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David Laughon CS594 Graph Theory Graph Coloring. Coloring – Assignment of labels to vertices k-coloring – a coloring where Proper k-coloring – k-coloring.

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Presentation on theme: "David Laughon CS594 Graph Theory Graph Coloring. Coloring – Assignment of labels to vertices k-coloring – a coloring where Proper k-coloring – k-coloring."— Presentation transcript:

1 David Laughon CS594 Graph Theory Graph Coloring

2 Coloring – Assignment of labels to vertices k-coloring – a coloring where Proper k-coloring – k-coloring where vertices have different labels if they are adjacent Chromatic number – least k for which G is k-colorable - χ(G) Definitions

3 A Graph is k-chromatic if χ(G) = k Optimal coloring – proper k-coloring of a k-chromatic graph – Vertex-coloring problems Is a graph k-colorable for given k? What is χ(G) / what is the optimal coloring? Definitions

4 Four-color conjecture – Francis Guthrie, 1852 (F.G.) – Can any map be colored using at most 4 colors so that adjacent regions are not the same color? Many incomplete proofs (Kempe) – “Counterexamples” 5-color theorem proved in 1890 (Heawood) 4-color theorem finally proved in 1977 (Appel, Haken) – First major computer-based proof Graph coloring applies to non-planar graphs as well History

5 Martin Gardner, April 1975 edition of Scientific American As an April fool’s joke, claimed graph required 5 colors 4-color “Counterexample”

6 Proper 6-coloringOptimal 4-coloring Examples

7 For complete graphs, χ(G) = n Each vertex has n-1 edges that connect to every other vertex – Forces each vertex to have a unique color Examples – K n

8 A graph is 2-colorable iff it is bipartite Examples

9 ω(G) – size of largest clique in G χ(G) ≥ ω(G) – Clique of size n requires n colors – Can be a tight bound, but not always Examples

10 χ(G) = 7, ω(G) = 5

11 Mycielski’s Construction – Can be used to make graphs with arbitrarily large chromatic numbers, that do not contain K 3 as a subgraph Examples

12 χ(G) ≤ Δ(G) + 1 Greedy Algorithm: – Put the vertices of a graph in a sequence – For each vertex in the sequence, assign it the lowest indexed color not already assigned to adjacent vertices Not guaranteed to be optimal for every possible sequence Guaranteed optimal for at least one sequence Greedy Coloring

13 Vertex012345 ColorYellow Green Greedy Coloring Example

14 Vertex031425 ColorYellow Green Purple Greedy Coloring Example

15 A path in a graph that alternates between 2 colors First used by Kempe in his incorrect proof of the 4-color theorem Used in 5-color theorem and 4- color theorem proofs Kempe Chains

16 All planar graphs can be colored with at most 5 colors Basis step: True for n(G) ≤ 5 Induction step: n(g) > 5 There exists a vertex v in G of degree at most 5 (Theorem 6.1.23) G – v must be 5-colorable by induction hypothesis 5-color theorem

17 If G is 5-colorable, done If G is not 5 colorable, we have: Is there a Kempe chain including v1 and v3? 5-color Theorem

18 There is no Kempe chainThere is a Kempe chain 5-color Theorem

19 There cannot be a Kempe chain including v2 and v4 v4 cannot directly influence v2 5-color Theorem

20 Similar to vertex coloring, except edges are colored – Adjacent edges have different colors Edge Coloring

21 Every edge-coloring problem can be transformed into a vertex- coloring problem Coloring the edges of graph G is the same as coloring the vertices in L(G) Not every vertex-coloring problem can be transformed tin an edge- coloring problem – Every graph has a line graph, but not every graph is a line graph of some other graph Edge Coloring

22 K 4 edge-coloringL(K 4 ) vertex-coloring Edge Coloring

23 Each vertex in G has a positive integer label x(v): the number of colors that must be assigned to that vertex The color sets of adjacent vertices must be disjoint Multi-coloring {Yellow, Green, Purple, Red} {Blue} {Yellow, Green} {Blue} χ(G) = 5

24 Every multi-coloring problem can be transformed to a vertex- coloring problem – For each vertex with x(v) = n, replace it with a clique of size n. – Add an edge from each vertex in the new clique to every vertex that the original vertex was adjacent to. – Single vertex-coloring now solves the problem Multi-coloring

25 χ(G) = 5

26 Scheduling Register allocation VLSI channel routing Biological networks (Khor) Testing printed circuit boards (Garey, Johnson, & Hing) Sudoku Applications

27 Each cell is a vertex Each integer label is a “color” A vertex is adjacent to another vertex if one of the following hold: – Same row – Same column – Same 3x3 grid Vertex-coloring solves Sudoku Applications: Sudoku

28 Decide if a graph is k-colorable is NP-complete Determining χ(G) is NP-hard k-colorable – O(2.445 ^n ) (Lawler) 3-colorable – O(1.3289 ^n ) (Beigel, Eppstein) 4-colorable – O(1.7272 ^n ) (Fomin, Gaspers, & Saurabh) Alternative methods of solving graph coloring – Swarm intelligence (Dorrigiv, Markib) State of the Art

29 Hadwiger Conjecture – Every k-chromatic graph has a subgraph that becomes K k through edge contractions – Open for k ≥ 7 Open Problems

30 Erdős–Faber–Lovász conjecture – Consider k complete graphs with exactly k vertices. If every pair of complete graphs shares at most one vertex, then the union of the graphs can be colored with k colors Open Problems

31 F. G. (June 10, 1854), "Tinting Maps", The Athenaeum: 726."Tinting Maps"The Athenaeum Heawood, P. J. (1890), "Map-Colour Theorems", Quarterly Journal of Mathematics, Oxford 24: 332–338 Heawood, P. J. Appel, Kenneth; Haken, Wolfgang (1977), "Every Planar Map is Four Colorable Part I. Discharging", Illinois Journal of Mathematics 21: 429–490 Appel, Kenneth; Haken, Wolfgang; Koch, John (1977), "Every Planar Map is Four Colorable Part II. Reducibility", Illinois Journal of Mathematics 21: 491–567 Appel, Kenneth; Haken, Wolfgang (October 1977), "Solution of the Four Color Map Problem", Scientific American 237 (4): 108–121 Khor, S., "Application of graph colouring to biological networks," Systems Biology, IET, vol.4, no.3, pp.185,192, May 2010 Garey, M.R.; Johnson, D.; Hing So, "An application of graph coloring to printed circuit testing," Circuits and Systems, IEEE Transactions on, vol.23, no.10, pp.591,599, Oct 1976 References

32 Lawler, E.L. (1976), "A note on the complexity of the chromatic number problem", Information Processing Letters 5 (3): 66–67 Lawler, E.L. Information Processing Letters Beigel, R.; Eppstein, D. (2005), "3-coloring in time O(1.3289 n )", Journal of Algorithms 54 (2)): 168–204Eppstein, D.Journal of Algorithms Fomin, F.V.; Gaspers, S.; Saurabh, S. (2007), "Improved Exact Algorithms for Counting 3- and 4-Colorings", Proc. 13th Annual International Conference, COCOON 2007, Lecture Notes in Computer Science 4598, Springer, pp. 65–74Lecture Notes in Computer Science Dorrigiv, M.; Markib, H.Y., "Algorithms for the graph coloring problem based on swarm intelligence," Artificial Intelligence and Signal Processing (AISP), 2012 16th CSI International Symposium on, vol., no., pp.473,478, 2-3 May 2012 References

33 Prove that every graph has a vertex ordering such that the greedy coloring algorithm produces an optimal coloring Given a k-chromatic graph and an optimal coloring of it, prove that for each color i there is a vertex with color i that is adjacent to vertices of all the other k-1 colors Homework


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