Best Linear Unbiased Estimate from Privatized Contingency Tables
Authors
Paper Information
-
Journal:
Journal of Machine Learning Research -
Added to Tracker:
Sep 08, 2025
Abstract
In differential privacy (DP) mechanisms, it can be beneficial to release "redundant" outputs, where some quantities can be estimated in multiple ways by combining different privatized values. Indeed, the DP 2020 Decennial Census products published by the U.S. Census Bureau consist of such redundant noisy counts. When redundancy is present, the DP output can be improved by enforcing self-consistency (i.e., estimators obtained using different noisy counts result in the same value), and we show that the minimum variance processing is a linear projection. However, standard projection algorithms require excessive computation and memory, making them impractical for large-scale applications such as the Decennial Census. We propose the Scalable Efficient Algorithm for Best Linear Unbiased Estimate (SEA BLUE), based on a two-step process of aggregation and differencing that 1) enforces self-consistency through a linear and unbiased procedure, 2) is computationally and memory efficient, 3) achieves the minimum variance solution under certain structural assumptions, and 4) is empirically shown to be robust to violations of these structural assumptions. We propose three methods of calculating confidence intervals from our estimates, under various assumptions. Finally, we apply SEA BLUE to two 2010 Census demonstration products, illustrating its scalability and validity.
Author Details
Jordan Awan
AuthorAdam Edwards
AuthorPaul Bartholomew
AuthorAndrew Sillers
AuthorCitation Information
APA Format
Jordan Awan
,
Adam Edwards
,
Paul Bartholomew
&
Andrew Sillers
.
Best Linear Unbiased Estimate from Privatized Contingency Tables.
Journal of Machine Learning Research
.
BibTeX Format
@article{paper481,
title = { Best Linear Unbiased Estimate from Privatized Contingency Tables },
author = {
Jordan Awan
and Adam Edwards
and Paul Bartholomew
and Andrew Sillers
},
journal = { Journal of Machine Learning Research },
url = { https://www.jmlr.org/papers/v26/24-1962.html }
}