, CK Montemayor, AA Robbert, ...
RAND, 2024
22024
Advancing Equitable Decisionmaking for the Department of Defense Through Fairness in Machine Learning
I Cabreros, J Snoke, OA Osoba, I Khan, MN Elliott
22023
Differential Privacy: What Is It?
J Snoke, CMK Bowen
AMSTAT news: the membership magazine of the American Statistical Association …, 2019
22019
Statistical Data Privacy Methods for Increasing Research Opportunities
JV Snoke
The Pennsylvania State University, 2018
22018
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