Breaking the $n^{1.5}$ Additive Error Barrier for Private and Efficient Graph Sparsification via Private Expander Decomposition
Breaking the $n^{1.5}$ Additive Error Barrier for Private and Efficient Graph Sparsification via Private Expander Decomposition
We study differentially private algorithms for graph cut sparsification, a fundamental problem in algorithms, privacy, and machine learning. While significant progress has been made, the best-known private and efficient cut sparsifiers on $n$-node graphs approximate each cut within $\widetilde{O}(n^{1.5})$ additive error and $1+γ$ multiplicative error for any $γ> 0$ [Gupta, Roth, Ullman TCC'12]. In contrast, "inefficient" algorithms, i.e., those requiring exponential time, can achieve an $\widetilde{O}(n)$ additive error and $1+γ$ multiplicative error [Eli{á}{š}, Kapralov, Kulkarni, Lee SODA'20]. In this work, we break the $n^{1.5}$ additive error barrier for private and efficient cut sparsification. We present an $(\varepsilon,δ)$-DP polynomial time algorithm that, given a non-negative weighted graph, outputs a private synthetic graph approximating all cuts with multiplicative error $1+γ$ and additive error $n^{1.25 + o(1)}$ (ignoring dependencies on $\varepsilon, δ, γ$). At the heart of our approach lies a private algorithm for expander decomposition, a popular and powerful technique in (non-private) graph algorithms.
Anders Aamand、Justin Y. Chen、Mina Dalirrooyfard、Slobodan Mitrović、Yuriy Nevmyvaka、Sandeep Silwal、Yinzhan Xu
计算技术、计算机技术
Anders Aamand,Justin Y. Chen,Mina Dalirrooyfard,Slobodan Mitrović,Yuriy Nevmyvaka,Sandeep Silwal,Yinzhan Xu.Breaking the $n^{1.5}$ Additive Error Barrier for Private and Efficient Graph Sparsification via Private Expander Decomposition[EB/OL].(2025-07-02)[2025-07-20].https://arxiv.org/abs/2507.01873.点此复制
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