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Metric dimension (graph theory)

In graph theory, the metric dimension of a graph G is the minimum cardinality of a subset S of vertices such that all other vertices are uniquely determined by their distances to the vertices in S. Finding the metric dimension of a graph is an NP-hard problem; the decision version, determining whether the metric dimension is less than a given value, is NP-complete.

Detailed definition edit

For an ordered subset   of vertices and a vertex v in a connected graph G, the representation of v with respect to W is the ordered k-tuple  , where d(x,y) represents the distance between the vertices x and y. The set W is a resolving set (or locating set) for G if every two vertices of G have distinct representations. The metric dimension of G is the minimum cardinality of a resolving set for G. A resolving set containing a minimum number of vertices is called a basis (or reference set) for G. Resolving sets for graphs were introduced independently by Slater (1975) and Harary & Melter (1976), while the concept of a resolving set and that of metric dimension were defined much earlier in the more general context of metric spaces by Blumenthal in his monograph Theory and Applications of Distance Geometry. Graphs are special examples of metric spaces with their intrinsic path metric.

Trees edit

If a tree is a path, its metric dimension is one. Otherwise, let L denote the set of leaves, degree-one vertices in the tree. Let K be the set of vertices that have degree greater than two, and that are connected by paths of degree-two vertices to one or more leaves. Then the metric dimension is |L| − |K|. A basis of this cardinality may be formed by removing from L one of the leaves associated with each vertex in K.[1] The same algorithm is valid for the line graph of the tree, and thus any tree and its line graph have the same metric dimension.[2]

Properties edit

In Chartrand et al. (2000), it is proved that:

  • The metric dimension of a graph G is 1 if and only if G is a path.
  • The metric dimension of an n-vertex graph is n − 1 if and only if it is a complete graph.
  • The metric dimension of an n-vertex graph is n − 2 if and only if the graph is a complete bipartite graph Ks, t, a split graph  , or  .

Relations between the order, the metric dimension and the diameter edit

Khuller, Raghavachari & Rosenfeld (1996) prove the inequality   for any n-vertex graph with diameter   and metric dimension  . This bounds follows from the fact that each vertex that is not in the resolving set is uniquely determined by a distance vector of length   with each entry being an integer between 1 and   (there are precisely   such vectors). However, the bound is only achieved for   or  ; the more precise bound

 
is proved by Hernando et al. (2010).

For specific graph classes, smaller bounds can hold. For example, Beaudou et al. (2018) proved that   for trees (the bound being tight for even values of D), and a bound of the form   for outerplanar graphs. The same authors proved that   for graphs with no complete graph of order t as a minor and also gave bounds for chordal graphs and graphs of bounded treewidth. The authors Foucaud et al. (2017a) proved bounds of the form   for interval graphs and permutation graphs, and bounds of the form   for unit interval graphs, bipartite permutation graphs and cographs.

Computational complexity edit

Decision complexity edit

Deciding whether the metric dimension of a graph is at most a given integer is NP-complete.[3] It remains NP-complete for bounded-degree planar graphs,[4] split graphs, bipartite graphs and their complements, line graphs of bipartite graphs,[5] unit disk graphs,[6] interval graphs of diameter 2 and permutation graphs of diameter 2,[7] and graphs of bounded treewidth.[8]

For any fixed constant k, the graphs of metric dimension at most k can be recognized in polynomial time, by testing all possible k-tuples of vertices, but this algorithm is not fixed-parameter tractable (for the natural parameter k, the solution size). Answering a question posed by Lokshtanov (2010), Hartung & Nichterlein (2013) show that the metric dimension decision problem is complete for the parameterized complexity class W[2], implying that a time bound of the form nO(k) as achieved by this naive algorithm is likely optimal and that a fixed-parameter tractable algorithm (for the parameterization by k) is unlikely to exist. Nevertheless, the problem becomes fixed-parameter tractable when restricted to interval graphs,[7] and more generally to graphs of bounded tree-length,[9] such as chordal graphs, permutation graphs or asteroidal-triple-free graphs.

Deciding whether the metric dimension of a tree is at most a given integer can be done in linear time[10] Other linear-time algorithms exist for cographs,[5] chain graphs,[11] and cactus block graphs[12] (a class including both cactus graphs and block graphs). The problem may be solved in polynomial time on outerplanar graphs.[4] It may also be solved in polynomial time for graphs of bounded cyclomatic number,[5] but this algorithm is again not fixed-parameter tractable (for the parameter "cyclomatic number") because the exponent in the polynomial depends on the cyclomatic number. There exist fixed-parameter tractable algorithms to solve the metric dimension problem for the parameters "vertex cover",[13] "max leaf number",[14] and "modular width".[9] Graphs with bounded cyclomatic number, vertex cover number or max leaf number all have bounded treewidth, however it is an open problem to determine the complexity of the metric dimension problem even on graphs of treewidth 2, that is, series–parallel graphs.[9]

Approximation complexity edit

The metric dimension of an arbitrary n-vertex graph may be approximated in polynomial time to within an approximation ratio of   by expressing it as a set cover problem, a problem of covering all of a given collection of elements by as few sets as possible in a given family of sets. [15] In the set cover problem formed from a metric dimension problem, the elements to be covered are the   pairs of vertices to be distinguished, and the sets that can cover them are the sets of pairs that can be distinguished by a single chosen vertex. The approximation bound then follows by applying standard approximation algorithms for set cover. An alternative greedy algorithm that chooses vertices according to the difference in entropy between the equivalence classes of distance vectors before and after the choice achieves an even better approximation ratio,  .[16] This approximation ratio is close to best possible, as under standard complexity-theoretic assumptions a ratio of   cannot be achieved in polynomial time for any  .[16] The latter hardness of approximation still holds for instances restricted to subcubic graphs,[13] and even to bipartite subcubic graphs.[17]

References edit

Notes edit

Bibliography edit

  • Beaudou, Laurent; Dankelmann, Peter; Foucaud, Florent; Henning, Michael A.; Mary, Arnaud; Parreau, Aline (2018), "Bounding the order of a graph using its diameter and metric dimension: a study through tree decompositions and VC dimension", SIAM Journal on Discrete Mathematics, 32 (2): 902–918, arXiv:1610.01475, doi:10.1137/16M1097833, S2CID 51882750
  • Belmonte, R.; Fomin, F. V.; Golovach, P. A.; Ramanujan, M. S. (2015), "Metric dimension of bounded width graphs", in Italiano, G. F.; Pighizzini, G.; Sannella, D. T. (eds.), Mathematical Foundations of Computer Science 2015 – MFCS 2015: 40th International Symposium, Milan, Italy, August 24-28, 2015, Proceedings, Lecture Notes in Computer Science, vol. 9235, Springer, pp. 115–126, doi:10.1007/978-3-662-48054-0_10, ISBN 978-3-662-48053-3.
  • Blumenthal, L.M. (1953), Theory and Applications of Distance Geometry, Clarendon, Oxford.
  • Bonnet, E.; Purohit, N. (2019), "Metric Dimension Parameterized by Treewidth", in Jansen, B. M. P.; Telle, J. A. (eds.), Parameterized and Exact Computation 2019 – IPEC 2019: 14th International Symposium, Proceedings, Leibniz International Proceedings in Informatics (LIPIcs), vol. 148, Schloss Dagstuhl--Leibniz-Zentrum fuer Informatik, pp. 5:1–5:15, arXiv:1907.08093, doi:10.4230/LIPIcs.IPEC.2019.5.
  • Buczkowski, P.; Chartrand, G.; Poisson, C.; Zhang, P. (2003), "On k-dimensional graphs and their bases", Periodica Mathematica Hungarica, 46 (1): 9–15, doi:10.1023/A:1025745406160, MR 1975342, S2CID 33390310.
  • Chartrand, G.; Eroh, L.; Johnson, M. A.; Oellermann, O. R. (2000), "Resolvability in graphs and the metric dimension of a graph", Discrete Applied Mathematics, 105 (1–3): 99–113, doi:10.1016/S0166-218X(00)00198-0, hdl:10338.dmlcz/127843, MR 1780464.
  • Díaz, J.; Pottonen, O.; Serna, M. J.; van Leeuwen, E. J. (2012), "On the complexity of metric dimension" (PDF), in Epstein, Leah; Ferragina, Paolo (eds.), Algorithms – ESA 2012: 20th Annual European Symposium, Ljubljana, Slovenia, September 10-12, 2012, Proceedings, Lecture Notes in Computer Science, vol. 7501, Springer, pp. 419–430, arXiv:1107.2256, doi:10.1007/978-3-642-33090-2_37, ISBN 978-3-642-33089-6.
  • Eppstein, David (2015), "Metric dimension parameterized by max leaf number", Journal of Graph Algorithms and Applications, 19 (1): 313–323, arXiv:1506.01749, doi:10.7155/jgaa.00360, S2CID 1318601.
  • Epstein, Leah; Levin, Asaf; Woeginger, Gerhard J. (2012), "The (weighted) metric dimension of graphs: hard and easy cases", in Golumbic, Martin Charles; Stern, Michal; Levy, Avivit; et al. (eds.), Graph-Theoretic Concepts in Computer Science: 38th International Workshop, WG 2012, Jerusalem, Israel, June 26-28, 2012, Revised Selected Papers, Lecture Notes in Computer Science, vol. 7551, pp. 114–125, doi:10.1007/978-3-642-34611-8_14, ISBN 978-3-642-34610-1.
  • Feng, Min; Xu, Min; Wang, Kaishun (2013), "On the metric dimension of line graphs", Discrete Applied Mathematics, 161 (6): 802–805, arXiv:1107.4140, doi:10.1016/j.dam.2012.10.018, S2CID 36010185.
  • Fernau, Henning; Heggernes, Pinar; van 't Hof, Pim; Meister, Daniel; Saei, Reza (2015), "Computing the metric dimension for chain graphs", Information Processing Letters, 115 (9): 671–676, doi:10.1016/j.ipl.2015.04.006.
  • Foucaud, Florent; Mertzios, George B.; Naserasr, Reza; Parreau, Aline; Valicov, Petru (2017a), "Identification, location-domination and metric dimension on interval and permutation graphs. I. Bounds", Theoretical Computer Science, 68: 43–58, arXiv:1507.08164, doi:10.1016/j.tcs.2017.01.006, S2CID 25244200
  • Foucaud, Florent; Mertzios, George B.; Naserasr, Reza; Parreau, Aline; Valicov, Petru (2017b), "Identification, location-domination and metric dimension on interval and permutation graphs. II. Algorithms and complexity", Algorithmica, 78 (3): 914–944, arXiv:1405.2424, doi:10.1007/s00453-016-0184-1, S2CID 1520161.
  • Garey, M. R.; Johnson, D. S. (1979), Computers and Intractability: A Guide to the Theory of NP-Completeness, W.H. Freeman, ISBN 0-7167-1045-5 A1.5: GT61, p. 204.
  • Harary, F.; Melter, R. A. (1976), "On the metric dimension of a graph", Ars Combinatoria, 2: 191–195, MR 0457289.
  • Hartung, Sepp (2014), Exploring parameter spaces in coping with computational intractability, PhD thesis, Technische Universität Berlin, retrieved 2015-09-15.
  • Hartung, Sepp; Nichterlein, André (2013), "On the parameterized and approximation hardness of metric dimension", 2013 IEEE Conference on Computational Complexity (CCC), Stanford, CA, USA, June 5-7, 2013, Proceedings, IEEE, pp. 266–276, arXiv:1211.1636, doi:10.1109/CCC.2013.36, S2CID 684505.
  • Hauptmann, Mathias; Schmied, Richard; Viehmann, Claus (2012), "Approximation complexity of metric dimension problem", Journal of Discrete Algorithms, 14: 214–222, doi:10.1016/j.jda.2011.12.010, MR 2922072.
  • Hernando, Carmen; Mora, Mercè; Pelayo, Ignacio M.; Seara, Carlos; Wood, David R. (2010), "Extremal graph theory for metric dimension and diameter", Electronic Journal of Combinatorics, 17: #R30, doi:10.37236/302, hdl:2117/8261.
  • Hoffmann, Stefan; Elterman, Alina; Wanke, Egon (2016), "A linear time algorithm for metric dimension of cactus block graphs", Theoretical Computer Science, 630: 43–62, doi:10.1016/j.tcs.2016.03.024
  • Hoffmann, Stefan; Wanke, Egon (2013), "Metric Dimension for Gabriel Unit Disk Graphs Is NP-Complete", in Bar-Noy, Amotz; Halldórsson, Magnús M. (eds.), Algorithms for Sensor Systems: 8th International Symposium on Algorithms for Sensor Systems, Wireless Ad Hoc Networks and Autonomous Mobile Entities, ALGOSENSORS 2012, Ljubljana, Slovenia, September 13-14, 2012, Revised Selected Papers, Lecture Notes in Computer Science, vol. 7718, Springer, pp. 90–92, arXiv:1306.2187, doi:10.1007/978-3-642-36092-3_10, ISBN 978-3-642-36091-6, S2CID 9740623.
  • Khuller, S.; Raghavachari, B.; Rosenfeld, A. (1996), "Landmarks in graphs", Discrete Applied Mathematics, 70 (3): 217–229, doi:10.1016/0166-218x(95)00106-2, hdl:10338.dmlcz/140702.
  • Li, Shaohua; Pilipczuk, Marcin (July 2022), "Hardness of metric dimension in graphs of constant treewidth", Algorithmica, 84 (11): 3110–3155, arXiv:2102.09791, doi:10.1007/s00453-022-01005-y, S2CID 231979414
  • Lokshtanov, Daniel (2010), "Open problems – Parameterized complexity and approximation algorithms: Metric Dimension", in Demaine, Erik D.; Hajiaghayi, MohammadTaghi; Marx, Dániel (eds.), Parameterized Complexity and Approximation Algorithms, Dagstuhl Seminar Proceedings, Dagstuhl, Germany: Schloss Dagstuhl – Leibniz-Zentrum für Informatik.
  • Slater, P. J. (1975), "Leaves of trees", Proc. 6th Southeastern Conference on Combinatorics, Graph Theory, and Computing (Florida Atlantic Univ., Boca Raton, Fla., 1975), Congressus Numerantium, vol. 14, Winnipeg: Utilitas Math., pp. 549–559, MR 0422062.
  • Slater, P. J. (1988), "Dominating and reference sets in a graph", Journal of Mathematical and Physical Sciences, 22 (4): 445–455, MR 0966610.

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In graph theory the metric dimension of a graph G is the minimum cardinality of a subset S of vertices such that all other vertices are uniquely determined by their distances to the vertices in S Finding the metric dimension of a graph is an NP hard problem the decision version determining whether the metric dimension is less than a given value is NP complete Contents 1 Detailed definition 2 Trees 3 Properties 3 1 Relations between the order the metric dimension and the diameter 4 Computational complexity 4 1 Decision complexity 4 2 Approximation complexity 5 References 5 1 Notes 5 2 BibliographyDetailed definition editFor an ordered subset W w 1 w 2 w k displaystyle W w 1 w 2 dots w k nbsp of vertices and a vertex v in a connected graph G the representation of v with respect to W is the ordered k tuple r v W d v w 1 d v w 2 d v w k displaystyle r v W d v w 1 d v w 2 dots d v w k nbsp where d x y represents the distance between the vertices x and y The set W is a resolving set or locating set for G if every two vertices of G have distinct representations The metric dimension of G is the minimum cardinality of a resolving set for G A resolving set containing a minimum number of vertices is called a basis or reference set for G Resolving sets for graphs were introduced independently by Slater 1975 and Harary amp Melter 1976 while the concept of a resolving set and that of metric dimension were defined much earlier in the more general context of metric spaces by Blumenthal in his monograph Theory and Applications of Distance Geometry Graphs are special examples of metric spaces with their intrinsic path metric Trees editIf a tree is a path its metric dimension is one Otherwise let L denote the set of leaves degree one vertices in the tree Let K be the set of vertices that have degree greater than two and that are connected by paths of degree two vertices to one or more leaves Then the metric dimension is L K A basis of this cardinality may be formed by removing from L one of the leaves associated with each vertex in K 1 The same algorithm is valid for the line graph of the tree and thus any tree and its line graph have the same metric dimension 2 Properties editIn Chartrand et al 2000 it is proved that The metric dimension of a graph G is 1 if and only if G is a path The metric dimension of an n vertex graph is n 1 if and only if it is a complete graph The metric dimension of an n vertex graph is n 2 if and only if the graph is a complete bipartite graph Ks t a split graph K s K t s 1 t 2 displaystyle K s overline K t s geq 1 t geq 2 nbsp or K s K 1 K t s t 1 displaystyle K s K 1 cup K t s t geq 1 nbsp Relations between the order the metric dimension and the diameter edit Khuller Raghavachari amp Rosenfeld 1996 prove the inequality n D b b displaystyle n leq D beta beta nbsp for any n vertex graph with diameter D displaystyle D nbsp and metric dimension b displaystyle beta nbsp This bounds follows from the fact that each vertex that is not in the resolving set is uniquely determined by a distance vector of length b displaystyle beta nbsp with each entry being an integer between 1 and D displaystyle D nbsp there are precisely D b displaystyle D beta nbsp such vectors However the bound is only achieved for D 3 displaystyle D leq 3 nbsp or b 1 displaystyle beta 1 nbsp the more precise boundn 2 D 3 1 b b i 1 D 3 2 i 1 b 1 displaystyle n leq left lfloor 2D 3 rfloor 1 right beta beta sum i 1 lceil D 3 rceil 2i 1 beta 1 nbsp is proved by Hernando et al 2010 For specific graph classes smaller bounds can hold For example Beaudou et al 2018 proved that n b D 4 D 2 8 displaystyle n leq beta D 4 D 2 8 nbsp for trees the bound being tight for even values of D and a bound of the form n O D 2 b displaystyle n O D 2 beta nbsp for outerplanar graphs The same authors proved that n D b 1 t 1 displaystyle n leq D beta 1 t 1 nbsp for graphs with no complete graph of order t as a minor and also gave bounds for chordal graphs and graphs of bounded treewidth The authors Foucaud et al 2017a proved bounds of the form n O D b 2 displaystyle n O D beta 2 nbsp for interval graphs and permutation graphs and bounds of the form n O D b displaystyle n O D beta nbsp for unit interval graphs bipartite permutation graphs and cographs Computational complexity editDecision complexity edit Deciding whether the metric dimension of a graph is at most a given integer is NP complete 3 It remains NP complete for bounded degree planar graphs 4 split graphs bipartite graphs and their complements line graphs of bipartite graphs 5 unit disk graphs 6 interval graphs of diameter 2 and permutation graphs of diameter 2 7 and graphs of bounded treewidth 8 For any fixed constant k the graphs of metric dimension at most k can be recognized in polynomial time by testing all possible k tuples of vertices but this algorithm is not fixed parameter tractable for the natural parameter k the solution size Answering a question posed by Lokshtanov 2010 Hartung amp Nichterlein 2013 show that the metric dimension decision problem is complete for the parameterized complexity class W 2 implying that a time bound of the form nO k as achieved by this naive algorithm is likely optimal and that a fixed parameter tractable algorithm for the parameterization by k is unlikely to exist Nevertheless the problem becomes fixed parameter tractable when restricted to interval graphs 7 and more generally to graphs of bounded tree length 9 such as chordal graphs permutation graphs or asteroidal triple free graphs Deciding whether the metric dimension of a tree is at most a given integer can be done in linear time 10 Other linear time algorithms exist for cographs 5 chain graphs 11 and cactus block graphs 12 a class including both cactus graphs and block graphs The problem may be solved in polynomial time on outerplanar graphs 4 It may also be solved in polynomial time for graphs of bounded cyclomatic number 5 but this algorithm is again not fixed parameter tractable for the parameter cyclomatic number because the exponent in the polynomial depends on the cyclomatic number There exist fixed parameter tractable algorithms to solve the metric dimension problem for the parameters vertex cover 13 max leaf number 14 and modular width 9 Graphs with bounded cyclomatic number vertex cover number or max leaf number all have bounded treewidth however it is an open problem to determine the complexity of the metric dimension problem even on graphs of treewidth 2 that is series parallel graphs 9 Approximation complexity edit The metric dimension of an arbitrary n vertex graph may be approximated in polynomial time to within an approximation ratio of 2 log n displaystyle 2 log n nbsp by expressing it as a set cover problem a problem of covering all of a given collection of elements by as few sets as possible in a given family of sets 15 In the set cover problem formed from a metric dimension problem the elements to be covered are the n 2 displaystyle tbinom n 2 nbsp pairs of vertices to be distinguished and the sets that can cover them are the sets of pairs that can be distinguished by a single chosen vertex The approximation bound then follows by applying standard approximation algorithms for set cover An alternative greedy algorithm that chooses vertices according to the difference in entropy between the equivalence classes of distance vectors before and after the choice achieves an even better approximation ratio log n log log 2 n 1 displaystyle log n log log 2 n 1 nbsp 16 This approximation ratio is close to best possible as under standard complexity theoretic assumptions a ratio of 1 ϵ log n displaystyle 1 epsilon log n nbsp cannot be achieved in polynomial time for any ϵ gt 0 displaystyle epsilon gt 0 nbsp 16 The latter hardness of approximation still holds for instances restricted to subcubic graphs 13 and even to bipartite subcubic graphs 17 References editNotes edit Slater 1975 Harary amp Melter 1976 Khuller Raghavachari amp Rosenfeld 1996 Note Slater s nonstandard definition of the leaves of a tree Feng Xu amp Wang 2013 Garey amp Johnson 1979 a b Diaz et al 2012 a b c Epstein Levin amp Woeginger 2012 Hoffmann amp Wanke 2012 sfn error no target CITEREFHoffmannWanke2012 help a b Foucaud et al 2017b Li amp Pilipczuk 2022 a b c Belmonte et al 2015 Slater 1975 Harary amp Melter 1976 Fernau et al 2015 Hoffmann Elterman amp Wanke 2016 a b Hartung amp Nichterlein 2013 Eppstein 2015 Khuller Raghavachari amp Rosenfeld 1996 a b Hauptmann Schmied amp Viehmann 2012 Hartung 2014 Bibliography edit Beaudou Laurent Dankelmann Peter Foucaud Florent Henning Michael A Mary Arnaud Parreau Aline 2018 Bounding the order of a graph using its diameter and metric dimension a study through tree decompositions and VC dimension SIAM Journal on Discrete Mathematics 32 2 902 918 arXiv 1610 01475 doi 10 1137 16M1097833 S2CID 51882750 Belmonte R Fomin F V Golovach P A Ramanujan M S 2015 Metric dimension of bounded width graphs in Italiano G F Pighizzini G Sannella D T eds Mathematical Foundations of Computer Science 2015 MFCS 2015 40th International Symposium Milan Italy August 24 28 2015 Proceedings Lecture Notes in Computer Science vol 9235 Springer pp 115 126 doi 10 1007 978 3 662 48054 0 10 ISBN 978 3 662 48053 3 Blumenthal L M 1953 Theory and Applications of Distance Geometry Clarendon Oxford Bonnet E Purohit N 2019 Metric Dimension Parameterized by Treewidth in Jansen B M P Telle J A eds Parameterized and Exact Computation 2019 IPEC 2019 14th International Symposium Proceedings Leibniz International Proceedings in Informatics LIPIcs vol 148 Schloss Dagstuhl Leibniz Zentrum fuer Informatik pp 5 1 5 15 arXiv 1907 08093 doi 10 4230 LIPIcs IPEC 2019 5 Buczkowski P Chartrand G Poisson C Zhang P 2003 On k dimensional graphs and their bases Periodica Mathematica Hungarica 46 1 9 15 doi 10 1023 A 1025745406160 MR 1975342 S2CID 33390310 Chartrand G Eroh L Johnson M A Oellermann O R 2000 Resolvability in graphs and the metric dimension of a graph Discrete Applied Mathematics 105 1 3 99 113 doi 10 1016 S0166 218X 00 00198 0 hdl 10338 dmlcz 127843 MR 1780464 Diaz J Pottonen O Serna M J van Leeuwen E J 2012 On the complexity of metric dimension PDF in Epstein Leah Ferragina Paolo eds Algorithms ESA 2012 20th Annual European Symposium Ljubljana Slovenia September 10 12 2012 Proceedings Lecture Notes in Computer Science vol 7501 Springer pp 419 430 arXiv 1107 2256 doi 10 1007 978 3 642 33090 2 37 ISBN 978 3 642 33089 6 Eppstein David 2015 Metric dimension parameterized by max leaf number Journal of Graph Algorithms and Applications 19 1 313 323 arXiv 1506 01749 doi 10 7155 jgaa 00360 S2CID 1318601 Epstein Leah Levin Asaf Woeginger Gerhard J 2012 The weighted metric dimension of graphs hard and easy cases in Golumbic Martin Charles Stern Michal Levy Avivit et al eds Graph Theoretic Concepts in Computer Science 38th International Workshop WG 2012 Jerusalem Israel June 26 28 2012 Revised Selected Papers Lecture Notes in Computer Science vol 7551 pp 114 125 doi 10 1007 978 3 642 34611 8 14 ISBN 978 3 642 34610 1 Feng Min Xu Min Wang Kaishun 2013 On the metric dimension of line graphs Discrete Applied Mathematics 161 6 802 805 arXiv 1107 4140 doi 10 1016 j dam 2012 10 018 S2CID 36010185 Fernau Henning Heggernes Pinar van t Hof Pim Meister Daniel Saei Reza 2015 Computing the metric dimension for chain graphs Information Processing Letters 115 9 671 676 doi 10 1016 j ipl 2015 04 006 Foucaud Florent Mertzios George B Naserasr Reza Parreau Aline Valicov Petru 2017a Identification location domination and metric dimension on interval and permutation graphs I Bounds Theoretical Computer Science 68 43 58 arXiv 1507 08164 doi 10 1016 j tcs 2017 01 006 S2CID 25244200 Foucaud Florent Mertzios George B Naserasr Reza Parreau Aline Valicov Petru 2017b Identification location domination and metric dimension on interval and permutation graphs II Algorithms and complexity Algorithmica 78 3 914 944 arXiv 1405 2424 doi 10 1007 s00453 016 0184 1 S2CID 1520161 Garey M R Johnson D S 1979 Computers and Intractability A Guide to the Theory of NP Completeness W H Freeman ISBN 0 7167 1045 5 A1 5 GT61 p 204 Harary F Melter R A 1976 On the metric dimension of a graph Ars Combinatoria 2 191 195 MR 0457289 Hartung Sepp 2014 Exploring parameter spaces in coping with computational intractability PhD thesis Technische Universitat Berlin retrieved 2015 09 15 Hartung Sepp Nichterlein Andre 2013 On the parameterized and approximation hardness of metric dimension 2013 IEEE Conference on Computational Complexity CCC Stanford CA USA June 5 7 2013 Proceedings IEEE pp 266 276 arXiv 1211 1636 doi 10 1109 CCC 2013 36 S2CID 684505 Hauptmann Mathias Schmied Richard Viehmann Claus 2012 Approximation complexity of metric dimension problem Journal of Discrete Algorithms 14 214 222 doi 10 1016 j jda 2011 12 010 MR 2922072 Hernando Carmen Mora Merce Pelayo Ignacio M Seara Carlos Wood David R 2010 Extremal graph theory for metric dimension and diameter Electronic Journal of Combinatorics 17 R30 doi 10 37236 302 hdl 2117 8261 Hoffmann Stefan Elterman Alina Wanke Egon 2016 A linear time algorithm for metric dimension of cactus block graphs Theoretical Computer Science 630 43 62 doi 10 1016 j tcs 2016 03 024 Hoffmann Stefan Wanke Egon 2013 Metric Dimension for Gabriel Unit Disk Graphs Is NP Complete in Bar Noy Amotz Halldorsson Magnus M eds Algorithms for Sensor Systems 8th International Symposium on Algorithms for Sensor Systems Wireless Ad Hoc Networks and Autonomous Mobile Entities ALGOSENSORS 2012 Ljubljana Slovenia September 13 14 2012 Revised Selected Papers Lecture Notes in Computer Science vol 7718 Springer pp 90 92 arXiv 1306 2187 doi 10 1007 978 3 642 36092 3 10 ISBN 978 3 642 36091 6 S2CID 9740623 Khuller S Raghavachari B Rosenfeld A 1996 Landmarks in graphs Discrete Applied Mathematics 70 3 217 229 doi 10 1016 0166 218x 95 00106 2 hdl 10338 dmlcz 140702 Li Shaohua Pilipczuk Marcin July 2022 Hardness of metric dimension in graphs of constant treewidth Algorithmica 84 11 3110 3155 arXiv 2102 09791 doi 10 1007 s00453 022 01005 y S2CID 231979414 Lokshtanov Daniel 2010 Open problems Parameterized complexity and approximation algorithms Metric Dimension in Demaine Erik D Hajiaghayi MohammadTaghi Marx Daniel eds Parameterized Complexity and Approximation Algorithms Dagstuhl Seminar Proceedings Dagstuhl Germany Schloss Dagstuhl Leibniz Zentrum fur Informatik Slater P J 1975 Leaves of trees Proc 6th Southeastern Conference on Combinatorics Graph Theory and Computing Florida Atlantic Univ Boca Raton Fla 1975 Congressus Numerantium vol 14 Winnipeg Utilitas Math pp 549 559 MR 0422062 Slater P J 1988 Dominating and reference sets in a graph Journal of Mathematical and Physical Sciences 22 4 445 455 MR 0966610 Retrieved from https en wikipedia org w index php title Metric dimension graph theory amp oldid 1187331901, wikipedia, wiki, book, books, library,

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