Improved Algorithms for Effective Resistance Computation on Graphs

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Abstract

Effective Resistance (ER) is a fundamental tool in various graph learning tasks. In this paper, we address the problem of efficiently approximating ER on a graph G = (V, E) with n vertices and m edges. First, we focus on local online-computation algorithms for ER approximation, aiming to improve the dependency on the approximation error parameter ϵ. Specifically, for a given vertex pair (s, t), we propose a local algorithm with a time complexity of Õ (√ d/ϵ) to compute an ϵ-approximation of the s, t-ER value for expander graphs, where d = min{ds, dt}. This improves upon the previous state-of-the-art, including an Õ(1/ϵ2) time algorithm based on random walk sampling by Andoni et al. (ITCS’19) and Peng et al. (KDD’21). Our method achieves this improvement by combining deterministic search with random walk sampling to reduce variance. Second, we establish a lower bound for ER approximation on expander graphs. We prove that for any ϵ ∈ (0, 1), there exist an expander graph and a vertex pair (s, t) such that any local algorithm requires at least Ω(1/ϵ) time to compute the ϵ-approximation of the s, t-ER value. Finally, we extend our techniques to index-based algorithms for ER computation. We propose an algorithm with Õ(min{m + n/ϵ1.5, √ nm/ϵ}) processing time, Õ(n/ϵ) space complexity and O(1) query complexity, which returns an ϵ-approximation of the s, t-ER value for any s, t ∈ V for expander graphs. Our approach improves upon the state-of-the-art Õ(m/ϵ) processing time by Dwaraknath et al. (NeurIPS’24) and the Õ(m + n/ϵ2) processing time by Li and Sachdeva (SODA’23).

Original languageEnglish
JournalProceedings of Machine Learning Research
Volume291
Publication statusPublished - 2025
Event38th Annual Conference on Learning Theory, COLT 2025 - Lyon, France
Duration: 30 Jun 20254 Jul 2025

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