Iterative Constructions and Private Data Release
Anupam Gupta, Aaron Roth, Jonathan Ullman

TL;DR
This paper introduces new algorithms for differentially private graph cut data release, improving efficiency and accuracy in both interactive and non-interactive settings, with a focus on iterative database construction methods.
Contribution
It presents a new generic framework for iterative database construction algorithms, leading to improved private query release mechanisms and algorithms for graph cut data release.
Findings
New IDC algorithm based on low-rank matrix decomposition improves dense graph data release.
Non-interactive algorithm for private graph cuts with error O(|V|^{1.5}).
Reduction showing the importance of rank-1 matrix approximation for private synthetic data release.
Abstract
In this paper we study the problem of approximately releasing the cut function of a graph while preserving differential privacy, and give new algorithms (and new analyses of existing algorithms) in both the interactive and non-interactive settings. Our algorithms in the interactive setting are achieved by revisiting the problem of releasing differentially private, approximate answers to a large number of queries on a database. We show that several algorithms for this problem fall into the same basic framework, and are based on the existence of objects which we call iterative database construction algorithms. We give a new generic framework in which new (efficient) IDC algorithms give rise to new (efficient) interactive private query release mechanisms. Our modular analysis simplifies and tightens the analysis of previous algorithms, leading to improved bounds. We then give a new IDC…
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