Fully Dynamic Spectral Sparsification for Directed Hypergraphs (2512.21671v1)
Abstract: There has been a surge of interest in spectral hypergraph sparsification, a natural generalization of spectral sparsification for graphs. In this paper, we present a simple fully dynamic algorithm for maintaining spectral hypergraph sparsifiers of \textit{directed} hypergraphs. Our algorithm achieves a near-optimal size of $O(n2 / \varepsilon 2 \log 7 m)$ and amortized update time of $O(r2 \log 3 m)$, where $n$ is the number of vertices, and $m$ and $r$ respectively upper bound the number of hyperedges and the rank of the hypergraph at any time. We also extend our approach to the parallel batch-dynamic setting, where a batch of any $k$ hyperedge insertions or deletions can be processed with $O(kr2 \log 3 m)$ amortized work and $O(\log 2 m)$ depth. This constitutes the first spectral-based sparsification algorithm in this setting.
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