Improved Smoothed Analysis of 2-Opt for the Euclidean TSP
The 2-opt heuristic is a simple local search heuristic for the Travelling Salesperson Problem (TSP). Although it usually performs well in practice, its worst-case running time is poor. Attempts to reconcile this difference have used smoothed analysis, in which adversarial instances are perturbed pro...
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Zusammenfassung: | The 2-opt heuristic is a simple local search heuristic for the Travelling
Salesperson Problem (TSP). Although it usually performs well in practice, its
worst-case running time is poor. Attempts to reconcile this difference have
used smoothed analysis, in which adversarial instances are perturbed
probabilistically. We are interested in the classical model of smoothed
analysis for the Euclidean TSP, in which the perturbations are Gaussian. This
model was previously used by Manthey \& Veenstra, who obtained smoothed
complexity bounds polynomial in $n$, the dimension $d$, and the perturbation
strength $\sigma^{-1}$. However, their analysis only works for $d \geq 4$. The
only previous analysis for $d \leq 3$ was performed by Englert, R\"oglin \&
V\"ocking, who used a different perturbation model which can be translated to
Gaussian perturbations. Their model yields bounds polynomial in $n$ and
$\sigma^{-d}$, and super-exponential in $d$. As no direct analysis existed for
Gaussian perturbations that yields polynomial bounds for all $d$, we perform
this missing analysis. Along the way, we improve all existing smoothed
complexity bounds for Euclidean 2-opt. |
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DOI: | 10.48550/arxiv.2211.16908 |