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Improved Robust Estimation for Erdős-Rényi Graphs: The Sparse Regime and Optimal Breakdown Point

Abstract

We study the problem of robustly estimating the edge density of Erdős-Rényi random graphs G(n,d/n)G(n, d^\circ/n) when an adversary can arbitrarily add or remove edges incident to an η\eta-fraction of the nodes. We develop the first polynomial-time algorithm for this problem that estimates dd^\circ up to an additive error O([log(n)/n+ηlog(1/η)]d+ηlog(1/η))O([\sqrt{\log(n) / n} + \eta\sqrt{\log(1/\eta)} ] \cdot \sqrt{d^\circ} + \eta \log(1/\eta)). Our error guarantee matches information-theoretic lower bounds up to factors of log(1/η)\log(1/\eta). Moreover, our estimator works for all dΩ(1)d^\circ \geq \Omega(1) and achieves optimal breakdown point η=1/2\eta = 1/2.Previous algorithms [AJK+22, CDHS24], including inefficient ones, incur significantly suboptimal errors. Furthermore, even admitting suboptimal error guarantees, only inefficient algorithms achieve optimal breakdown point. Our algorithm is based on the sum-of-squares (SoS) hierarchy. A key ingredient is to construct constant-degree SoS certificates for concentration of the number of edges incident to small sets in G(n,d/n)G(n, d^\circ/n). Crucially, we show that these certificates also exist in the sparse regime, when d=o(logn)d^\circ = o(\log n), a regime in which the performance of previous algorithms was significantly suboptimal.

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@article{chen2025_2503.03923,
  title={ Improved Robust Estimation for Erdős-Rényi Graphs: The Sparse Regime and Optimal Breakdown Point },
  author={ Hongjie Chen and Jingqiu Ding and Yiding Hua and Stefan Tiegel },
  journal={arXiv preprint arXiv:2503.03923},
  year={ 2025 }
}
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