Examples of Complex Networks

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1 Examples of Complex Networks Neural Network (C. Elegans) Food Web Pj45Avc/s400/food%2Bweb.bmp 1

2 Metabolic Network Genetic Regulatory Network 2

3 Airline Routes US Power Grid 3

4 Internet World Wide Web (small part) From M. E. J. Newman and M. Girvin, Physical Review Letters E, 69, ,

5 12/5/2009 Social Network The Science of Networks Are there properties common to all complex networks? If so, why? Can we formulate a general theory of the structure, evolution, and dynamics of networks? 5

6 Observed common properties: Small world property Scale-free structure Clustering and community structure Robustness to random node failure Vulnerability to targeted hub attacks Vulnerability to cascading failures Nebraska farmer Boston stockbroker Stanley Milgram On average: six degrees of separation 6

7 The Small-World Property (Watts and Strogatz) The network has relatively few long-distance links but there are short paths between most pairs of nodes, usually created by hubs. Notion of average path length Notion of clustering coefficient Scale-Free Structure (Albert and Barabási, 1998) part of WWW Typical structure of a randomly connected network %20network.gif Typical structure of World Wide Web (nodes = web pages, links = links between pages) 7

8 Concept of Degree Distribution A node with degree 3 Number of Nodes Degree part of WWW Number of nodes Number of nodes Degree Degree 8

9 The Web s approximate Degree Distribution Scale-free distribution The probability that a node will have 1 degree k is proportional to 2 k Number of nodes power law Relation to fractals? Scale-free distribution = power law distribution Degree Other examples of power-laws in nature Magnitude vs. frequency of earthquakes Magnitude vs. frequency of stock market crashes Income vs. frequency (of people with that income) Populations of cities vs. frequency (of cities with that population) Word rank vs. frequency in English text 9

10 How are scale-free networks created? Barabàsi and Albert: Preferential attachment Netlogo demos Gutenberg-Richter Law By: Bak [1] 10

11 Regularity of Biological Extinctions By: Bak [1] More examples of scale-free networks 11

12 Robustness of Scale-Free Networks Vulnerable to targeted hub failure Robust to random node failure unless... nodes can cause other nodes to fail Can result in cascading failure August, 2003 electrical blackout in northeast US and Canada 9:29pm 1 day before images/imagerecords/3000/3719/ NE_US_OLS jpg 9:14pm Day of blackout 12

13 We see similar patterns of cascading failure in biological systems, ecological systems, computer and communication networks, wars, etc. 13

14 Risk Distributions Normal ( bell-curve) distributions Power law ( scale free ) distribution 14

15 Few economists saw our current crisis coming, but this predictive failure was the least of the field s problems. More important was the profession s blindness to the very possibility of catastrophic failures in a market economy. -- Paul Krugman, New York Times, September 6, 2009 Power law ( scale free ) distribution 15

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