A Sieve-Accelerated Quadrature Method for Exact Privacy Accounting in the 2020 U.S. Decennial Census
Pith reviewed 2026-06-30 05:43 UTC · model grok-4.3
The pith
A sieve-accelerated quadrature method delivers the first exact, assumption-free privacy accounting for the 2020 Census data releases at 1824 times prior speed.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
By recasting exact privacy accounting as a numerical integration problem via the discrete Fourier transform and applying a sieve algorithm to prune negligible quadrature nodes, the method evaluates the tail probabilities of high-dimensional convolutions of heterogeneous discrete Gaussian distributions to within 10^{-35} error, achieving the first assumption-free exact privacy accounting for the 2020 Census Demographic and Housing Characteristics File at 1,824 times the speed of prior techniques.
What carries the argument
the sieve-accelerated DFT-based trapezoidal quadrature for tail probabilities of discrete Gaussian convolutions
If this is right
- The Census Bureau can determine the absolute minimum noise needed for a given privacy budget.
- Excess noise injection is avoided, increasing the statistical utility of the published data.
- The method applies directly to the composition of heterogeneous discrete Gaussian mechanisms used in the 2020 releases.
- Error tolerances mandated by the census are maintained throughout the computation.
Where Pith is reading between the lines
- Similar quadrature techniques could accelerate privacy accounting in other large-scale data releases beyond the census.
- The approach might extend to evaluating privacy profiles for mechanisms other than discrete Gaussians if their characteristic functions share the same analytic properties.
- Reduced computation time could enable real-time or iterative privacy budget allocation during data processing.
Load-bearing premise
The characteristic functions of the discrete Gaussian distributions must be complex analytic and periodic for the trapezoidal rule to achieve the required exponential convergence after sieve pruning.
What would settle it
Computing the privacy loss for a low-dimensional case with known closed-form solution or brute-force enumeration and verifying that the quadrature result matches it to within the stated tolerance.
Figures
read the original abstract
In 2020, the U.S. Census Bureau adopted differential privacy for the Decennial Census by injecting integer-valued Gaussian noise into published census tabulations. Exactly evaluating the privacy guarantees of these data releases would enable the Bureau to determine the absolute minimum noise required to satisfy a given privacy budget, preventing the injection of unnecessary excess noise and thereby substantially enhancing the statistical utility of the data for downstream applications such as federal funding allocation and political redistricting. In this paper, we introduce a computationally efficient and mathematically rigorous quadrature method to evaluate the exact privacy profile of practical, large-scale census releases under the composition of heterogeneous discrete Gaussian mechanisms. Mathematically, this problem reduces to evaluating the tail probabilities of high-dimensional convolutions of integer-valued random variables sampled from heterogeneous discrete Gaussian distributions under exceptionally stringent numerical error tolerances (e.g., $10^{-35}$). By recasting the exact privacy accounting as a numerical integration problem via the discrete Fourier transform, we explicitly exploit the exponential convergence of the trapezoidal rule for complex analytic, periodic characteristic functions. Furthermore, to overcome the computational bottleneck of evaluating highly oscillatory integrands in high dimensions, we develop a sieve algorithm that identifies and prunes negligible quadrature nodes, accelerating the computation by three orders of magnitude. Taken together, these numerical innovations enable the first exact, assumption-free privacy accounting for the 2020 Census Demographic and Housing Characteristics File, achieving a 1,824-fold speedup over prior methods while maintaining census-mandated error tolerances.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript presents a quadrature method for exact privacy accounting of compositions of heterogeneous discrete Gaussian mechanisms, recast as DFT-based numerical integration of periodic characteristic functions. A sieve algorithm prunes negligible nodes to accelerate evaluation of high-dimensional tail probabilities to 10^{-35} tolerances. The method is applied to the 2020 Census DHC File, claiming the first assumption-free exact accounting and a 1,824-fold speedup over prior approaches.
Significance. If the convergence and error bounds hold, the work would enable tighter, precisely calibrated noise injection in census releases, directly improving statistical utility for applications such as redistricting and funding allocation. The explicit use of periodicity and analyticity for exponential trapezoidal convergence, combined with the sieve pruning, is a concrete algorithmic contribution that could generalize to other privacy-accounting settings with discrete mechanisms.
major comments (1)
- [Quadrature error analysis and sieve pruning] The central claim of meeting 10^{-35} error after sieve pruning rests on exponential convergence of the trapezoidal rule. No explicit bound is given relating the sieve threshold to the quadrature truncation error when the analytic strip width is governed by the smallest variance in a heterogeneous high-dimensional composition (see the discussion of Poisson summation and strip width in the quadrature section).
minor comments (1)
- [Abstract] The abstract states both 'three orders of magnitude' and the specific 1,824-fold figure; ensure these are reconciled in the main text and that the baseline method for the speedup comparison is clearly identified.
Simulated Author's Rebuttal
We thank the referee for their thorough review and insightful comments on our manuscript. The feedback highlights an important aspect of the error analysis that we will strengthen in the revision. We address the major comment point by point below.
read point-by-point responses
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Referee: [Quadrature error analysis and sieve pruning] The central claim of meeting 10^{-35} error after sieve pruning rests on exponential convergence of the trapezoidal rule. No explicit bound is given relating the sieve threshold to the quadrature truncation error when the analytic strip width is governed by the smallest variance in a heterogeneous high-dimensional composition (see the discussion of Poisson summation and strip width in the quadrature section).
Authors: We agree that the manuscript relies on the known exponential convergence rate of the trapezoidal rule for periodic analytic functions (via the Poisson summation formula and the width of the analytic strip in the complex plane), but does not supply a fully explicit quantitative relation between the chosen sieve threshold and the resulting quadrature truncation error in the heterogeneous case. The current analysis notes that the strip width is controlled by the smallest variance parameter, yet stops short of a closed-form bound that directly incorporates the sieve pruning threshold. In the revised manuscript we will add a dedicated lemma and corollary in Section 3 that derives such a bound: we show that for a composition of heterogeneous discrete Gaussians the total error after sieve pruning is at most C·exp(−2π·δ·N) + ε_sieve, where δ is the minimal strip width, N the number of quadrature nodes, and ε_sieve is controlled by the threshold; the constant C is made explicit in terms of the variance vector. This will also include a short proof sketch confirming that the bound remains valid under the heterogeneity present in the 2020 Census DHC mechanisms. revision: yes
Circularity Check
No circularity: standard numerical quadrature on DFT integrands with pruning optimization
full rationale
The paper derives a quadrature-based algorithm for tail probabilities of discrete-Gaussian convolutions by recasting the problem as integration of the DFT of the characteristic function and applying the known exponential convergence of the trapezoidal rule on 2π-periodic analytic functions, followed by a sieve to drop negligible nodes. This chain rests on external Fourier-analysis facts (Poisson summation, trapezoidal error bounds for strip-analytic periodic integrands) rather than any self-definition, fitted parameter renamed as prediction, or load-bearing self-citation. The 2020 Census application is a concrete instance of the algorithm; no target privacy quantity is defined in terms of the output or obtained by fitting. The derivation is therefore self-contained against external mathematical benchmarks.
Axiom & Free-Parameter Ledger
axioms (1)
- domain assumption Characteristic functions of discrete Gaussian distributions are complex analytic and periodic
Reference graph
Works this paper leans on
-
[1]
J. M. Abowd. Staring down the database reconstruction theorem, 2019. URLhttps://www2. census.gov/programs-surveys/decennial/2020/resources/presentations-publications/ 2019-02-16-abowd-db-reconstruction.pdf
2019
-
[2]
J. M. Abowd. census.gov.https://www.census.gov/content/dam/Census/newsroom/press-kits/ 2020/jsm/trying-to-be-a-good-data-steward-in-the-21st-century.pdf, 2020
2020
-
[3]
J. M. Abowd, R. Ashmead, R. Cumings-Menon, S. Garfinkel, M. Heineck, C. Heiss, R. Johns, D. Kifer, P. Leclerc, A. Machanavajjhala, B. Moran, W. Sexton, M. Spence, and P. Zhuravlev. The 2020 census disclosure avoidance system TopDown algorithm.Harvard Data Science Review, (Special Issue 2), 2022
2020
-
[4]
J. M. Abowd, R. Ashmead, R. Cumings-Menon, S. L. Garfinkel, M. Heineck, C. Heiss, R. Johns, D. Kifer, P. Leclerc, A. Machanavajjhala, B. Moran, W. Sexton, M. Spence, and P. Zhuravlev. Invited lecture: The u.s. census bureau adopts differential privacy. InKDD ’18: Proceedings of the 24th ACM SIGKDD international conference on knowledge discovery & data min...
2022
-
[5]
M. J. Anderson.The American census: A social history. Yale University Press, 2015
2015
-
[6]
Ansolabehere and J
S. Ansolabehere and J. Snyder.The End of Inequality: One Person, One Vote and the Transformation of American Politics. Issues in American democracy. Norton, 2008. ISBN 9780393931037
2008
-
[7]
D. H. Autor and M. G. Duggan. The rise in the disability rolls and the decline in unemployment.The Quarterly Journal of Economics, 118(1):157–206, 2003
2003
-
[8]
Balle and Y.-X
B. Balle and Y.-X. Wang. Improving the gaussian mechanism for differential privacy: Analytical cali- bration and optimal denoising. InInternational conference on machine learning, pages 394–403. PMLR, 2018
2018
-
[9]
Boyd and J
D. Boyd and J. Sarathy. Differential Perspectives: Epistemic Disconnects Surrounding the U.S. Census Bureau’s Use of Differential Privacy.Harvard Data Science Review, (Special Issue 2), 2022. 26
2022
-
[10]
Z. Bu, J. Dong, Q. Long, and W. J. Su. Deep learning with Gaussian differential privacy.Harvard Data Science Review, 2020(23):10–1162, 2020
2020
-
[11]
J. P. Buhler, A. C. Gamst, R. Graham, and A. W. Hales. Explicit error bounds for lattice edgeworth expansions.Connections in Discrete Mathematics: A Celebration of the Work of Ron Graham, pages 321–352, 2018
2018
-
[12]
Bun and T
M. Bun and T. Steinke. Concentrated differential privacy: Simplifications, extensions, and lower bounds. InTheory of Cryptography Conference, pages 635–658. Springer, 2016
2016
-
[13]
C. L. Canonne, G. Kamath, and T. Steinke. The discrete Gaussian for differential privacy. InAdvances in Neural Information Processing Systems, volume 33, pages 15676–15688. Curran Associates, Inc., 2020
2020
-
[14]
Cohen, M
A. Cohen, M. Duchin, J. Matthews, and B. Suwal. Census TopDown: The impacts of differential privacy on redistricting. In2nd Symposium on Foundations of Responsible Computing, FORC 2021, June 9-11, 2021, Virtual Conference, volume 192 ofLIPIcs, pages 5:1–5:22. Schloss Dagstuhl - Leibniz-Zentrum f¨ ur Informatik, 2021
2021
-
[15]
R. Cumings-Menon, R. Ashmead, D. Kifer, P. Leclerc, M. Spence, P. Zhuravlev, and J. M. Abowd. Disclosure avoidance for the 2020 census demographic and housing characteristics file.arXiv preprint arXiv:2312.10863, 2023
-
[16]
Cumings-Menon, R
R. Cumings-Menon, R. Ashmead, D. Kifer, P. Leclerc, J. Ocker, M. Ratcliffe, P. Zhuravlev, and J. Abowd. Geographic spines in the 2020 census disclosure avoidance system.Journal of Privacy and Confidentiality, 14(3), Aug. 2024
2020
-
[17]
Derumigny, L
A. Derumigny, L. Girard, and Y. Guyonvarch. Explicit non-asymptotic bounds for the distance to the first-order edgeworth expansion.Sankhya A, 86(1):261–336, 2024
2024
-
[18]
T. Dick, C. Dwork, M. Kearns, T. Liu, A. Roth, G. Vietri, and Z. S. Wu. Confidence-ranked reconstruc- tion of census microdata from published statistics.Proceedings of the National Academy of Sciences, 120(8):e2218605120, 2023
2023
-
[19]
J. Dong, A. Roth, and W. J. Su. Gaussian differential privacy.Journal of the Royal Statistical Society: Series B (Statistical Methodology), 84(1):3–37, 2022
2022
-
[20]
Durrett.Probability: theory and examples, volume 49
R. Durrett.Probability: theory and examples, volume 49. Cambridge university press, 2019
2019
-
[21]
Dwork and A
C. Dwork and A. Roth. The algorithmic foundations of differential privacy.Foundations and Trends® in Theoretical Computer Science, 9(3–4):211–407, 2014
2014
-
[22]
Concentrated Differential Privacy
C. Dwork and G. N. Rothblum. Concentrated differential privacy.arXiv preprint arXiv:1603.01887, 2016
work page internal anchor Pith review Pith/arXiv arXiv 2016
-
[23]
Dwork, K
C. Dwork, K. Kenthapadi, F. McSherry, I. Mironov, and M. Naor. Our data, ourselves: Privacy via distributed noise generation. InAdvances in Cryptology-EUROCRYPT 2006: 24th Annual International Conference on the Theory and Applications of Cryptographic Techniques, St. Petersburg, Russia, May 28-June 1, 2006. Proceedings 25, pages 486–503. Springer, 2006
2006
-
[24]
Dwork, F
C. Dwork, F. McSherry, K. Nissim, and A. Smith. Calibrating noise to sensitivity in private data analysis.Theory Of Cryptography, Proceedings, 3876:265–284, 2006. 27
2006
-
[25]
S. J. Eckman. Apportionment and redistricting following the 2020 census.https://sgp.fas.org/crs/ misc/IN11360.pdf, 2021
2020
-
[26]
J. F. Gomez, B. Kulynych, G. Kaissis, J. Hayes, B. Balle, and A. Honkela. Gaussian dp for reporting differential privacy guarantees in machine learning.arXiv preprint arXiv:2503.10945, 2025
work page internal anchor Pith review Pith/arXiv arXiv 2025
-
[27]
S. Gopi, Y. T. Lee, and L. Wutschitz. Numerical composition of differential privacy. InAdvances in Neural Information Processing Systems 34: Annual Conference on Neural Information Processing Systems 2021, NeurIPS 2021, December 6-14, 2021, virtual, pages 11631–11642, 2021
2021
-
[28]
Hall.The bootstrap and Edgeworth expansion
P. Hall.The bootstrap and Edgeworth expansion. Springer Science & Business Media, 2013
2013
-
[29]
S. Haney, S. Berghel, B. Carlson, R. Cumings-Menon, L. Hartman, M. Hay, A. Machanavajjhala, G. Miklau, A. Pai, S. Rajpal, D. Pujol, W. Sexton, R. Shrestha, and D. Simmons-Marengo. Safetab- p: Disclosure avoidance for the 2020 census detailed demographic and housing characteristics file a (detailed dhc-a).arXiv preprint arXiv:2505.01472, 2025
-
[30]
M. Hawes. Reconstruction and re-identification of the Demographic and Housing Characteristics File (DHC), 2022. URLhttps://www2.census.gov/about/partners/cac/sac/meetings/2022-03/ presentation-reconstruction-and-reidentification-of-the-dhc.pdf
2022
-
[31]
Hotchkiss and J
M. Hotchkiss and J. Phelan.Uses of Census Bureau data in federal funds distribution: A new design for the 21st century. United States Census Bureau, 2017
2017
-
[32]
Kairouz, Z
P. Kairouz, Z. Liu, and T. Steinke. The distributed discrete gaussian mechanism for federated learning with secure aggregation. InProceedings of the 38th International Conference on Machine Learning, ICML 2021, 18-24 July 2021, Virtual Event, volume 139 ofProceedings of Machine Learning Research, pages 5201–5212. PMLR, 2021
2021
-
[33]
C. T. Kenny, S. Kuriwaki, C. McCartan, E. T. R. Rosenman, T. Simko, and K. Imai. The use of differential privacy for census data and its impact on redistricting: The case of the 2020 U.S. census. Science Advances, 7(41):eabk3283, 2021
2020
-
[34]
C. T. Kenny, S. Kuriwaki, C. McCartan, E. T. R. Rosenman, T. Simko, and K. Imai. Comment: The Essential Role of Policy Evaluation for the 2020 Census Disclosure Avoidance System.Harvard Data Science Review, (Special Issue 2), 2023
2020
-
[35]
C. T. Kenny, C. McCartan, T. Simko, and K. Imai. Census officials must constructively engage with independent evaluations.Proceedings of the National Academy of Sciences, 121(11):e2321196121, 2024
2024
- [36]
-
[37]
Koskela, J
A. Koskela, J. J¨ alk¨ o, and A. Honkela. Computing tight differential privacy guarantees using FFT. InThe 23rd International Conference on Artificial Intelligence and Statistics, AISTATS 2020, 26-28 August 2020, Online [Palermo, Sicily, Italy], volume 108 ofProceedings of Machine Learning Research, pages 2560–2569. PMLR, 2020
2020
-
[38]
Koskela, J
A. Koskela, J. J¨ alk¨ o, L. Prediger, and A. Honkela. Tight differential privacy for discrete-valued mech- anisms and for the subsampled Gaussian mechanism using FFT. InThe 24th International Conference on Artificial Intelligence and Statistics, AISTATS 2021, April 13-15, 2021, Virtual Event, volume 130 ofProceedings of Machine Learning Research, pages 3...
2021
-
[39]
Kulynych, J
B. Kulynych, J. F. Gomez, G. Kaissis, J. Hayes, B. Balle, F. Calmon, and J. L. Raisaro. Unifying re-identification, attribute inference, and data reconstruction risks in differential privacy. InThe Thirty- ninth Annual Conference on Neural Information Processing Systems, 2025. URLhttps://openreview. net/forum?id=rem4dgVrFg
2025
-
[40]
E. L. Lehmann and J. P. Romano.Testing statistical hypotheses. Springer Texts in Statistics. Springer, New York, third edition, 2005. ISBN 0-387-98864-5
2005
- [41]
-
[42]
McSherry
F. McSherry. Privacy integrated queries: an extensible platform for privacy-preserving data analysis. Commun. ACM, 53(9):89–97, 2010
2010
-
[43]
Micciancio and O
D. Micciancio and O. Regev. Worst-case to average-case reductions based on Gaussian measures.SIAM Journal on Computing, 37(1):267–302, 2007
2007
-
[44]
I. Mironov. R´ enyi differential privacy. In2017 IEEE 30th computer security foundations symposium (CSF), pages 263–275. IEEE, 2017
2017
-
[45]
S. Sachdeva and N. K. Vishnoi. Faster algorithms via approximation theory.Foundations and Trends® in Theoretical Computer Science, 9(2):125–210, 2014. ISSN 1551-305X. doi: 10.1561/0400000065. URL http://dx.doi.org/10.1561/0400000065
-
[46]
Shevtsova
I. Shevtsova. Moment-type estimates with asymptotically optimal structure for the accuracy of the normal approximation.Ann. Math. Inform, 39:241–307, 2012
2012
-
[47]
Smith, H
J. Smith, H. J. Asghar, G. Gioiosa, S. Mrabet, S. Gaspers, and P. Tyler. Making the most of parallel composition in differential privacy.Proc. Priv. Enhancing Technol., 2022(1):253–273, 2022
2022
-
[48]
B. Su, W. J. Su, and C. Wang. The 2020 US Decennial Census is more private than you (might) think.Proceedings of the National Academy of Sciences, 122(45):e2500337122, 2025. doi: 10.1073/pnas. 2500337122. URLhttps://www.pnas.org/doi/abs/10.1073/pnas.2500337122
-
[49]
W. J. Su. A Statistical Viewpoint on Differential Privacy: Hypothesis Testing, Representation, and Blackwell’s theorem.Annual Review of Statistics and Its Application, 12(1):157–175, 2025
2025
-
[50]
T. A. Sullivan. Coming to Our Census: How Social Statistics Underpin Our Democracy (and Republic). Harvard Data Science Review, 2(1), 2020
2020
-
[51]
Phillips v
The American Redistricting Project. Phillips v. U.S. Census Bureau — thearp.org.https://thearp. org/litigation/phillips-v-us-census-bureau/
-
[52]
L. N. Trefethen and J. A. C. Weideman. The exponentially convergent trapezoidal rule.SIAM Review, 56(3):385–458, 2014. doi: 10.1137/130932132. URLhttps://doi.org/10.1137/130932132
-
[53]
2020 Census Demographic and Housing Characteristics File (DHC) — census.gov
US Census Bureau. 2020 Census Demographic and Housing Characteristics File (DHC) — census.gov. https://www.census.gov/data/tables/2023/dec/2020-census-dhc.html, 2020
2020
-
[54]
2020 census apportionment results.https://www.census.gov/data/tables/2020/ dec/2020-apportionment-data.html, 2021
US Census Bureau. 2020 census apportionment results.https://www.census.gov/data/tables/2020/ dec/2020-apportionment-data.html, 2021
2020
-
[55]
Guidance for labor force statistics data users.https://www.census.gov/topics/ employment/labor-force/guidance.html, 2021
US Census Bureau. Guidance for labor force statistics data users.https://www.census.gov/topics/ employment/labor-force/guidance.html, 2021. 29
2021
-
[56]
US Census Bureau. New Demonstration Data Will Feature Higher Privacy-loss Budget, Satisfies Redistricting Accuracy Targets — census.gov.https://www.census.gov/programs-surveys/ decennial-census/decade/2020/planning-management/process/disclosure-avoidance/ 2020-das-updates/2021-04-19.html, 2021
2020
-
[57]
Privacy-loss budget allocation 2022-08-25.https://www2.census
US Census Bureau. Privacy-loss budget allocation 2022-08-25.https://www2.census. gov/programs-surveys/decennial/2020/program-management/data-product-planning/ 2010-demonstration-data-products/02-Demographic_and_Housing_Characteristics/ 2022-08-25_Summary_File/2022-08-25_Privacy-Loss_Budget_Allocations.pdf, 2022
2022
-
[58]
DAS-implementation-details
US Census Bureau. DAS-implementation-details. U.S. Census Bureau, 2023. URL https://github.com/uscensusbureau/DAS_2020_DHC_Production_Code/blob/main/wiki/ DAS-Implementation-Details.md
2023
-
[59]
Census bureau data guide more than$2.8 trillion in federal fund- ing in fiscal year 2021, 2023
US Census Bureau. Census bureau data guide more than$2.8 trillion in federal fund- ing in fiscal year 2021, 2023. URLhttps://www.census.gov/newsroom/press-releases/2023/ decennial-census-federal-funds-distribution.html
2021
-
[60]
US Census Bureau. Announcing the 2030 Census Disclosure Avoidance Research Pro- gram — census.gov.https://www.census.gov/newsroom/blogs/research-matters/2025/ 2030-census-disclosure-avoidance.html, 2025
2030
-
[61]
Decennial Census of Population and Housing Disclosure Avoidance — cen- sus.gov.https://www.census.gov/programs-surveys/decennial-census/disclosure-avoidance
US Census Bureau. Decennial Census of Population and Housing Disclosure Avoidance — cen- sus.gov.https://www.census.gov/programs-surveys/decennial-census/disclosure-avoidance. html, 2025
2025
-
[62]
D. T. S. Vu.Numerical resolution of algebraic systems with complementarity conditions. Application to the thermodynamics of compositional multiphase mixtures. Theses, Universit´ e Paris-Saclay, Oct. 2020. URLhttps://ifp.hal.science/tel-02965421
2020
-
[63]
C. Wang, B. Su, J. Ye, R. Shokri, and W. J. Su. Unified enhancement of privacy bounds for mixture mechanisms viaf-differential privacy.Advances in Neural Information Processing Systems, 36, 2024
2024
-
[64]
H. Wang, S. Gao, H. Zhang, M. Shen, and W. J. Su. Analytical composition of differential privacy via the Edgeworth accountant.arXiv preprint arXiv:2206.04236, 2022
work page internal anchor Pith review Pith/arXiv arXiv 2022
-
[65]
Y.-X. Wang, B. Balle, and S. P. Kasiviswanathan. Subsampled r´ enyi differential privacy and analytical moments accountant. InThe 22nd international conference on artificial intelligence and statistics, pages 1226–1235. PMLR, 2019
2019
-
[66]
Zhu and Y.-X
Y. Zhu and Y.-X. Wang. Poission subsampled r´ enyi differential privacy. InInternational Conference on Machine Learning, pages 7634–7642. PMLR, 2019
2019
-
[67]
Zhu and Y.-X
Y. Zhu and Y.-X. Wang. Improving sparse vector technique with renyi differential privacy.Advances in neural information processing systems, 33:20249–20258, 2020
2020
-
[68]
privacy budget allocation
Y. Zhu, J. Dong, and Y.-X. Wang. Optimal accounting of differential privacy via characteristic function. InInternational Conference on Artificial Intelligence and Statistics, pages 4782–4817. PMLR, 2022. 30 Supplementary Materials for A Sieve-Accelerated Quadrature Method for Exact Privacy Accounting in the 2020 U.S. Decennial Census A Preliminaries A.1 U...
2022
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