On the inverse matrix of the Laplacian and all ones matrix

Size: px
Start display at page:

Download "On the inverse matrix of the Laplacian and all ones matrix"

Transcription

1 On the inverse matrix of the Laplacian and all ones matrix Sho Suda (Joint work with Michio Seto and Tetsuji Taniguchi) International Christian University JSPS Research Fellow PD November 21, 2012 Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

2 Contents Why do we consider (L + J) 1? Main results on K = (L + J) 1 : bounds on entries of K and characterization of graphs which attain our bounds Related work on doubly stochastic graph matrices Ω = (L + I) 1 Further problems Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

3 Laplacian matrix G = (V, E): an undirected finite graph with no loop and no multiple edge, that is V is a finite set and E is a subset in {{x, y} : x, y V, x y} G is connected if, for any two distinct vertices in G, there exists a path from one to the other The Laplacian matrix L of G is defined to be d i if i = j, L i,j = 1 if {i, j} E, 0 otherwise J: the all ones matrix Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

4 Laplacian matrix G: a graph with n vertices L: the Laplacian matrix of a graph G λ 1 λ n : all the eigenvalues of L It is well known that λ 1 = 0 with an eigenvector 1 and λ 2 > 0 if and only if G is connected In this talk, we consider K := (L + J) 1 for a connected graph Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

5 Reproducing kernel Hilbert spaces Definition A vector space H is called a reproducing kernel Hilbert space over some set X if 1 H is a Hilbert space consisting of functions on X, 2 for any x in X, there exists a non-zero function k x in H such that f(x) = f, k x H for any function f in H, where, H denotes the inner product of H {k x : x X}: the set of reproducing kernel We call K = ( k x, k y ) x,y X the Gram matrix of H Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

6 Reproducing kernel Hilbert spaces over graphs G = (V, E): a connected graph with Laplacian matrix L Take X = V and F as the set of all real valued functions on V Consider the following inner product u, v = ( x V u(x))( x V v(x)) + ulv T for u and v in F Then the Gram matrix of this Hilbert space is given by K = (L + J) 1 Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

7 An example Let G = (V, E) be a path of length 5 with V = {1,, 5} and E = {{i, i + 1} : 1 i 4} Then L and K are given as follows: L = , K = Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

8 Properties of Gram matrix K = (L + J) 1 It is easy to see that each row and column sum is 1 n Define r i,j := K i,i + K j,j 2K i,j d(i, j) denotes the path-length distance between i and j Proposition (Klein and Randić 1993) Let G be a connected graph with n vertices, Laplacian matrix L and Gram matrix K = (L + J) 1 Then the following hold: 1 {r i,j : 1 i, j n} satisfies the axiom of distance, 2 r i,j d(i, j) with equality if and only if there is the unique path between i and j Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

9 Properties of Gram matrix K = (L + J) 1 Define K = K(G) to be the maximum value on the diagonal entries of K for G Theorem 1 (Seto-S-Taniguchi) Let G be a connected graph with n vertices, K the Gram matrix of G Then 1 n K K(P n) with left equality if and only if G is the complete graph and with right equality if and only if G is the path Sketch of the proof: 1 Let G be a graph obtained by deleting an edge of G with Gram matrix K Then, for any j, K l,l K l,l 2 Show that for a tree G if K i,i is minimum then i must be a leaf 3 Let G be a subtree of G obtained by deleting a leaf 1 with Gram matrix K Then K 1,1 = (n 1)2 K n 2 2,2 + (n 1)2 where 2 is the unique n 2 vertex adjacent to 1 in G Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

10 Properties of Gram matrix K = (L + J) 1 Define K = K(G) to be the minimum value on the entries of K for G Theorem 2 (Seto-S-Taniguchi) Let T be a tree with n vertices, K the Gram matrix of T Then K(P n ) K 0 with left equality if and only if T is the path and with right equality if and only if T is the star Sketch of the proof: 1 Generally it holds that K(G) 0 with equality iff the corresponding vertex is a dominating vertex 2 Show that if K i,j is minimum then i and j must be leaves 3 Let T be a subtree of G obtained by deleting leaves 1, n with Gram matrix K Then K 1,n = (n 2)2 K n 2 2,n 1 n 1 d n 2 T (2, n 1) 2(n 1) n 2 where 2, n 1 are the unique vertices adjacent to 1, n in T respectively Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

11 Properties of Gram matrix K = (L + J) 1 Theorem 3 (Seto-S-Taniguchi) Let T be a tree with n-vertices Let i, j be adjacent vertices in T Then K i,j ( n 2 1)( n 2 1) with equality if and only if T is a double star n 2 T n 2 1, n 1 and i, j are the two internal vertices 2 Sketch of the proof: 1 Let T 1 (resp T 2 ) denote the subtree of T {i, j} containing i (resp j) with n 1 -vertices (resp n 2 ) Then K(T ) i,j = n2 1 K(T n 2 1 ) i,i + n2 2 K(T n 2 2 ) j,j n 1n 2 +1 n 2 Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

12 Related work on doubly stochastic graph matrices Ω = (L + I) 1 is called a doubly stochastic graph matrix Proposition (Merris 1997) Ω is a doubly stochastic matrix, namely all entries are nonnegative and each row and column sum is 1 Moreover all entries are positive if and only if G is connected Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

13 Related work on doubly stochastic graph matrices Ω = (L + I) 1 is called a doubly stochastic graph matrix Theorem (XD Zhang 2011) Let T be a tree with n vertices, Ω a doubly stochastic matrix Then Ω Ω(P n ) with right equality if and only if G is the path Theorem (XD Zhang -JX Wu 2005) Let T be a tree with n vertices, Ω a doubly stochastic graph matrix of T Then Ω(P n ) Ω 1 2(n+1) with left equality if and only if T is the path and with right equality if and only if T is the star Theorem (XD Zhang 2005) Let Ω be a doubly stochastic matrix If i and j are adjacent, Then 4 Ω i,j ( n 2 +3)( n +3) with equality if and only if T is a double star 2 T n 2 1, n 1 and i, j are the two internal vertices 2 Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

14 Further problems Theorem (Merris 1997) Let G a graph with n vertices Let F be the set of all spanning forests of G and F(i, j) be the set of spanning forests of G with both i, j belonging to the same component For F F, γ(f ) denotes the product of the number of connected component of F and γ i (F ) denotes the product of the number of connected component of F that do not contain i Then Ω i,j = F F(i,j) γ i(f ) F F γ(f ) What is an analogue of the Theorem above for the case of K? Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

15 Further problems Theorem (Merris 1997) Let G a graph with n vertices and doubly stochastic graph matrix Ω If Ω i,j < 4, then i and j are not adjacent n 2 +4n What is an analogue of the Theorem above for the case of K? Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

16 Further problems The bounds on the entries of Ω and K look very similar, however methods are completely different Is there a unifying way to consider both Ω and K simultaneously? How about (L + xi + yj) 1 for nonnegative real numbers x and y? Thank you for your attention! Sho Suda (International Christian Univ) On the inverse matrix of L + J Nov 21, / 16

Vertex Degrees and Doubly Stochastic Graph Matrices

Vertex Degrees and Doubly Stochastic Graph Matrices Vertex Degrees and Doubly Stochastic Graph Matrices Xiao-Dong Zhang DEPARTMENT OF MATHEMATICS, SHANGHAI JIAO TONG UNIVERSITY 800 DONGCHUAN ROAD, SHANGHAI, 200240, P. R. CHINA E-mail: xiaodong@sjtu.edu.cn

More information

A lower bound for the Laplacian eigenvalues of a graph proof of a conjecture by Guo

A lower bound for the Laplacian eigenvalues of a graph proof of a conjecture by Guo A lower bound for the Laplacian eigenvalues of a graph proof of a conjecture by Guo A. E. Brouwer & W. H. Haemers 2008-02-28 Abstract We show that if µ j is the j-th largest Laplacian eigenvalue, and d

More information

The Third Workshop on Spectral Graph Theory and Related Topics 1

The Third Workshop on Spectral Graph Theory and Related Topics 1 The Third Workshop on Spectral Graph Theory and Related Topics 1 Date : March 13 (Fri) 15 (Sun), 2015 Venue : Hiroshima Institute of Technology, Hiroshima Campus Room 201 (Mar. 13, 14), Room 301 (Mar.

More information

An Introduction to Spectral Graph Theory

An Introduction to Spectral Graph Theory An Introduction to Spectral Graph Theory Mackenzie Wheeler Supervisor: Dr. Gary MacGillivray University of Victoria WheelerM@uvic.ca Outline Outline 1. How many walks are there from vertices v i to v j

More information

An Algorithmist s Toolkit September 10, Lecture 1

An Algorithmist s Toolkit September 10, Lecture 1 18.409 An Algorithmist s Toolkit September 10, 2009 Lecture 1 Lecturer: Jonathan Kelner Scribe: Jesse Geneson (2009) 1 Overview The class s goals, requirements, and policies were introduced, and topics

More information

18.312: Algebraic Combinatorics Lionel Levine. Lecture 19

18.312: Algebraic Combinatorics Lionel Levine. Lecture 19 832: Algebraic Combinatorics Lionel Levine Lecture date: April 2, 20 Lecture 9 Notes by: David Witmer Matrix-Tree Theorem Undirected Graphs Let G = (V, E) be a connected, undirected graph with n vertices,

More information

Reproducing Kernel Hilbert Spaces

Reproducing Kernel Hilbert Spaces Reproducing Kernel Hilbert Spaces Lorenzo Rosasco 9.520 Class 03 February 9, 2011 About this class Goal To introduce a particularly useful family of hypothesis spaces called Reproducing Kernel Hilbert

More information

Linear algebra and applications to graphs Part 1

Linear algebra and applications to graphs Part 1 Linear algebra and applications to graphs Part 1 Written up by Mikhail Belkin and Moon Duchin Instructor: Laszlo Babai June 17, 2001 1 Basic Linear Algebra Exercise 1.1 Let V and W be linear subspaces

More information

Kernels of Directed Graph Laplacians. J. S. Caughman and J.J.P. Veerman

Kernels of Directed Graph Laplacians. J. S. Caughman and J.J.P. Veerman Kernels of Directed Graph Laplacians J. S. Caughman and J.J.P. Veerman Department of Mathematics and Statistics Portland State University PO Box 751, Portland, OR 97207. caughman@pdx.edu, veerman@pdx.edu

More information

Laplacian spectral radius of trees with given maximum degree

Laplacian spectral radius of trees with given maximum degree Available online at www.sciencedirect.com Linear Algebra and its Applications 429 (2008) 1962 1969 www.elsevier.com/locate/laa Laplacian spectral radius of trees with given maximum degree Aimei Yu a,,1,

More information

Spectral Graph Theory and You: Matrix Tree Theorem and Centrality Metrics

Spectral Graph Theory and You: Matrix Tree Theorem and Centrality Metrics Spectral Graph Theory and You: and Centrality Metrics Jonathan Gootenberg March 11, 2013 1 / 19 Outline of Topics 1 Motivation Basics of Spectral Graph Theory Understanding the characteristic polynomial

More information

Inequalities for the spectra of symmetric doubly stochastic matrices

Inequalities for the spectra of symmetric doubly stochastic matrices Linear Algebra and its Applications 49 (2006) 643 647 wwwelseviercom/locate/laa Inequalities for the spectra of symmetric doubly stochastic matrices Rajesh Pereira a,, Mohammad Ali Vali b a Department

More information

Notes on the Matrix-Tree theorem and Cayley s tree enumerator

Notes on the Matrix-Tree theorem and Cayley s tree enumerator Notes on the Matrix-Tree theorem and Cayley s tree enumerator 1 Cayley s tree enumerator Recall that the degree of a vertex in a tree (or in any graph) is the number of edges emanating from it We will

More information

Lecture 1 and 2: Random Spanning Trees

Lecture 1 and 2: Random Spanning Trees Recent Advances in Approximation Algorithms Spring 2015 Lecture 1 and 2: Random Spanning Trees Lecturer: Shayan Oveis Gharan March 31st Disclaimer: These notes have not been subjected to the usual scrutiny

More information

Spanning Trees of Shifted Simplicial Complexes

Spanning Trees of Shifted Simplicial Complexes Art Duval (University of Texas at El Paso) Caroline Klivans (Brown University) Jeremy Martin (University of Kansas) Special Session on Extremal and Probabilistic Combinatorics University of Nebraska, Lincoln

More information

Graph fundamentals. Matrices associated with a graph

Graph fundamentals. Matrices associated with a graph Graph fundamentals Matrices associated with a graph Drawing a picture of a graph is one way to represent it. Another type of representation is via a matrix. Let G be a graph with V (G) ={v 1,v,...,v n

More information

GREEN MATRICES OF WEIGHTED GRAPHS WITH PENDANT VERTICES. Midsummer Combinatorial Workshop XX Prague, 28 July- 1 August 2014

GREEN MATRICES OF WEIGHTED GRAPHS WITH PENDANT VERTICES. Midsummer Combinatorial Workshop XX Prague, 28 July- 1 August 2014 GREEN MATRICES OF WEIGHTED GRAPHS WITH PENDANT VERTICES Silvia Gago joint work with Angeles Carmona, Andrés M. Encinas, Margarida Mitjana Midsummer Combinatorial Workshop XX Prague, 28 July- 1 August 2014

More information

LIMITING PROBABILITY TRANSITION MATRIX OF A CONDENSED FIBONACCI TREE

LIMITING PROBABILITY TRANSITION MATRIX OF A CONDENSED FIBONACCI TREE International Journal of Applied Mathematics Volume 31 No. 18, 41-49 ISSN: 1311-178 (printed version); ISSN: 1314-86 (on-line version) doi: http://dx.doi.org/1.173/ijam.v31i.6 LIMITING PROBABILITY TRANSITION

More information

http://www.math.uah.edu/stat/markov/.xhtml 1 of 9 7/16/2009 7:20 AM Virtual Laboratories > 16. Markov Chains > 1 2 3 4 5 6 7 8 9 10 11 12 1. A Markov process is a random process in which the future is

More information

1.10 Matrix Representation of Graphs

1.10 Matrix Representation of Graphs 42 Basic Concepts of Graphs 1.10 Matrix Representation of Graphs Definitions: In this section, we introduce two kinds of matrix representations of a graph, that is, the adjacency matrix and incidence matrix

More information

The Learning Problem and Regularization Class 03, 11 February 2004 Tomaso Poggio and Sayan Mukherjee

The Learning Problem and Regularization Class 03, 11 February 2004 Tomaso Poggio and Sayan Mukherjee The Learning Problem and Regularization 9.520 Class 03, 11 February 2004 Tomaso Poggio and Sayan Mukherjee About this class Goal To introduce a particularly useful family of hypothesis spaces called Reproducing

More information

On a lower bound on the Laplacian eigenvalues of a graph

On a lower bound on the Laplacian eigenvalues of a graph On a lower bound on the Laplacian eigenvalues of a graph Akihiro Munemasa (joint work with Gary Greaves and Anni Peng) Graduate School of Information Sciences Tohoku University May 22, 2016 JCCA 2016,

More information

Reproducing Kernel Hilbert Spaces

Reproducing Kernel Hilbert Spaces Reproducing Kernel Hilbert Spaces Lorenzo Rosasco 9.520 Class 03 February 12, 2007 About this class Goal To introduce a particularly useful family of hypothesis spaces called Reproducing Kernel Hilbert

More information

The Matrix-Tree Theorem

The Matrix-Tree Theorem The Matrix-Tree Theorem Christopher Eur March 22, 2015 Abstract: We give a brief introduction to graph theory in light of linear algebra. Our results culminates in the proof of Matrix-Tree Theorem. 1 Preliminaries

More information

Improved Upper Bounds for the Laplacian Spectral Radius of a Graph

Improved Upper Bounds for the Laplacian Spectral Radius of a Graph Improved Upper Bounds for the Laplacian Spectral Radius of a Graph Tianfei Wang 1 1 School of Mathematics and Information Science Leshan Normal University, Leshan 614004, P.R. China 1 wangtf818@sina.com

More information

Trees. A tree is a graph which is. (a) Connected and. (b) has no cycles (acyclic).

Trees. A tree is a graph which is. (a) Connected and. (b) has no cycles (acyclic). Trees A tree is a graph which is (a) Connected and (b) has no cycles (acyclic). 1 Lemma 1 Let the components of G be C 1, C 2,..., C r, Suppose e = (u, v) / E, u C i, v C j. (a) i = j ω(g + e) = ω(g).

More information

Lecture 3: graph theory

Lecture 3: graph theory CONTENTS 1 BASIC NOTIONS Lecture 3: graph theory Sonia Martínez October 15, 2014 Abstract The notion of graph is at the core of cooperative control. Essentially, it allows us to model the interaction topology

More information

On the second Laplacian eigenvalues of trees of odd order

On the second Laplacian eigenvalues of trees of odd order Linear Algebra and its Applications 419 2006) 475 485 www.elsevier.com/locate/laa On the second Laplacian eigenvalues of trees of odd order Jia-yu Shao, Li Zhang, Xi-ying Yuan Department of Applied Mathematics,

More information

Markov Chains and Spectral Clustering

Markov Chains and Spectral Clustering Markov Chains and Spectral Clustering Ning Liu 1,2 and William J. Stewart 1,3 1 Department of Computer Science North Carolina State University, Raleigh, NC 27695-8206, USA. 2 nliu@ncsu.edu, 3 billy@ncsu.edu

More information

Lecture 13: Spectral Graph Theory

Lecture 13: Spectral Graph Theory CSE 521: Design and Analysis of Algorithms I Winter 2017 Lecture 13: Spectral Graph Theory Lecturer: Shayan Oveis Gharan 11/14/18 Disclaimer: These notes have not been subjected to the usual scrutiny reserved

More information

MATH 829: Introduction to Data Mining and Analysis Clustering II

MATH 829: Introduction to Data Mining and Analysis Clustering II his lecture is based on U. von Luxburg, A Tutorial on Spectral Clustering, Statistics and Computing, 17 (4), 2007. MATH 829: Introduction to Data Mining and Analysis Clustering II Dominique Guillot Departments

More information

Lecture 2: September 8

Lecture 2: September 8 CS294 Markov Chain Monte Carlo: Foundations & Applications Fall 2009 Lecture 2: September 8 Lecturer: Prof. Alistair Sinclair Scribes: Anand Bhaskar and Anindya De Disclaimer: These notes have not been

More information

Definition A finite Markov chain is a memoryless homogeneous discrete stochastic process with a finite number of states.

Definition A finite Markov chain is a memoryless homogeneous discrete stochastic process with a finite number of states. Chapter 8 Finite Markov Chains A discrete system is characterized by a set V of states and transitions between the states. V is referred to as the state space. We think of the transitions as occurring

More information

Maximizing the numerical radii of matrices by permuting their entries

Maximizing the numerical radii of matrices by permuting their entries Maximizing the numerical radii of matrices by permuting their entries Wai-Shun Cheung and Chi-Kwong Li Dedicated to Professor Pei Yuan Wu. Abstract Let A be an n n complex matrix such that every row and

More information

Course : Algebraic Combinatorics

Course : Algebraic Combinatorics Course 18.312: Algebraic Combinatorics Lecture Notes #29-31 Addendum by Gregg Musiker April 24th - 29th, 2009 The following material can be found in several sources including Sections 14.9 14.13 of Algebraic

More information

Uniform Star-factors of Graphs with Girth Three

Uniform Star-factors of Graphs with Girth Three Uniform Star-factors of Graphs with Girth Three Yunjian Wu 1 and Qinglin Yu 1,2 1 Center for Combinatorics, LPMC Nankai University, Tianjin, 300071, China 2 Department of Mathematics and Statistics Thompson

More information

Semidefinite Programming

Semidefinite Programming Semidefinite Programming Basics and SOS Fernando Mário de Oliveira Filho Campos do Jordão, 2 November 23 Available at: www.ime.usp.br/~fmario under talks Conic programming V is a real vector space h, i

More information

Lecture 12: Introduction to Spectral Graph Theory, Cheeger s inequality

Lecture 12: Introduction to Spectral Graph Theory, Cheeger s inequality CSE 521: Design and Analysis of Algorithms I Spring 2016 Lecture 12: Introduction to Spectral Graph Theory, Cheeger s inequality Lecturer: Shayan Oveis Gharan May 4th Scribe: Gabriel Cadamuro Disclaimer:

More information

Chapter 7 Network Flow Problems, I

Chapter 7 Network Flow Problems, I Chapter 7 Network Flow Problems, I Network flow problems are the most frequently solved linear programming problems. They include as special cases, the assignment, transportation, maximum flow, and shortest

More information

Generalizations of the Strong Arnold Property and the Inverse Eigenvalue Problem of a Graph

Generalizations of the Strong Arnold Property and the Inverse Eigenvalue Problem of a Graph Generalizations of the and the Inverse Eigenvalue Problem of a Graph Iowa State University and American Institute of Mathematics MM Joint Mathematics Meetings Atlanta, GA, January 7, 2017 Joint work with

More information

BOUNDS FOR LAPLACIAN SPECTRAL RADIUS OF THE COMPLETE BIPARTITE GRAPH

BOUNDS FOR LAPLACIAN SPECTRAL RADIUS OF THE COMPLETE BIPARTITE GRAPH Volume 115 No. 9 017, 343-351 ISSN: 1311-8080 (printed version); ISSN: 1314-3395 (on-line version) url: http://www.ijpam.eu ijpam.eu BOUNDS FOR LAPLACIAN SPECTRAL RADIUS OF THE COMPLETE BIPARTITE GRAPH

More information

The spectrum of the edge corona of two graphs

The spectrum of the edge corona of two graphs Electronic Journal of Linear Algebra Volume Volume (1) Article 4 1 The spectrum of the edge corona of two graphs Yaoping Hou yphou@hunnu.edu.cn Wai-Chee Shiu Follow this and additional works at: http://repository.uwyo.edu/ela

More information

1 Matrix notation and preliminaries from spectral graph theory

1 Matrix notation and preliminaries from spectral graph theory Graph clustering (or community detection or graph partitioning) is one of the most studied problems in network analysis. One reason for this is that there are a variety of ways to define a cluster or community.

More information

Minimizing the Laplacian eigenvalues for trees with given domination number

Minimizing the Laplacian eigenvalues for trees with given domination number Linear Algebra and its Applications 419 2006) 648 655 www.elsevier.com/locate/laa Minimizing the Laplacian eigenvalues for trees with given domination number Lihua Feng a,b,, Guihai Yu a, Qiao Li b a School

More information

Math 443/543 Graph Theory Notes 5: Graphs as matrices, spectral graph theory, and PageRank

Math 443/543 Graph Theory Notes 5: Graphs as matrices, spectral graph theory, and PageRank Math 443/543 Graph Theory Notes 5: Graphs as matrices, spectral graph theory, and PageRank David Glickenstein November 3, 4 Representing graphs as matrices It will sometimes be useful to represent graphs

More information

Quantum walk algorithms

Quantum walk algorithms Quantum walk algorithms Andrew Childs Institute for Quantum Computing University of Waterloo 28 September 2011 Randomized algorithms Randomness is an important tool in computer science Black-box problems

More information

Lecture 5: Random Walks and Markov Chain

Lecture 5: Random Walks and Markov Chain Spectral Graph Theory and Applications WS 20/202 Lecture 5: Random Walks and Markov Chain Lecturer: Thomas Sauerwald & He Sun Introduction to Markov Chains Definition 5.. A sequence of random variables

More information

MATH 304 Linear Algebra Lecture 34: Review for Test 2.

MATH 304 Linear Algebra Lecture 34: Review for Test 2. MATH 304 Linear Algebra Lecture 34: Review for Test 2. Topics for Test 2 Linear transformations (Leon 4.1 4.3) Matrix transformations Matrix of a linear mapping Similar matrices Orthogonality (Leon 5.1

More information

ORIE 6334 Spectral Graph Theory September 8, Lecture 6. In order to do the first proof, we need to use the following fact.

ORIE 6334 Spectral Graph Theory September 8, Lecture 6. In order to do the first proof, we need to use the following fact. ORIE 6334 Spectral Graph Theory September 8, 2016 Lecture 6 Lecturer: David P. Williamson Scribe: Faisal Alkaabneh 1 The Matrix-Tree Theorem In this lecture, we continue to see the usefulness of the graph

More information

Reproducing Kernel Hilbert Spaces Class 03, 15 February 2006 Andrea Caponnetto

Reproducing Kernel Hilbert Spaces Class 03, 15 February 2006 Andrea Caponnetto Reproducing Kernel Hilbert Spaces 9.520 Class 03, 15 February 2006 Andrea Caponnetto About this class Goal To introduce a particularly useful family of hypothesis spaces called Reproducing Kernel Hilbert

More information

Fiedler s Theorems on Nodal Domains

Fiedler s Theorems on Nodal Domains Spectral Graph Theory Lecture 7 Fiedler s Theorems on Nodal Domains Daniel A. Spielman September 19, 2018 7.1 Overview In today s lecture we will justify some of the behavior we observed when using eigenvectors

More information

An Interlacing Approach for Bounding the Sum of Laplacian Eigenvalues of Graphs

An Interlacing Approach for Bounding the Sum of Laplacian Eigenvalues of Graphs An Interlacing Approach for Bounding the Sum of Laplacian Eigenvalues of Graphs Tilburg University joint work with M.A. Fiol, W.H. Haemers and G. Perarnau Laplacian matrix Eigenvalue interlacing Two cases

More information

Learning from Sensor Data: Set II. Behnaam Aazhang J.S. Abercombie Professor Electrical and Computer Engineering Rice University

Learning from Sensor Data: Set II. Behnaam Aazhang J.S. Abercombie Professor Electrical and Computer Engineering Rice University Learning from Sensor Data: Set II Behnaam Aazhang J.S. Abercombie Professor Electrical and Computer Engineering Rice University 1 6. Data Representation The approach for learning from data Probabilistic

More information

MATH 567: Mathematical Techniques in Data Science Clustering II

MATH 567: Mathematical Techniques in Data Science Clustering II This lecture is based on U. von Luxburg, A Tutorial on Spectral Clustering, Statistics and Computing, 17 (4), 2007. MATH 567: Mathematical Techniques in Data Science Clustering II Dominique Guillot Departments

More information

Very few Moore Graphs

Very few Moore Graphs Very few Moore Graphs Anurag Bishnoi June 7, 0 Abstract We prove here a well known result in graph theory, originally proved by Hoffman and Singleton, that any non-trivial Moore graph of diameter is regular

More information

Topics in Graph Theory

Topics in Graph Theory Topics in Graph Theory September 4, 2018 1 Preliminaries A graph is a system G = (V, E) consisting of a set V of vertices and a set E (disjoint from V ) of edges, together with an incidence function End

More information

Fiedler s Theorems on Nodal Domains

Fiedler s Theorems on Nodal Domains Spectral Graph Theory Lecture 7 Fiedler s Theorems on Nodal Domains Daniel A Spielman September 9, 202 7 About these notes These notes are not necessarily an accurate representation of what happened in

More information

Reproducing Kernel Hilbert Spaces

Reproducing Kernel Hilbert Spaces Reproducing Kernel Hilbert Spaces Lorenzo Rosasco 9.520 Class 03 February 11, 2009 About this class Goal To introduce a particularly useful family of hypothesis spaces called Reproducing Kernel Hilbert

More information

The effect on the algebraic connectivity of a tree by grafting or collapsing of edges

The effect on the algebraic connectivity of a tree by grafting or collapsing of edges Available online at www.sciencedirect.com Linear Algebra and its Applications 428 (2008) 855 864 www.elsevier.com/locate/laa The effect on the algebraic connectivity of a tree by grafting or collapsing

More information

MATH 829: Introduction to Data Mining and Analysis Graphical Models I

MATH 829: Introduction to Data Mining and Analysis Graphical Models I MATH 829: Introduction to Data Mining and Analysis Graphical Models I Dominique Guillot Departments of Mathematical Sciences University of Delaware May 2, 2016 1/12 Independence and conditional independence:

More information

Determinant of the distance matrix of a tree with matrix weights

Determinant of the distance matrix of a tree with matrix weights Determinant of the distance matrix of a tree with matrix weights R. B. Bapat Indian Statistical Institute New Delhi, 110016, India fax: 91-11-26856779, e-mail: rbb@isid.ac.in Abstract Let T be a tree with

More information

Inverse Perron values and connectivity of a uniform hypergraph

Inverse Perron values and connectivity of a uniform hypergraph Inverse Perron values and connectivity of a uniform hypergraph Changjiang Bu College of Automation College of Science Harbin Engineering University Harbin, PR China buchangjiang@hrbeu.edu.cn Jiang Zhou

More information

Lecture 1: Review of linear algebra

Lecture 1: Review of linear algebra Lecture 1: Review of linear algebra Linear functions and linearization Inverse matrix, least-squares and least-norm solutions Subspaces, basis, and dimension Change of basis and similarity transformations

More information

THE NORMALIZED LAPLACIAN MATRIX AND

THE NORMALIZED LAPLACIAN MATRIX AND THE NORMALIZED LAPLACIAN MATRIX AND GENERAL RANDIĆ INDEX OF GRAPHS A Thesis Submitted to the Faculty of Graduate Studies and Research In Partial Fulfillment of the Requirements for the Degree of Doctor

More information

Finding normalized and modularity cuts by spectral clustering. Ljubjana 2010, October

Finding normalized and modularity cuts by spectral clustering. Ljubjana 2010, October Finding normalized and modularity cuts by spectral clustering Marianna Bolla Institute of Mathematics Budapest University of Technology and Economics marib@math.bme.hu Ljubjana 2010, October Outline Find

More information

MATH 567: Mathematical Techniques in Data Science Clustering II

MATH 567: Mathematical Techniques in Data Science Clustering II Spectral clustering: overview MATH 567: Mathematical Techniques in Data Science Clustering II Dominique uillot Departments of Mathematical Sciences University of Delaware Overview of spectral clustering:

More information

The Signless Laplacian Spectral Radius of Graphs with Given Degree Sequences. Dedicated to professor Tian Feng on the occasion of his 70 birthday

The Signless Laplacian Spectral Radius of Graphs with Given Degree Sequences. Dedicated to professor Tian Feng on the occasion of his 70 birthday The Signless Laplacian Spectral Radius of Graphs with Given Degree Sequences Xiao-Dong ZHANG Ü À Shanghai Jiao Tong University xiaodong@sjtu.edu.cn Dedicated to professor Tian Feng on the occasion of his

More information

Critical Groups for Cayley Graphs of Bent Functions

Critical Groups for Cayley Graphs of Bent Functions Critical Groups for Cayley Graphs of Bent Functions Thomas F. Gruebl Adviser: David Joyner December 9, 2015 1 Introduction This paper will study the critical group of bent functions in the p-ary case.

More information

Spectral Graph Theory

Spectral Graph Theory Spectral raph Theory to appear in Handbook of Linear Algebra, second edition, CCR Press Steve Butler Fan Chung There are many different ways to associate a matrix with a graph (an introduction of which

More information

1 Adjacency matrix and eigenvalues

1 Adjacency matrix and eigenvalues CSC 5170: Theory of Computational Complexity Lecture 7 The Chinese University of Hong Kong 1 March 2010 Our objective of study today is the random walk algorithm for deciding if two vertices in an undirected

More information

Laplacian Integral Graphs with Maximum Degree 3

Laplacian Integral Graphs with Maximum Degree 3 Laplacian Integral Graphs with Maximum Degree Steve Kirkland Department of Mathematics and Statistics University of Regina Regina, Saskatchewan, Canada S4S 0A kirkland@math.uregina.ca Submitted: Nov 5,

More information

Linear Algebra and its Applications

Linear Algebra and its Applications Linear Algebra and its Applications 435 (2011) 1029 1033 Contents lists available at ScienceDirect Linear Algebra and its Applications journal homepage: www.elsevier.com/locate/laa Subgraphs and the Laplacian

More information

Spectral Graph Theory

Spectral Graph Theory Spectral Graph Theory Aaron Mishtal April 27, 2016 1 / 36 Outline Overview Linear Algebra Primer History Theory Applications Open Problems Homework Problems References 2 / 36 Outline Overview Linear Algebra

More information

Spectral radius of bipartite graphs

Spectral radius of bipartite graphs Linear Algebra and its Applications 474 2015 30 43 Contents lists available at ScienceDirect Linear Algebra and its Applications www.elsevier.com/locate/laa Spectral radius of bipartite graphs Chia-an

More information

8.1 Concentration inequality for Gaussian random matrix (cont d)

8.1 Concentration inequality for Gaussian random matrix (cont d) MGMT 69: Topics in High-dimensional Data Analysis Falll 26 Lecture 8: Spectral clustering and Laplacian matrices Lecturer: Jiaming Xu Scribe: Hyun-Ju Oh and Taotao He, October 4, 26 Outline Concentration

More information

Recitation 8: Graphs and Adjacency Matrices

Recitation 8: Graphs and Adjacency Matrices Math 1b TA: Padraic Bartlett Recitation 8: Graphs and Adjacency Matrices Week 8 Caltech 2011 1 Random Question Suppose you take a large triangle XY Z, and divide it up with straight line segments into

More information

Central Groupoids, Central Digraphs, and Zero-One Matrices A Satisfying A 2 = J

Central Groupoids, Central Digraphs, and Zero-One Matrices A Satisfying A 2 = J Central Groupoids, Central Digraphs, and Zero-One Matrices A Satisfying A 2 = J Frank Curtis, John Drew, Chi-Kwong Li, and Daniel Pragel September 25, 2003 Abstract We study central groupoids, central

More information

Linear estimation in models based on a graph

Linear estimation in models based on a graph Linear Algebra and its Applications 302±303 (1999) 223±230 www.elsevier.com/locate/laa Linear estimation in models based on a graph R.B. Bapat * Indian Statistical Institute, New Delhi 110 016, India Received

More information

Linear Algebra and its Applications

Linear Algebra and its Applications Linear Algebra and its Applications 436 (2012) 99 111 Contents lists available at SciVerse ScienceDirect Linear Algebra and its Applications journal homepage: www.elsevier.com/locate/laa On weighted directed

More information

Chapter 6 Inner product spaces

Chapter 6 Inner product spaces Chapter 6 Inner product spaces 6.1 Inner products and norms Definition 1 Let V be a vector space over F. An inner product on V is a function, : V V F such that the following conditions hold. x+z,y = x,y

More information

Spectral Continuity Properties of Graph Laplacians

Spectral Continuity Properties of Graph Laplacians Spectral Continuity Properties of Graph Laplacians David Jekel May 24, 2017 Overview Spectral invariants of the graph Laplacian depend continuously on the graph. We consider triples (G, x, T ), where G

More information

Econ Slides from Lecture 7

Econ Slides from Lecture 7 Econ 205 Sobel Econ 205 - Slides from Lecture 7 Joel Sobel August 31, 2010 Linear Algebra: Main Theory A linear combination of a collection of vectors {x 1,..., x k } is a vector of the form k λ ix i for

More information

The Adjacency Matrix, Standard Laplacian, and Normalized Laplacian, and Some Eigenvalue Interlacing Results

The Adjacency Matrix, Standard Laplacian, and Normalized Laplacian, and Some Eigenvalue Interlacing Results The Adjacency Matrix, Standard Laplacian, and Normalized Laplacian, and Some Eigenvalue Interlacing Results Frank J. Hall Department of Mathematics and Statistics Georgia State University Atlanta, GA 30303

More information

5 Quiver Representations

5 Quiver Representations 5 Quiver Representations 5. Problems Problem 5.. Field embeddings. Recall that k(y,..., y m ) denotes the field of rational functions of y,..., y m over a field k. Let f : k[x,..., x n ] k(y,..., y m )

More information

Note on deleting a vertex and weak interlacing of the Laplacian spectrum

Note on deleting a vertex and weak interlacing of the Laplacian spectrum Electronic Journal of Linear Algebra Volume 16 Article 6 2007 Note on deleting a vertex and weak interlacing of the Laplacian spectrum Zvi Lotker zvilo@cse.bgu.ac.il Follow this and additional works at:

More information

The Strong Largeur d Arborescence

The Strong Largeur d Arborescence The Strong Largeur d Arborescence Rik Steenkamp (5887321) November 12, 2013 Master Thesis Supervisor: prof.dr. Monique Laurent Local Supervisor: prof.dr. Alexander Schrijver KdV Institute for Mathematics

More information

Lecture 7. Econ August 18

Lecture 7. Econ August 18 Lecture 7 Econ 2001 2015 August 18 Lecture 7 Outline First, the theorem of the maximum, an amazing result about continuity in optimization problems. Then, we start linear algebra, mostly looking at familiar

More information

Math 18, Linear Algebra, Lecture C00, Spring 2017 Review and Practice Problems for Final Exam

Math 18, Linear Algebra, Lecture C00, Spring 2017 Review and Practice Problems for Final Exam Math 8, Linear Algebra, Lecture C, Spring 7 Review and Practice Problems for Final Exam. The augmentedmatrix of a linear system has been transformed by row operations into 5 4 8. Determine if the system

More information

Lecture 10: October 27, 2016

Lecture 10: October 27, 2016 Mathematical Toolkit Autumn 206 Lecturer: Madhur Tulsiani Lecture 0: October 27, 206 The conjugate gradient method In the last lecture we saw the steepest descent or gradient descent method for finding

More information

Conditioning of the Entries in the Stationary Vector of a Google-Type Matrix. Steve Kirkland University of Regina

Conditioning of the Entries in the Stationary Vector of a Google-Type Matrix. Steve Kirkland University of Regina Conditioning of the Entries in the Stationary Vector of a Google-Type Matrix Steve Kirkland University of Regina June 5, 2006 Motivation: Google s PageRank algorithm finds the stationary vector of a stochastic

More information

The Distance Spectrum

The Distance Spectrum The Distance Spectrum of a Tree Russell Merris DEPARTMENT OF MATHEMATICS AND COMPUTER SClENCE CALlFORNlA STATE UNlVERSlN HAYWARD, CAL lfornla ABSTRACT Let T be a tree with line graph T*. Define K = 21

More information

Lecture: Modeling graphs with electrical networks

Lecture: Modeling graphs with electrical networks Stat260/CS294: Spectral Graph Methods Lecture 16-03/17/2015 Lecture: Modeling graphs with electrical networks Lecturer: Michael Mahoney Scribe: Michael Mahoney Warning: these notes are still very rough.

More information

The spectra of super line multigraphs

The spectra of super line multigraphs The spectra of super line multigraphs Jay Bagga Department of Computer Science Ball State University Muncie, IN jbagga@bsuedu Robert B Ellis Department of Applied Mathematics Illinois Institute of Technology

More information

Spectra of Digraph Transformations

Spectra of Digraph Transformations Spectra of Digraph Transformations Aiping Deng a,, Alexander Kelmans b,c a Department of Applied Mathematics, Donghua University, 201620 Shanghai, China arxiv:1707.00401v1 [math.co] 3 Jul 2017 b Department

More information

2 trees T 1,T 2,...,T

2 trees T 1,T 2,...,T Volume 3, pp 95-305, March 0 http://mathtechnionacil/iic/ela ORDERING TREES BY THE MINIMAL ENTRIES OF THEIR DOUBLY STOCHASTIC GRAPH MATRICES SHUCHAO LI AND QIN ZHAO Abstract Gien an n-ertex graph G, the

More information

On the normalized Laplacian energy and general Randić index R 1 of graphs

On the normalized Laplacian energy and general Randić index R 1 of graphs On the normalized Laplacian energy and general Randić index R of graphs Michael Cavers a Shaun Fallat a Steve Kirkland ab3 a Department of Mathematics and Statistics University of Regina Regina SK Canada

More information

Chapter 3 Transformations

Chapter 3 Transformations Chapter 3 Transformations An Introduction to Optimization Spring, 2014 Wei-Ta Chu 1 Linear Transformations A function is called a linear transformation if 1. for every and 2. for every If we fix the bases

More information

Characterization of symmetric M-matrices as resistive inverses

Characterization of symmetric M-matrices as resistive inverses Characterization of symmetric M-matrices as resistive inverses E. Bendito, A. Carmona, A.M. Encinas and J.M. Gesto Departament de Matemàtica Aplicada III Universitat Politècnica de Catalunya. Abstract

More information

Absolutely continuous spectrum for random Schrödinger operators on tree-strips of finite cone type.

Absolutely continuous spectrum for random Schrödinger operators on tree-strips of finite cone type. Absolutely continuous spectrum for random Schrödinger operators on tree-strips of finite cone type. Christian Sadel University of California, Irvine Tucson, March 13th, 2012 C. Sadel (UCI) AC Spectrum

More information

Finite Frames and Graph Theoretical Uncertainty Principles

Finite Frames and Graph Theoretical Uncertainty Principles Finite Frames and Graph Theoretical Uncertainty Principles (pkoprows@math.umd.edu) University of Maryland - College Park April 13, 2015 Outline 1 Motivation 2 Definitions 3 Results Outline 1 Motivation

More information