Ramsey Properties of Random Graphs; A Sharp Threshold Proven via A Hypergraph Regularity Lemma. Ehud Friedgut, Vojtech Rödl, Andrzej Rucinski, Prasad.

Slides:



Advertisements
Similar presentations
Quantum Lovasz local lemma Andris Ambainis (Latvia), Julia Kempe (Tel Aviv), Or Sattath (Hebrew U.) arXiv:
Advertisements

A sharp threshold for Ramsey properties of random sets of integers (A Socratic dialogue) Ehud Friedgut, Weizmann Institute Joint work with Hiệp Hàn, Yuri.
Chapter 8 Topics in Graph Theory
Deterministic vs. Non-Deterministic Graph Property Testing Asaf Shapira Tel-Aviv University Joint work with Lior Gishboliner.
On the Density of a Graph and its Blowup Raphael Yuster Joint work with Asaf Shapira.
Edge-connectivity and super edge-connectivity of P 2 -path graphs Camino Balbuena, Daniela Ferrero Discrete Mathematics 269 (2003) 13 – 20.
Approximation Algorithms Chapter 14: Rounding Applied to Set Cover.
Λ14 Διαδικτυακά Κοινωνικά Δίκτυα και Μέσα Positive and Negative Relationships Chapter 5, from D. Easley and J. Kleinberg book.
Lecture 22: April 18 Probabilistic Method. Why Randomness? Probabilistic method: Proving the existence of an object satisfying certain properties without.
1 NP-completeness Lecture 2: Jan P The class of problems that can be solved in polynomial time. e.g. gcd, shortest path, prime, etc. There are many.
Playing Fair at Sudoku Joshua Cooper USC Department of Mathematics.
On the relation between probabilistic and deterministic avoidance games Torsten Mütze, ETH Zürich Joint work with Michael Belfrage (ETH Zürich), Thomas.
Offline thresholds for online games Reto Spöhel, ETH Zürich Joint work with Michael Krivelevich and Angelika Steger TexPoint fonts used in EMF. Read the.
Noga Alon Institute for Advanced Study and Tel Aviv University
1 List Coloring and Euclidean Ramsey Theory TexPoint fonts used in EMF. Read the TexPoint manual before you delete this box.: A A A A Noga Alon, Tel Aviv.
Coloring the edges of a random graph without a monochromatic giant component Reto Spöhel (joint with Angelika Steger and Henning Thomas) TexPoint fonts.
Mycielski’s Construction Mycielski’s Construction: From a simple graph G, Mycielski’s Construction produces a simple graph G’ containing G. Beginning with.
Asymmetric Ramsey Properties of Random Graphs involving Cliques Reto Spöhel Joint work with Martin Marciniszyn, Jozef Skokan, and Angelika Steger TexPoint.
Online Graph Avoidance Games in Random Graphs Reto Spöhel Diploma Thesis Supervisors: Martin Marciniszyn, Angelika Steger.
Conditional Regularity and Efficient testing of bipartite graph properties Ilan Newman Haifa University Based on work with Eldar Fischer and Noga Alon.
Testing of Clustering Noga Alon, Seannie Dar Michal Parnas, Dana Ron.
Avoiding Monochromatic Giants in Edge-Colorings of Random Graphs Henning Thomas (joint with Reto Spöhel, Angelika Steger) TexPoint fonts used in EMF. Read.
1 Packing directed cycles efficiently Zeev Nutov Raphael Yuster.
Michael Bender - SUNY Stony Brook Dana Ron - Tel Aviv University Testing Acyclicity of Directed Graphs in Sublinear Time.
Hunting for Sharp Thresholds Ehud Friedgut Hebrew University.
Online Vertex Colorings of Random Graphs Without Monochromatic Subgraphs Reto Spöhel, ETH Zurich Joint work with Martin Marciniszyn.
CS5371 Theory of Computation Lecture 1: Mathematics Review I (Basic Terminology)
1 On the Benefits of Adaptivity in Property Testing of Dense Graphs Joint work with Mira Gonen Dana Ron Tel-Aviv University.
On sparse Ramsey graphs Torsten Mütze, ETH Zürich Joint work with Ueli Peter (ETH Zürich) TexPoint fonts used in EMF. Read the TexPoint manual before you.
K-Coloring k-coloring: A k-coloring of a graph G is a labeling f: V(G)  S, where |S|=k. The labels are colors; the vertices of one color form a color.
Problem: Induced Planar Graphs Tim Hayes Mentor: Dr. Fiorini.
Antimagic Labellings of Graphs Torsten Mütze Joint work with Dan Hefetz and Justus Schwartz.
K-Coloring k-coloring: A k-coloring of a graph G is a labeling f: V(G)  S, where |S|=k. The labels are colors; the vertices of one color form a color.
Online Ramsey Games in Random Graphs Reto Spöhel, ETH Zürich Joint work with Martin Marciniszyn and Angelika Steger.
9.2 Graph Terminology and Special Types Graphs
Fractional decompositions of dense hypergraphs Raphael Yuster University of Haifa.
The Quasi-Randomness of Hypergraph Cut Properties Asaf Shapira & Raphael Yuster.
The Effect of Induced Subgraphs on Quasi-randomness Asaf Shapira & Raphael Yuster.
Asymmetric Ramsey Properties of Random Graphs involving Cliques Reto Spöhel Joint work with Martin Marciniszyn, Jozef Skokan, and Angelika Steger TexPoint.
The Turán number of sparse spanning graphs Raphael Yuster joint work with Noga Alon Banff 2012.
Online Ramsey Games in Random Graphs Reto Spöhel, ETH Zürich Joint work with Martin Marciniszyn and Angelika Steger TexPoint fonts used in EMF. Read the.
Online Vertex-Coloring Games in Random Graphs Reto Spöhel (joint work with Martin Marciniszyn; appeared at SODA ’07)
1 Universality, Tolerance, Chaos and Order Noga Alon, Tel Aviv University Szemerédi’s Conference Budapest, August 2010.
7.1 and 7.2: Spanning Trees. A network is a graph that is connected –The network must be a sub-graph of the original graph (its edges must come from the.
Edge-disjoint induced subgraphs with given minimum degree Raphael Yuster 2012.
Expanders via Random Spanning Trees R 許榮財 R 黃佳婷 R 黃怡嘉.
Chapter 9: Geometric Selection Theorems 11/01/2013
Mycielski’s Construction Mycielski’s Construction: From a simple graph G, Mycielski’s Construction produces a simple graph G’ containing G. Beginning with.
1 The number of orientations having no fixed tournament Noga Alon Raphael Yuster.
1 Rainbow Decompositions Raphael Yuster University of Haifa Proc. Amer. Math. Soc. (2008), to appear.
Monochromatic Boxes in Colored Grids Joshua Cooper, USC Math Steven Fenner, USC CS Semmy Purewal, College of Charleston Math.
Testing the independence number of hypergraphs
1 Asymptotically optimal K k -packings of dense graphs via fractional K k -decompositions Raphael Yuster University of Haifa.
Graph Colouring L09: Oct 10. This Lecture Graph coloring is another important problem in graph theory. It also has many applications, including the famous.
CSE 589 Part VI. Reading Skiena, Sections 5.5 and 6.8 CLR, chapter 37.
Balanced Online Graph Avoidance Games Henning Thomas Master Thesis supervised by Reto Spöhel ETH Zürich TexPoint fonts used in EMF. Read the TexPoint manual.
Dense graphs with a large triangle cover have a large triangle packing Raphael Yuster SIAM DM’10.
Introduction to Graph Theory Lecture 13: Graph Coloring: Edge Coloring.
Complexity and Efficient Algorithms Group / Department of Computer Science Testing the Cluster Structure of Graphs Christian Sohler joint work with Artur.
Introduction to Graph Theory
Introduction to Graph Theory By: Arun Kumar (Asst. Professor) (Asst. Professor)
CHAPTER SIX T HE P ROBABILISTIC M ETHOD M1 Zhang Cong 2011/Nov/28.
Theory of Computational Complexity Probability and Computing Chapter Hikaru Inada Iwama and Ito lab M1.
Antimagic Labellings of Graphs
Proof technique (pigeonhole principle)
Geometric Graphs and Quasi-Planar Graphs
Packing directed cycles efficiently
the k-cut problem better approximate and exact algorithms
Locality In Distributed Graph Algorithms
Integer and fractional packing of graph families
Presentation transcript:

Ramsey Properties of Random Graphs; A Sharp Threshold Proven via A Hypergraph Regularity Lemma. Ehud Friedgut, Vojtech Rödl, Andrzej Rucinski, Prasad Tetali

Special thanks to the Tetali family for costume design.

Chapter I

We will say a graph is a Ramsey graph if every bi-coloring of its edges contains a monochromatic triangle. e.g. Why ?!

Is there a sharp threshold?

Theorem: Yes, there does.

Why is the critical edge probability? The expected number of triangles per edge is

Chapter II

A multi-partite graph on vertex sets is -regular if all but of the pairs are -regular Easy if k is very small or very large…

Szemerédi’s Regularity Lemma: Weighted variations? Sparse graphs? Hypergraphs?

A hitting set of a graph G is a set of vertices that intersects every edge. In a dense graph on vertices there may be hitting sets. We would like to capture all hitting sets by a family of cores so that: 1.Every hitting set contains a core. 2. The number of cores is. 3. Every core is of size linear in.

If G is a complete bipartite graph on vertex sets U, V take the cores to be U and V. If G is -regular bipartite take all sets U’ or V’ such that or UV 1.Every hitting set contains a core. 3. Every core is of size linear in. 2. The number of cores is.

In a general graph – fix a Szemerédi partition. Draw the super-graph of regular pairs. A core will be any set obtained by taking a hitting set in the super-graph and taking at least of the vertices in all the super-vertices involved.

Chapter III

“Theorem”: Sharp threshold Global property Coarse threshold Local property e.g. connectivity has a sharp threshold - whereas containing a triangle has a coarse threshold.

…which means exactly that Ramsiness has a sharp threshold! Any such would be sensitive to small global enhancement … If Ramsiness had a coarse threshold it would be local – a typical non-Ramsey would be sensitive to local perturbations…

Let be typical in. Assume is non-Ramsey. Assume there exists a small magical graph, say, such that Show that this implies

is not seen in ! What about ?

Many copies of will pose restrictions if they appear – e.g. a problematic copy: We can color But in every proper coloring of one of the following will happen:

Using probabilistic techniques we can arrange a large subset of these restrictions as follows: Every restriction consists of five elements such that every proper coloring must agree with on at least one of them. B B B R R

For every proper coloring, the set of (graph)edges of on which it agrees with is a hitting set of. This defines a hypergraph with (hypergraph)edges of size 5. : B B B R R Given a proper coloring of, and an edge of then there exists an element in for which agrees with.

How does one show sensitivity to global enhancement? Every large partial coloring survives the addition of a random copy of with probability. There are approximately colorings. Union bound : Depends on the value of ! There may be too many colorings.

Last chapter:

We have a hypergraph of restrictions such that every proper coloring defines a hitting set of. But, there are too many colorings. We would like to capture them by a family of cores such that : 2. The number of cores is. 1. Every hitting set contains a core. 3. Every core is of size. We then can improve the union bound by clumping:

There are many colorings : Survival probability of each. Colorings (hitting sets) Cores All these colorings share a core.

A Frankl – Rödl partition 2. Partition every one of the bipartite graphs formed into (non-induced) subgraphs. 1.Partition the vertices of (auxiliary partition)

Choosing five of these bipartite graphs and a subgraph of each gives a polyad, a set of 5 subsets (anologous to a pair of sets in a Szemerédi partition.)

The density of a polyad = The number of copies of belonging to (The total number of copies of ) A regular Polyad – every sufficiently “large” subgraph has density close to that of the polyad.

“Theorem”: If is a typical graph in and is the corresponding restriction hypergraph then there exists a Frankl-Rödl partition of such that “most” of the polyads formed are -regular. This enables us to define cores, capture all colorings efficiently and finish the proof.

So, what is the definition of a core? Believe me, you don’t want to know.

And In conclusion I would like to say:

Ramsiness has a sharp threshold because it is a global property. Union bounds can be improved by clumping Clumping can be done if the underlying structure has an inherent regularity. Frankl –Rödl type partitions can extract regularity from various hypergraphs. Thank you for your attention!!