Improving TSP tours using dynamic programming over tree decomposition
March 16, 2017 Β· Declared Dead Β· π Embedded Systems and Applications
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Authors
Marek Cygan, Lukasz Kowalik, Arkadiusz Socala
arXiv ID
1703.05559
Category
cs.DS: Data Structures & Algorithms
Citations
14
Venue
Embedded Systems and Applications
Last Checked
3 months ago
Abstract
Given a traveling salesman problem (TSP) tour $H$ in graph $G$ a $k$-move is an operation which removes $k$ edges from $H$, and adds $k$ edges of $G$ so that a new tour $H'$ is formed. The popular $k$-OPT heuristics for TSP finds a local optimum by starting from an arbitrary tour $H$ and then improving it by a sequence of $k$-moves. Until 2016, the only known algorithm to find an improving $k$-move for a given tour was the naive solution in time $O(n^k)$. At ICALP'16 de Berg, Buchin, Jansen and Woeginger showed an $O(n^{\lfloor 2/3k \rfloor+1})$-time algorithm. We show an algorithm which runs in $O(n^{(1/4+Ξ΅_k)k})$ time, where $\lim Ξ΅_k = 0$. We are able to show that it improves over the state of the art for every $k=5,\ldots,10$. For the most practically relevant case $k=5$ we provide a slightly refined algorithm running in $O(n^{3.4})$ time. We also show that for the $k=4$ case, improving over the $O(n^3)$-time algorithm of de Berg et al. would be a major breakthrough: an $O(n^{3-Ξ΅})$-time algorithm for any $Ξ΅>0$ would imply an $O(n^{3-Ξ΄})$-time algorithm for the ALL PAIRS SHORTEST PATHS problem, for some $Ξ΄>0$.
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