Probabilistic Analysis of Optimization Problems on Generalized Random Shortest Path Metrics

Date
Friday 29 Mar 2019, 12:00 - 13:00
Type
Seminar
Spoken Language
English
Room
EB-12
Location
Campus Woudestein
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Stefan Klootwijk (University of Twente)

Simple heuristics often show a remarkable performance in practice for optimization problems.

Worst-case analysis often falls short of explaining this performance. Because of this, “beyond worst-case analysis” of algorithms has recently gained a lot of attention, including probabilistic analysis of algorithms. The instances of many optimization problems are essentially a discrete metric space. Probabilistic analysis for such metric optimization problems has nevertheless mostly been conducted on instances drawn from Euclidean space, which provides a structure that is usually heavily exploited in the analysis. However, most instances from practice are not Euclidean. Little work has been done on metric instances drawn from other, more realistic, distributions. Some initial results have been obtained by Bringmann et al. (Algorithmica, 2013), who have used random shortest path metrics on complete graphs to analyze heuristics.

The goal of this work is to generalize these findings to non-complete graphs, especially Erdős-Rényi random graphs. A random shortest path metric is constructed by drawing independent random edge weights for each edge in the graph and setting the distance between every pair of vertices to the length of a shortest path between them with respect to the drawn weights. For such instances, we prove that the greedy heuristic for the minimum distance maximum matching problem, the nearest neighbor and insertion heuristics for the traveling salesman problem, and a trivial heuristic for the k median problem all achieve a constant expected approximation ratio. Additionally, we show a polynomial upper bound for the expected number of iterations of the 2-opt heuristic for the traveling salesman problem.

Registration

For registration please send an email to: Krzysztof Postek, postek@ese.eur.nl 

Registration is required for availability of lunch.

  • Stefan Klootwijk obtained his Bachelor and Master degree in Applied Mathematics at the University of Twente. Currently he is doing a PhD within the 'Mathematics of Operations Research' (MOR) group at the same university, under supervision of Bodo Manthey. The working title for his project is 'Framework for Random Metric Spaces' (FRaMeS).

More information

Information: Krzysztof Postek, postek@ese.eur.nl

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