1 Modelling, Mining, and Searching Networks Anthony Bonato Ryerson University Graduate Seminar October 2015.

Post on 17-Jan-2016

212 Views

Category:

Documents

0 Downloads

Preview:

Click to see full reader

Transcript

1

Modelling, Mining, and Searching Networks

Anthony BonatoRyerson University

Graduate SeminarOctober 2015

Networks - Bonato 2

21st Century Graph Theory:Complex Networks

• web graph, social networks, biological networks, internet networks, …

Networks - Bonato 3

• a graph G = (V(G),E(G)) consists of a nonempty set of vertices or nodes V, and a set of edges E

nodesedges

• in directed graphs (digraphs) E need not be symmetric

Networks - Bonato 4

Degrees• the degree of a node x, written

deg(x)

is the number of edges incident with x

First Theorem of Graph Theory:

V(G)x

|E(G)|2deg(x)

Networks - Bonato 5

The web graph

• nodes: web pages

• edges: links

• over 1 trillion nodes, with billions of nodes added each day

Networks - Bonato 6

Ryerson

GreenlandTourism

Frommer’s

Four SeasonsHotel

City of Toronto

Nuit Blanche

Networks - Bonato 7

Small World Property

• small world networks introduced by Watts & Strogatz in 1998– low distances

between nodes

Networks - Bonato 8

Power laws in the web graph• power law degree distribution

(Broder et al, 01)

2 some ,, bniN bni

Networks - Bonato 9

Geometric models• we introduced a

stochastic network model which simulates power law degree distributions and other properties– Spatially Preferred

Attachment (SPA) Model

• nodes have a region of influence whose volume is a function of their degree

Networks - Bonato 10

SPA model (Aiello,Bonato,Cooper,Janssen,Prałat, 09)

• as nodes are born, they are more likely to enter a region of influence with larger volume (degree)

• over time, a power law degree distribution results

Networks - Bonato 11

Networks - Bonato 12

Biological networks: proteomics

nodes: proteins

edges:

biochemical interactions

Yeast: 2401 nodes11000 edges

Networks - Bonato 13

Protein networks• proteins are essential

macromolecules of life• understanding their

function and role in disease is of importance

• protein-protein interaction networks (PPI)– nodes: proteins– edges:

biochemical interaction

Networks - Bonato 14

Domination sets in PPI (Milenkovic, Memisevic, Bonato, Przulj, 2011)

PLOS ONE• dominating sets in graphs

• we found that dominating sets in

PPI networks are vital for normal

cellular functioning and signalling– dominating sets capture biologically

vital proteins and drug targets– might eventually lead to new drug

therapies

Networks - Bonato 15

Social Networks

nodes: people

edges: social interaction

Networks - Bonato 16

On-line Social Networks (OSNs)Facebook, Twitter, LinkedIn, Google+…

17

Bieber to Pope Francis on

Networks - Bonato

18

6 Degrees in Facebook?• 1.15 billion users• (Backstrom et al., 2012)

– 4 degrees of separation in Facebook

– when considering another person in the world, a friend of your friend knows a friend of their friend, on average

• similar results for Twitter and other OSNs

Networks - Bonato

Networks - Bonato 19

Dimension of an OSN

• dimension of OSN: minimum number of attributes needed to classify nodes

• like game of “20 Questions”: each question narrows range of possibilities

• what is a credible mathematical formula for the dimension of an OSN?

Networks - Bonato 20

GEO-P model (Bonato et al, 2014): PLOS ONE

• reverse engineering approach– given network data GEO-P model predicts dimension

of an OSN to be around log n, where n is the number of users

• that is, given the graph structure, we can (theoretically) recover the social space

Networks - Bonato 21

6 Dimensions of Separation in Facebook and LinkedIn

Cops and Robbers

Networks - Bonato 22

C

C

C

R

Cops and Robbers

Networks - Bonato 23

C

C

C

R

Cops and Robbers

Networks - Bonato 24

C

C

C

R

cop number c(G) ≤ 3

Cops and Robbers

• minimum number of cops needed to capture the robber is the cop number c(G)–well-defined as c(G) ≤ |V(G)|

Networks - Bonato 25

Networks - Bonato 26

Applications of Cops and Robbers

• robotics– mobile computing– missile-defense– gaming

• counter-terrorism– intercepting messages

or agents

How big can the cop number be?

• if the graph G with order n is disconnected, then the cop number can be as n

• if G is connected, then no one knows how big the cop number can be!

• Meyniel’s Conjecture: c(G) = O(n1/2).

Networks - Bonato 27

Good guys vs bad guys games in graphs

28

slow medium fast helicopter

slow traps, tandem-win

medium robot vacuum Cops and Robbers edge searching eternal security

fast cleaning distance k Cops and Robbers

Cops and Robbers on disjoint edge sets

The Angel and Devil

helicopter seepage Helicopter Cops and Robbers, Marshals, The Angel and Devil,Firefighter

Hex

badgood

Networks - Bonato

Networks - Bonato 29

Networks - Bonato 30

Thesis topics• new models of complex networks• biological network models• Banking/financial networks• fitting models to data• Cops and Robbers games

– Meyniel’s conjecture, random graphs, variations: good vs bad guy games in graphs

Networks - Bonato 31

Brief biography

• over 90 papers, two original books, 7 edited proceedings books, with 61 collaborators (many of which are my students)

• over 480K lifetime research – grants from NSERC, MITACS, Mprime, and Ryerson– FOS accelerator (additional support available in Y1)

• supervised 12 masters students, 2 doctoral, and 13 post-docs• over 30 invited addresses world-wide (India, China, Europe, North

America)• won 2011 and 2009 Ryerson SRC awards for research excellence• won 2013 an inaugural YSGS Outstanding Contribution to Graduate

Education Award • editor-in-Chief of journal Internet Mathematics; editor of

Contributions to Discrete Mathematics

Networks - Bonato 32

Drop in office hours

• Wednesday, November 4, 10 am – 12 pm• Thursday, November 5, 10 am – 12 pm

• Yeates School of Graduate Studies • 11th floor of 1 Dundas St West, YDI – 1117

• Come to say hello, chat, discuss thesis topics

Networks - Bonato 33

AM8204 – Topics in Discrete Mathematics

• Winter 2014• 6 weeks each: complex networks, graph

searching• project based• Prequisite: AM8002 (or permission from

me)

Networks - Bonato 34

Graphs at Ryerson (G@R)

top related