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Clique (graph theory)

In the mathematical area of graph theory, a clique (/ˈklk/ or /ˈklɪk/) is a subset of vertices of an undirected graph such that every two distinct vertices in the clique are adjacent. That is, a clique of a graph is an induced subgraph of that is complete. Cliques are one of the basic concepts of graph theory and are used in many other mathematical problems and constructions on graphs. Cliques have also been studied in computer science: the task of finding whether there is a clique of a given size in a graph (the clique problem) is NP-complete, but despite this hardness result, many algorithms for finding cliques have been studied.

A graph with
  • 23 × 1-vertex cliques (the vertices),
  • 42 × 2-vertex cliques (the edges),
  • 19 × 3-vertex cliques (light and dark blue triangles), and
  • 2 × 4-vertex cliques (dark blue areas).
The 11 light blue triangles form maximal cliques. The two dark blue 4-cliques are both maximum and maximal, and the clique number of the graph is 4.

Although the study of complete subgraphs goes back at least to the graph-theoretic reformulation of Ramsey theory by Erdős & Szekeres (1935),[1] the term clique comes from Luce & Perry (1949), who used complete subgraphs in social networks to model cliques of people; that is, groups of people all of whom know each other. Cliques have many other applications in the sciences and particularly in bioinformatics.

Definitions edit

A clique, C, in an undirected graph G = (V, E) is a subset of the vertices, CV, such that every two distinct vertices are adjacent. This is equivalent to the condition that the induced subgraph of G induced by C is a complete graph. In some cases, the term clique may also refer to the subgraph directly.

A maximal clique is a clique that cannot be extended by including one more adjacent vertex, that is, a clique which does not exist exclusively within the vertex set of a larger clique. Some authors define cliques in a way that requires them to be maximal, and use other terminology for complete subgraphs that are not maximal.

A maximum clique of a graph, G, is a clique, such that there is no clique with more vertices. Moreover, the clique number ω(G) of a graph G is the number of vertices in a maximum clique in G.

The intersection number of G is the smallest number of cliques that together cover all edges of G.

The clique cover number of a graph G is the smallest number of cliques of G whose union covers the set of vertices V of the graph.

A maximum clique transversal of a graph is a subset of vertices with the property that each maximum clique of the graph contains at least one vertex in the subset.[2]

The opposite of a clique is an independent set, in the sense that every clique corresponds to an independent set in the complement graph. The clique cover problem concerns finding as few cliques as possible that include every vertex in the graph.

A related concept is a biclique, a complete bipartite subgraph. The bipartite dimension of a graph is the minimum number of bicliques needed to cover all the edges of the graph.

Mathematics edit

Mathematical results concerning cliques include the following.

Several important classes of graphs may be defined or characterized by their cliques:

  • A cluster graph is a graph whose connected components are cliques.
  • A block graph is a graph whose biconnected components are cliques.
  • A chordal graph is a graph whose vertices can be ordered into a perfect elimination ordering, an ordering such that the neighbors of each vertex v that come later than v in the ordering form a clique.
  • A cograph is a graph all of whose induced subgraphs have the property that any maximal clique intersects any maximal independent set in a single vertex.
  • An interval graph is a graph whose maximal cliques can be ordered in such a way that, for each vertex v, the cliques containing v are consecutive in the ordering.
  • A line graph is a graph whose edges can be covered by edge-disjoint cliques in such a way that each vertex belongs to exactly two of the cliques in the cover.
  • A perfect graph is a graph in which the clique number equals the chromatic number in every induced subgraph.
  • A split graph is a graph in which some clique contains at least one endpoint of every edge.
  • A triangle-free graph is a graph that has no cliques other than its vertices and edges.

Additionally, many other mathematical constructions involve cliques in graphs. Among them,

  • The clique complex of a graph G is an abstract simplicial complex X(G) with a simplex for every clique in G
  • A simplex graph is an undirected graph κ(G) with a vertex for every clique in a graph G and an edge connecting two cliques that differ by a single vertex. It is an example of median graph, and is associated with a median algebra on the cliques of a graph: the median m(A,B,C) of three cliques A, B, and C is the clique whose vertices belong to at least two of the cliques A, B, and C.[5]
  • The clique-sum is a method for combining two graphs by merging them along a shared clique.
  • Clique-width is a notion of the complexity of a graph in terms of the minimum number of distinct vertex labels needed to build up the graph from disjoint unions, relabeling operations, and operations that connect all pairs of vertices with given labels. The graphs with clique-width one are exactly the disjoint unions of cliques.
  • The intersection number of a graph is the minimum number of cliques needed to cover all the graph's edges.
  • The clique graph of a graph is the intersection graph of its maximal cliques.

Closely related concepts to complete subgraphs are subdivisions of complete graphs and complete graph minors. In particular, Kuratowski's theorem and Wagner's theorem characterize planar graphs by forbidden complete and complete bipartite subdivisions and minors, respectively.

Computer science edit

In computer science, the clique problem is the computational problem of finding a maximum clique, or all cliques, in a given graph. It is NP-complete, one of Karp's 21 NP-complete problems.[6] It is also fixed-parameter intractable, and hard to approximate. Nevertheless, many algorithms for computing cliques have been developed, either running in exponential time (such as the Bron–Kerbosch algorithm) or specialized to graph families such as planar graphs or perfect graphs for which the problem can be solved in polynomial time.

Applications edit

The word "clique", in its graph-theoretic usage, arose from the work of Luce & Perry (1949), who used complete subgraphs to model cliques (groups of people who all know each other) in social networks. The same definition was used by Festinger (1949) in an article using less technical terms. Both works deal with uncovering cliques in a social network using matrices. For continued efforts to model social cliques graph-theoretically, see e.g. Alba (1973), Peay (1974), and Doreian & Woodard (1994).

Many different problems from bioinformatics have been modeled using cliques. For instance, Ben-Dor, Shamir & Yakhini (1999) model the problem of clustering gene expression data as one of finding the minimum number of changes needed to transform a graph describing the data into a graph formed as the disjoint union of cliques; Tanay, Sharan & Shamir (2002) discuss a similar biclustering problem for expression data in which the clusters are required to be cliques. Sugihara (1984) uses cliques to model ecological niches in food webs. Day & Sankoff (1986) describe the problem of inferring evolutionary trees as one of finding maximum cliques in a graph that has as its vertices characteristics of the species, where two vertices share an edge if there exists a perfect phylogeny combining those two characters. Samudrala & Moult (1998) model protein structure prediction as a problem of finding cliques in a graph whose vertices represent positions of subunits of the protein. And by searching for cliques in a protein–protein interaction network, Spirin & Mirny (2003) found clusters of proteins that interact closely with each other and have few interactions with proteins outside the cluster. Power graph analysis is a method for simplifying complex biological networks by finding cliques and related structures in these networks.

In electrical engineering, Prihar (1956) uses cliques to analyze communications networks, and Paull & Unger (1959) use them to design efficient circuits for computing partially specified Boolean functions. Cliques have also been used in automatic test pattern generation: a large clique in an incompatibility graph of possible faults provides a lower bound on the size of a test set.[7] Cong & Smith (1993) describe an application of cliques in finding a hierarchical partition of an electronic circuit into smaller subunits.

In chemistry, Rhodes et al. (2003) use cliques to describe chemicals in a chemical database that have a high degree of similarity with a target structure. Kuhl, Crippen & Friesen (1983) use cliques to model the positions in which two chemicals will bind to each other.

See also edit

Notes edit

  1. ^ The earlier work by Kuratowski (1930) characterizing planar graphs by forbidden complete and complete bipartite subgraphs was originally phrased in topological rather than graph-theoretic terms.
  2. ^ Chang, Kloks & Lee (2001).
  3. ^ Turán (1941).
  4. ^ Graham, Rothschild & Spencer (1990).
  5. ^ Barthélemy, Leclerc & Monjardet (1986), page 200.
  6. ^ Karp (1972).
  7. ^ Hamzaoglu & Patel (1998).

References edit

  • Alba, Richard D. (1973), "A graph-theoretic definition of a sociometric clique" (PDF), Journal of Mathematical Sociology, 3 (1): 113–126, doi:10.1080/0022250X.1973.9989826, (PDF) from the original on 2011-05-03, retrieved 2009-12-14.
  • Barthélemy, J.-P.; Leclerc, B.; Monjardet, B. (1986), "On the use of ordered sets in problems of comparison and consensus of classifications", Journal of Classification, 3 (2): 187–224, doi:10.1007/BF01894188, S2CID 6092438.
  • Ben-Dor, Amir; Shamir, Ron; Yakhini, Zohar (1999), "Clustering gene expression patterns.", Journal of Computational Biology, 6 (3–4): 281–297, CiteSeerX 10.1.1.34.5341, doi:10.1089/106652799318274, PMID 10582567.
  • Chang, Maw-Shang; Kloks, Ton; Lee, Chuan-Min (2001), "Maximum clique transversals", Graph-theoretic concepts in computer science (Boltenhagen, 2001), Lecture Notes in Comput. Sci., vol. 2204, Springer, Berlin, pp. 32–43, doi:10.1007/3-540-45477-2_5, ISBN 978-3-540-42707-0, MR 1905299.
  • Cong, J.; Smith, M. (1993), "A parallel bottom-up clustering algorithm with applications to circuit partitioning in VLSI design", Proc. 30th International Design Automation Conference, pp. 755–760, CiteSeerX 10.1.1.32.735, doi:10.1145/157485.165119, ISBN 978-0897915779, S2CID 525253.
  • Day, William H. E.; Sankoff, David (1986), "Computational complexity of inferring phylogenies by compatibility", Systematic Zoology, 35 (2): 224–229, doi:10.2307/2413432, JSTOR 2413432.
  • Doreian, Patrick; Woodard, Katherine L. (1994), "Defining and locating cores and boundaries of social networks", Social Networks, 16 (4): 267–293, doi:10.1016/0378-8733(94)90013-2.
  • Erdős, Paul; Szekeres, George (1935), "A combinatorial problem in geometry" (PDF), Compositio Mathematica, 2: 463–470, (PDF) from the original on 2020-05-22, retrieved 2009-12-19.
  • Festinger, Leon (1949), "The analysis of sociograms using matrix algebra", Human Relations, 2 (2): 153–158, doi:10.1177/001872674900200205, S2CID 143609308.
  • Graham, R.; Rothschild, B.; Spencer, J. H. (1990), Ramsey Theory, New York: John Wiley and Sons, ISBN 978-0-471-50046-9.
  • Hamzaoglu, I.; Patel, J. H. (1998), "Test set compaction algorithms for combinational circuits", Proc. 1998 IEEE/ACM International Conference on Computer-Aided Design, pp. 283–289, doi:10.1145/288548.288615, ISBN 978-1581130089, S2CID 12258606.
  • Karp, Richard M. (1972), "Reducibility among combinatorial problems", in Miller, R. E.; Thatcher, J. W. (eds.), (PDF), New York: Plenum, pp. 85–103, archived from the original (PDF) on 2011-06-29, retrieved 2009-12-13.
  • Kuhl, F. S.; Crippen, G. M.; Friesen, D. K. (1983), "A combinatorial algorithm for calculating ligand binding", Journal of Computational Chemistry, 5 (1): 24–34, doi:10.1002/jcc.540050105, S2CID 122923018.
  • Kuratowski, Kazimierz (1930), "Sur le problème des courbes gauches en Topologie" (PDF), Fundamenta Mathematicae (in French), 15: 271–283, doi:10.4064/fm-15-1-271-283, (PDF) from the original on 2018-07-23, retrieved 2009-12-19.
  • Luce, R. Duncan; Perry, Albert D. (1949), "A method of matrix analysis of group structure", Psychometrika, 14 (2): 95–116, doi:10.1007/BF02289146, hdl:10.1007/BF02289146, PMID 18152948, S2CID 16186758.
  • Moon, J. W.; Moser, L. (1965), "On cliques in graphs", Israel Journal of Mathematics, 3: 23–28, doi:10.1007/BF02760024, MR 0182577.
  • Paull, M. C.; Unger, S. H. (1959), "Minimizing the number of states in incompletely specified sequential switching functions", IRE Transactions on Electronic Computers, EC-8 (3): 356–367, doi:10.1109/TEC.1959.5222697.
  • Peay, Edmund R. (1974), "Hierarchical clique structures", Sociometry, 37 (1): 54–65, doi:10.2307/2786466, JSTOR 2786466.
  • Prihar, Z. (1956), "Topological properties of telecommunications networks", Proceedings of the IRE, 44 (7): 927–933, doi:10.1109/JRPROC.1956.275149, S2CID 51654879.
  • Rhodes, Nicholas; Willett, Peter; Calvet, Alain; Dunbar, James B.; Humblet, Christine (2003), "CLIP: similarity searching of 3D databases using clique detection", Journal of Chemical Information and Computer Sciences, 43 (2): 443–448, doi:10.1021/ci025605o, PMID 12653507.
  • Samudrala, Ram; Moult, John (1998), "A graph-theoretic algorithm for comparative modeling of protein structure", Journal of Molecular Biology, 279 (1): 287–302, CiteSeerX 10.1.1.64.8918, doi:10.1006/jmbi.1998.1689, PMID 9636717.
  • Spirin, Victor; Mirny, Leonid A. (2003), "Protein complexes and functional modules in molecular networks", Proceedings of the National Academy of Sciences, 100 (21): 12123–12128, doi:10.1073/pnas.2032324100, PMC 218723, PMID 14517352.
  • Sugihara, George (1984), "Graph theory, homology and food webs", in Levin, Simon A. (ed.), Population Biology, Proc. Symp. Appl. Math., vol. 30, pp. 83–101.
  • Tanay, Amos; Sharan, Roded; Shamir, Ron (2002), "Discovering statistically significant biclusters in gene expression data", Bioinformatics, 18 (Suppl. 1): S136–S144, doi:10.1093/bioinformatics/18.suppl_1.S136, PMID 12169541.
  • Turán, Paul (1941), "On an extremal problem in graph theory", Matematikai és Fizikai Lapok (in Hungarian), 48: 436–452

External links edit

clique, graph, theory, other, uses, clique, disambiguation, mathematical, area, graph, theory, clique, subset, vertices, undirected, graph, such, that, every, distinct, vertices, clique, adjacent, that, clique, graph, displaystyle, induced, subgraph, displayst. For other uses see Clique disambiguation In the mathematical area of graph theory a clique ˈ k l iː k or ˈ k l ɪ k is a subset of vertices of an undirected graph such that every two distinct vertices in the clique are adjacent That is a clique of a graph G displaystyle G is an induced subgraph of G displaystyle G that is complete Cliques are one of the basic concepts of graph theory and are used in many other mathematical problems and constructions on graphs Cliques have also been studied in computer science the task of finding whether there is a clique of a given size in a graph the clique problem is NP complete but despite this hardness result many algorithms for finding cliques have been studied A graph with 23 1 vertex cliques the vertices 42 2 vertex cliques the edges 19 3 vertex cliques light and dark blue triangles and2 4 vertex cliques dark blue areas The 11 light blue triangles form maximal cliques The two dark blue 4 cliques are both maximum and maximal and the clique number of the graph is 4 Although the study of complete subgraphs goes back at least to the graph theoretic reformulation of Ramsey theory by Erdos amp Szekeres 1935 1 the term clique comes from Luce amp Perry 1949 who used complete subgraphs in social networks to model cliques of people that is groups of people all of whom know each other Cliques have many other applications in the sciences and particularly in bioinformatics Contents 1 Definitions 2 Mathematics 3 Computer science 4 Applications 5 See also 6 Notes 7 References 8 External linksDefinitions editA clique C in an undirected graph G V E is a subset of the vertices C V such that every two distinct vertices are adjacent This is equivalent to the condition that the induced subgraph of G induced by C is a complete graph In some cases the term clique may also refer to the subgraph directly A maximal clique is a clique that cannot be extended by including one more adjacent vertex that is a clique which does not exist exclusively within the vertex set of a larger clique Some authors define cliques in a way that requires them to be maximal and use other terminology for complete subgraphs that are not maximal A maximum clique of a graph G is a clique such that there is no clique with more vertices Moreover the clique number w G of a graph G is the number of vertices in a maximum clique in G The intersection number of G is the smallest number of cliques that together cover all edges of G The clique cover number of a graph G is the smallest number of cliques of G whose union covers the set of vertices V of the graph A maximum clique transversal of a graph is a subset of vertices with the property that each maximum clique of the graph contains at least one vertex in the subset 2 The opposite of a clique is an independent set in the sense that every clique corresponds to an independent set in the complement graph The clique cover problem concerns finding as few cliques as possible that include every vertex in the graph A related concept is a biclique a complete bipartite subgraph The bipartite dimension of a graph is the minimum number of bicliques needed to cover all the edges of the graph Mathematics editMathematical results concerning cliques include the following Turan s theorem gives a lower bound on the size of a clique in dense graphs 3 If a graph has sufficiently many edges it must contain a large clique For instance every graph with n displaystyle n nbsp vertices and more than Failed to parse SVG MathML can be enabled via browser plugin Invalid response Math extension cannot connect to Restbase from server http localhost 6011 en wikipedia org v1 displaystyle scriptstyle left lfloor frac n 2 right rfloor cdot left lceil frac n 2 right rceil edges must contain a three vertex clique Ramsey s theorem states that every graph or its complement graph contains a clique with at least a logarithmic number of vertices 4 According to a result of Moon amp Moser 1965 a graph with 3n vertices can have at most 3n maximal cliques The graphs meeting this bound are the Moon Moser graphs K3 3 a special case of the Turan graphs arising as the extremal cases in Turan s theorem Hadwiger s conjecture still unproven relates the size of the largest clique minor in a graph its Hadwiger number to its chromatic number The Erdos Faber Lovasz conjecture relates graph coloring to cliques The Erdos Hajnal conjecture states that families of graphs defined by forbidden graph characterization have either large cliques or large cocliques Several important classes of graphs may be defined or characterized by their cliques A cluster graph is a graph whose connected components are cliques A block graph is a graph whose biconnected components are cliques A chordal graph is a graph whose vertices can be ordered into a perfect elimination ordering an ordering such that the neighbors of each vertex v that come later than v in the ordering form a clique A cograph is a graph all of whose induced subgraphs have the property that any maximal clique intersects any maximal independent set in a single vertex An interval graph is a graph whose maximal cliques can be ordered in such a way that for each vertex v the cliques containing v are consecutive in the ordering A line graph is a graph whose edges can be covered by edge disjoint cliques in such a way that each vertex belongs to exactly two of the cliques in the cover A perfect graph is a graph in which the clique number equals the chromatic number in every induced subgraph A split graph is a graph in which some clique contains at least one endpoint of every edge A triangle free graph is a graph that has no cliques other than its vertices and edges Additionally many other mathematical constructions involve cliques in graphs Among them The clique complex of a graph G is an abstract simplicial complex X G with a simplex for every clique in G A simplex graph is an undirected graph k G with a vertex for every clique in a graph G and an edge connecting two cliques that differ by a single vertex It is an example of median graph and is associated with a median algebra on the cliques of a graph the median m A B C of three cliques A B and C is the clique whose vertices belong to at least two of the cliques A B and C 5 The clique sum is a method for combining two graphs by merging them along a shared clique Clique width is a notion of the complexity of a graph in terms of the minimum number of distinct vertex labels needed to build up the graph from disjoint unions relabeling operations and operations that connect all pairs of vertices with given labels The graphs with clique width one are exactly the disjoint unions of cliques The intersection number of a graph is the minimum number of cliques needed to cover all the graph s edges The clique graph of a graph is the intersection graph of its maximal cliques Closely related concepts to complete subgraphs are subdivisions of complete graphs and complete graph minors In particular Kuratowski s theorem and Wagner s theorem characterize planar graphs by forbidden complete and complete bipartite subdivisions and minors respectively Computer science editMain article Clique problem In computer science the clique problem is the computational problem of finding a maximum clique or all cliques in a given graph It is NP complete one of Karp s 21 NP complete problems 6 It is also fixed parameter intractable and hard to approximate Nevertheless many algorithms for computing cliques have been developed either running in exponential time such as the Bron Kerbosch algorithm or specialized to graph families such as planar graphs or perfect graphs for which the problem can be solved in polynomial time Applications editThe word clique in its graph theoretic usage arose from the work of Luce amp Perry 1949 who used complete subgraphs to model cliques groups of people who all know each other in social networks The same definition was used by Festinger 1949 in an article using less technical terms Both works deal with uncovering cliques in a social network using matrices For continued efforts to model social cliques graph theoretically see e g Alba 1973 Peay 1974 and Doreian amp Woodard 1994 Many different problems from bioinformatics have been modeled using cliques For instance Ben Dor Shamir amp Yakhini 1999 model the problem of clustering gene expression data as one of finding the minimum number of changes needed to transform a graph describing the data into a graph formed as the disjoint union of cliques Tanay Sharan amp Shamir 2002 discuss a similar biclustering problem for expression data in which the clusters are required to be cliques Sugihara 1984 uses cliques to model ecological niches in food webs Day amp Sankoff 1986 describe the problem of inferring evolutionary trees as one of finding maximum cliques in a graph that has as its vertices characteristics of the species where two vertices share an edge if there exists a perfect phylogeny combining those two characters Samudrala amp Moult 1998 model protein structure prediction as a problem of finding cliques in a graph whose vertices represent positions of subunits of the protein And by searching for cliques in a protein protein interaction network Spirin amp Mirny 2003 found clusters of proteins that interact closely with each other and have few interactions with proteins outside the cluster Power graph analysis is a method for simplifying complex biological networks by finding cliques and related structures in these networks In electrical engineering Prihar 1956 uses cliques to analyze communications networks and Paull amp Unger 1959 use them to design efficient circuits for computing partially specified Boolean functions Cliques have also been used in automatic test pattern generation a large clique in an incompatibility graph of possible faults provides a lower bound on the size of a test set 7 Cong amp Smith 1993 describe an application of cliques in finding a hierarchical partition of an electronic circuit into smaller subunits In chemistry Rhodes et al 2003 use cliques to describe chemicals in a chemical database that have a high degree of similarity with a target structure Kuhl Crippen amp Friesen 1983 use cliques to model the positions in which two chemicals will bind to each other See also editClique gameNotes edit The earlier work by Kuratowski 1930 characterizing planar graphs by forbidden complete and complete bipartite subgraphs was originally phrased in topological rather than graph theoretic terms Chang Kloks amp Lee 2001 Turan 1941 Graham Rothschild amp Spencer 1990 Barthelemy Leclerc amp Monjardet 1986 page 200 Karp 1972 Hamzaoglu amp Patel 1998 References editAlba Richard D 1973 A graph theoretic definition of a sociometric clique PDF Journal of Mathematical Sociology 3 1 113 126 doi 10 1080 0022250X 1973 9989826 archived PDF from the original on 2011 05 03 retrieved 2009 12 14 Barthelemy J P Leclerc B Monjardet B 1986 On the use of ordered sets in problems of comparison and consensus of classifications Journal of Classification 3 2 187 224 doi 10 1007 BF01894188 S2CID 6092438 Ben Dor Amir Shamir Ron Yakhini Zohar 1999 Clustering gene expression patterns Journal of Computational Biology 6 3 4 281 297 CiteSeerX 10 1 1 34 5341 doi 10 1089 106652799318274 PMID 10582567 Chang Maw Shang Kloks Ton Lee Chuan Min 2001 Maximum clique transversals Graph theoretic concepts in computer science Boltenhagen 2001 Lecture Notes in Comput Sci vol 2204 Springer Berlin pp 32 43 doi 10 1007 3 540 45477 2 5 ISBN 978 3 540 42707 0 MR 1905299 Cong J Smith M 1993 A parallel bottom up clustering algorithm with applications to circuit partitioning in VLSI design Proc 30th International Design Automation Conference pp 755 760 CiteSeerX 10 1 1 32 735 doi 10 1145 157485 165119 ISBN 978 0897915779 S2CID 525253 Day William H E Sankoff David 1986 Computational complexity of inferring phylogenies by compatibility Systematic Zoology 35 2 224 229 doi 10 2307 2413432 JSTOR 2413432 Doreian Patrick Woodard Katherine L 1994 Defining and locating cores and boundaries of social networks Social Networks 16 4 267 293 doi 10 1016 0378 8733 94 90013 2 Erdos Paul Szekeres George 1935 A combinatorial problem in geometry PDF Compositio Mathematica 2 463 470 archived PDF from the original on 2020 05 22 retrieved 2009 12 19 Festinger Leon 1949 The analysis of sociograms using matrix algebra Human Relations 2 2 153 158 doi 10 1177 001872674900200205 S2CID 143609308 Graham R Rothschild B Spencer J H 1990 Ramsey Theory New York John Wiley and Sons ISBN 978 0 471 50046 9 Hamzaoglu I Patel J H 1998 Test set compaction algorithms for combinational circuits Proc 1998 IEEE ACM International Conference on Computer Aided Design pp 283 289 doi 10 1145 288548 288615 ISBN 978 1581130089 S2CID 12258606 Karp Richard M 1972 Reducibility among combinatorial problems in Miller R E Thatcher J W eds Complexity of Computer Computations PDF New York Plenum pp 85 103 archived from the original PDF on 2011 06 29 retrieved 2009 12 13 Kuhl F S Crippen G M Friesen D K 1983 A combinatorial algorithm for calculating ligand binding Journal of Computational Chemistry 5 1 24 34 doi 10 1002 jcc 540050105 S2CID 122923018 Kuratowski Kazimierz 1930 Sur le probleme des courbes gauches en Topologie PDF Fundamenta Mathematicae in French 15 271 283 doi 10 4064 fm 15 1 271 283 archived PDF from the original on 2018 07 23 retrieved 2009 12 19 Luce R Duncan Perry Albert D 1949 A method of matrix analysis of group structure Psychometrika 14 2 95 116 doi 10 1007 BF02289146 hdl 10 1007 BF02289146 PMID 18152948 S2CID 16186758 Moon J W Moser L 1965 On cliques in graphs Israel Journal of Mathematics 3 23 28 doi 10 1007 BF02760024 MR 0182577 Paull M C Unger S H 1959 Minimizing the number of states in incompletely specified sequential switching functions IRE Transactions on Electronic Computers EC 8 3 356 367 doi 10 1109 TEC 1959 5222697 Peay Edmund R 1974 Hierarchical clique structures Sociometry 37 1 54 65 doi 10 2307 2786466 JSTOR 2786466 Prihar Z 1956 Topological properties of telecommunications networks Proceedings of the IRE 44 7 927 933 doi 10 1109 JRPROC 1956 275149 S2CID 51654879 Rhodes Nicholas Willett Peter Calvet Alain Dunbar James B Humblet Christine 2003 CLIP similarity searching of 3D databases using clique detection Journal of Chemical Information and Computer Sciences 43 2 443 448 doi 10 1021 ci025605o PMID 12653507 Samudrala Ram Moult John 1998 A graph theoretic algorithm for comparative modeling of protein structure Journal of Molecular Biology 279 1 287 302 CiteSeerX 10 1 1 64 8918 doi 10 1006 jmbi 1998 1689 PMID 9636717 Spirin Victor Mirny Leonid A 2003 Protein complexes and functional modules in molecular networks Proceedings of the National Academy of Sciences 100 21 12123 12128 doi 10 1073 pnas 2032324100 PMC 218723 PMID 14517352 Sugihara George 1984 Graph theory homology and food webs in Levin Simon A ed Population Biology Proc Symp Appl Math vol 30 pp 83 101 Tanay Amos Sharan Roded Shamir Ron 2002 Discovering statistically significant biclusters in gene expression data Bioinformatics 18 Suppl 1 S136 S144 doi 10 1093 bioinformatics 18 suppl 1 S136 PMID 12169541 Turan Paul 1941 On an extremal problem in graph theory Matematikai es Fizikai Lapok in Hungarian 48 436 452External links editWeisstein Eric W Clique MathWorld Weisstein Eric W Clique Number MathWorld Retrieved from https en wikipedia org w index php title Clique graph theory amp oldid 1192225525 Definitions, wikipedia, wiki, book, books, library,

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