High-precision Estimation of Random Walks in Small Space
AmirMahdi Ahmadinejad, Jonathan Kelner, Jack Murtagh, John Peebles,, Aaron Sidford, and Salil Vadhan

TL;DR
This paper presents a deterministic, space-efficient algorithm for estimating random walk probabilities on undirected and Eulerian directed graphs with high precision, improving previous randomized and deterministic methods.
Contribution
It introduces new reductions, spectral approximation notions, and a deterministic $ ilde{O}( ext{log} N)$-space algorithm for inverting Eulerian Laplacian matrices, advancing graph random walk estimation techniques.
Findings
Deterministic $ ilde{O}( ext{log} N)$-space algorithm for Eulerian Laplacian inversion.
Improved space complexity for random walk probability estimation.
New spectral approximation framework for Eulerian graphs.
Abstract
We provide a deterministic -space algorithm for estimating random walk probabilities on undirected graphs, and more generally Eulerian directed graphs, to within inverse polynomial additive error () where is the length of the input. Previously, this problem was known to be solvable by a randomized algorithm using space (following Aleliunas et al., FOCS 79) and by a deterministic algorithm using space (Saks and Zhou, FOCS 95 and JCSS 99), both of which held for arbitrary directed graphs but had not been improved even for undirected graphs. We also give improvements on the space complexity of both of these previous algorithms for non-Eulerian directed graphs when the error is negligible (), generalizing what Hoza and Zuckerman (FOCS 18) recently showed for the special case of…
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