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 Densities of cliques and independent sets in graphs

 Densities of cliques and independent sets in graphs. Yuval Peled , HUJI. Joint work with Nati Linial , Benny Sudakov , Hao Huang and Humberto Naves. High level motivation. How can we study large graphs? Approach: Sample small sets of vertices and examine the induced subgraphs .

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 Densities of cliques and independent sets in graphs

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  1.  Densities of cliques and independent sets in graphs Yuval Peled, HUJI Joint work with NatiLinial, Benny Sudakov, Hao Huang and Humberto Naves.

  2. High level motivation • How can we study large graphs? • Approach: Sample small sets of vertices and examine the induced subgraphs. • What graph properties can be inferred from its local profile? • What are the possible local profiles of large graphs?

  3. Local profiles of graphs • What are the possible local profiles of (large) graphs? • For graphs H,G, we denote by d(H;G) the induced density of H in G, i.e. • d(H;G):= The probability that |H| random vertices in G induce a copy of H.

  4. Local profiles of graphs • Definition: Given a family of graphs, is the set of all such that , a sequence of graphs with and • Problem: Characterize this set.

  5. Local profiles of graphs • Characterizing seems to be a hard task: • A mathematical perspective: • Many hard problems fall into this framework. • E.g. for t=1, the problem is equivalent to computing the inducibility of graph, a parameter known only for a handful of graphs. • A computational perspective: • [Hatami, Norine 11’]: Satisfiability of linear inequalities in is undecidable.

  6. Local profiles of two cliques • The case of two cliques is already of interest: • Turan’s Theorem: • Kruskal-Katona Theorem: (r<s) • Minimize subject to this constraint? much harder: solved only recently for r=2: Razborov 08’ (s=3), Nikiforov 11’ (s=4(, Reiher (arbitrary s)

  7. A clique and an anticlique • Motivation - quantitative versions of Ramsey’s theorem: • Investigate distributions of monochromatic cliques in a red/blue coloring of the complete graph. • Goodman’s inequality: • The minimum is attained by G(n,½), conjectured by Erdos to minimize for every r. • Refuted by Thomasson for every r>3.

  8. A clique and an anticlique (II) • A consequence from Goodman’s inequality: • [Franek-Rodl 93’] The analog of this is false for r=4, by a blow up of the following graph: • V = {0,1}^13, v~uiff dist(v,u) ∈ {1,4,5,8,9,11} • Fundamental open problem: Find graphs with few cliques and anticliques. • We are interested in the other side of

  9. Many cliques and anticliques How big can both d(Ks;G) and d(Kr;G) be?

  10. Many cliques and anticliques What graphs has many cliques and anticliques? Example: r=s=3. • First guess: • A clique on some fraction of the vertices t 1-t • Second guess: • Complements of these graphs

  11. Main theorem Let r, s > 2. Suppose that and let q be the unique root in [0,1] of Then, Namely, given the maximum of is attained in one of two graphs: a clique on a fraction of the vertices, or the complement of such graph.

  12. More theorems • Stability: such that every sufficiently large graph G with is close to the extremal graph. • Max-min: where

  13. Proof of main theorem • Strategy: • Reduce the problem to threshold graphs. • Reformulate the problem for threshold graphs as an optimization problem. • Characterize the solutions of the optimization problem.

  14. Proof of main theorem • Strategy: • Reduce the problem to threshold graphs. • Reformulate the problem for threshold graphs as an optimization problem. • Characterize the solutions of the optimization problem.

  15. Shifting in a nutshell • Given a graph G and vertices u,v the shift of G from u to v is defined by the rule: • Every other vertex w with w~u and w≁v gets disconnected from u and connected to v. • A graph G with V=[n] is said to be shifted if for every i<j the shift of G from j to i does not change G. • Fact: Every graph can be made shifted by a finite number of shifting operations.

  16. Shifting cliques • Lemma: Shifting does not decrease the number of s-cliques in the graph. • Proof: Consider the shift from j to i. If a subset C of V forms a clique in G and not in the shifted graph S(G), then C \ {j} U {i} forms a clique in S(G) and not in G. • Cor: By symmetry, shifting does not decrease the number of r-anticliques.

  17. Threshold graphs • Def: A graph is called a threshold graph if there is an order on the vertices, such that every vertex is adjacent to either all or none of its predecessors. • Lemma: A shifted graph is a threshold graph. • Proof: Consider the following order: • Cor: The extremal graph is a threshold graph.

  18. Proof of main theorem • Strategy: • Reduce the problem to threshold graphs. • Reformulate the problem for threshold graphs as an optimization problem. • Characterize the solutions of the optimization problem.

  19. Threshold graphs • Every threshold graph G can be encoded as a point in A_1 A_2 A_3 A_4 A_2k-1 A_2k

  20. densities in threshold graphs • The densities are (upto o(1)): A_1 A_2 A_3 A_4 A_2k-1 A_2k

  21. Optimization problem • The new form of our optimization problem is: • We need to prove that every maximum is either supported on x_1,y_1 or on y_1,x_2.

  22. Optimization problem • It suffices to show that for every a,b>0, the maximum of is either supported on x_1,y_1 or on y_1,x_2. Why? For both problems have the same set of maximum points.

  23. Proof of main theorem • Strategy: • Reduce the problem to threshold graphs. • Reformulate the problem for threshold graphs as an optimization problem. • Characterize the solutions of the optimization problem.

  24. Technical lemma • Let k,r,s≥2 be integers, a,b>0 reals, and the polynomials defined above. Then, every non-degenerate maximum of is either supported on x_1,y_1 or on y_1,x_2. (x,y) is non-degenerate if the zeros in the sequence (y_1,x_2,y_3,…,x_k,y_k) form a suffix. A_1 A_2 A_3 A_4 A_2k-1 A_2k A_1 U A_3

  25. Proof • Let (x,y) be a non-degenerate maximum of f: • , otherwise we can increase f by a perturbation that increases the smaller element. • WLOG x_1>0, otherwise x exchange roles with y, and p with q (by looking at the complement graph). • We show that x_3=y_2=x_2=0.

  26. Proof (x_3=0) • Define the following matrices: • If x_3>0 and (x,y) is non-degenerate then B is positive definite. • For , let x’ be defined by

  27. Proof (x_3=0) (II) • Then, • If A is singular – choose Av=0, v≠0. • If A is invertible – choose

  28. Proof (x_3=0) (III) • Hence, contradicting the maximality of f(x,y). • Proving y_2=0, x_2=0 is done with similar methods.

  29. Remarks • For the max-min theorem: Consider (a=b=1). • For r=s=3, Goodman inequality and our bound completely determine the set • Stability – obtained using Keevash’s stable Kruskal-Katona theorem.

  30. The End ?

  31. For l≤m, • Hence, and

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