Smoothed Analysis of Dynamic Graph Algorithms
Uri Meir, Ami Paz

TL;DR
This paper applies smoothed analysis to dynamic graph algorithms to understand when high worst-case running times are necessary, revealing that some problems remain hard under slight noise while others become easier.
Contribution
It extends lower bound results to smoothed models and introduces three models of smoothed inputs, analyzing their impact on algorithm complexity.
Findings
Partially adversarial inputs can still cause high running times.
Some problems become easier with minimal noise.
Hierarchy of smoothed input models with increasing complexity.
Abstract
Recent years have seen significant progress in the study of dynamic graph algorithms, and most notably, the introduction of strong lower bound techniques for them (e.g., Henzinger, Krinninger, Nanongkai and Saranurak, STOC 2015; Larsen and Yu, FOCS 2023). As worst-case analysis (adversarial inputs) may lead to the necessity of high running times, a natural question arises: in which cases are high running times really necessary, and in which cases these inputs merely manifest unique pathological cases? Early attempts to tackle this question were made by Nikoletseas, Reif, Spirakis and Yung (ICALP 1995) and by Alberts and Henzinger (Algorithmica 1998), who considered models with very little adversarial control over the inputs, and showed fast algorithms exist for them. The question was then overlooked for decades, until Henzinger, Lincoln and Saha (SODA 2022) recently addressed…
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