• Documents
  • Authors
  • Tables
  • Log in
  • Sign up
  • MetaCart
  • DMCA
  • Donate

CiteSeerX logo

Advanced Search Include Citations
Advanced Search Include Citations

DMCA

Polynomial time approximation schemes for Euclidean traveling salesman and other geometric problems (1998)

Cached

  • Download as a PDF

Download Links

  • [www-sop.inria.fr]
  • [www.cit.gu.edu.au]
  • [www.cc.gatech.edu]
  • [www.cc.gatech.edu]
  • [www.cc.gatech.edu]
  • [www.cs.princeton.edu]
  • [ftp.cs.princeton.edu]
  • [ftp.cs.princeton.edu]
  • [web.cs.du.edu]
  • [www.cs.princeton.edu]
  • [graphics.stanford.edu]

  • Other Repositories/Bibliography

  • DBLP
  • Save to List
  • Add to Collection
  • Correct Errors
  • Monitor Changes
by Sanjeev Arora
Venue:Journal of the ACM
Citations:397 - 2 self
  • Summary
  • Citations
  • Active Bibliography
  • Co-citation
  • Clustered Documents
  • Version History

BibTeX

@ARTICLE{Arora98polynomialtime,
    author = {Sanjeev Arora},
    title = {Polynomial time approximation schemes for Euclidean traveling salesman and other geometric problems},
    journal = {Journal of the ACM},
    year = {1998}
}

Share

Facebook Twitter Reddit Bibsonomy

OpenURL

 

Abstract

Abstract. We present a polynomial time approximation scheme for Euclidean TSP in fixed dimensions. For every fixed c Ͼ 1 and given any n nodes in 2 , a randomized version of the scheme finds a (1 ϩ 1/c)-approximation to the optimum traveling salesman tour in O(n(log n) O(c) ) time. When the nodes are in d , the running time increases to O(n(log n) ). For every fixed c, d the running time is n ⅐ poly(log n), that is nearly linear in n. The algorithm can be derandomized, but this increases the running time by a factor O(n d ). The previous best approximation algorithm for the problem (due to Christofides) achieves a 3/2-approximation in polynomial time. We also give similar approximation schemes for some other NP-hard Euclidean problems: Minimum Steiner Tree, k-TSP, and k-MST. (The running times of the algorithm for k-TSP and k-MST involve an additional multiplicative factor k.) The previous best approximation algorithms for all these problems achieved a constant-factor approximation. We also give efficient approximation schemes for Euclidean Min-Cost Matching, a problem that can be solved exactly in polynomial time. All our algorithms also work, with almost no modification, when distance is measured using any geometric norm (such as ᐉ p for p Ն 1 or other Minkowski norms). They also have simple parallel (i.e., NC) implementations.

Powered by: Apache Solr
  • About CiteSeerX
  • Submit and Index Documents
  • Privacy Policy
  • Help
  • Data
  • Source
  • Contact Us

Developed at and hosted by The College of Information Sciences and Technology

© 2007-2019 The Pennsylvania State University