1 / 85

Dynamics of Complex Networks I: Networks II: Percolation

Dynamics of Complex Networks I: Networks II: Percolation. Panos Argyrakis Department of Physics University of Thessaloniki. Characteristics of networks: Structures that are formed by two distinct entities: Nodes Connections, synapses, edges N= 5 nodes , n= 4 connections

Download Presentation

Dynamics of Complex Networks I: Networks II: Percolation

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Dynamics of Complex NetworksI: NetworksII: Percolation Panos Argyrakis Department of Physics University of Thessaloniki

  2. Characteristics of networks: Structures that are formed by two distinct entities: Nodes Connections, synapses, edges N= 5 nodes, n=4 connections They can be simple structures or very complicated (belonging to the class of complex systems) How did it all start?

  3. Complexity Main Entry: 1com·plexFunction: nounEtymology: Late Latin complexus totality, from Latin, embrace, from complectiDate: 16431:a whole made up of complicated or interrelated parts A popular paradigm: Simple systems display complex behavior  non-linear systems  chaos  fractals 3 Body Problem Earth( ) Jupiter ( ) Sun ( ) What is Complexity?

  4. Image of the Internet at the AS level Scale-free P(k) ~ k-γ

  5. Network Structure

  6. 1970 – 10 hosts 1990 – 1.75*105 hosts Now – 1.2*109 hosts 1990 – 1 web site 1996 – 105 web sites Now – 109 web sites Internet and WWW explosive growth

  7. Internet and WWW are characteristic complex networks routers nodes domain (AS) Internet communication lines edges nodes web-sites WWW hyperlinks (URL) edges

  8. Connectivity between nodes in the Internet • How are the different nodes in the Internet connected? • No real top-down approach ever existed • Has been characterized by a large degree of randomness • What is the probability distribution function (PDF) of connectivities of all nodes? • Naïve approach: Normal distribution (Gaussian) • Experimental result? • Faloutsos, Faloutsos, and Faloutsos, 1997

  9. Assuming random connections Degree distribution, P(k): Probability that a node has k links (connections) with other nodes

  10. Gaussian distribution

  11. Probability distribution P(k) of the No. of connections(degree distribution)

  12. INTERNET BACKBONE Nodes: computers, routers Links: physical lines P(k) k=number of connections of a node P(k)= the distribution of k k (Faloutsos, Faloutsos and Faloutsos, 1997) P(k) ~ k-g

  13. Assuming random connections

  14. Degree distributionin a scale-free network P(k) ~ k -g

  15. What did we expect? k ~ 6 P(k=500) ~ 10-99 NWWW ~ 109  N(k=500)~10-90 We find: out= 2.45 in = 2.1 P(k=500) ~ 10-6 NWWW ~ 109  N(k=500) ~ 103 Pout(k) ~ k-out Pin(k) ~ k- in

  16. Netwotk with a power law(scale-free network)P(k) ~ k-g

  17. World Wide Web Nodes: WWW documents Links: URL links 800 million documents (S. Lawrence, 1999) ROBOT:collects all URL’s found in a document and follows them recursively R. Albert, H. Jeong, A-L Barabasi, Nature, 401 130 (1999)

  18. WWW It has apower-law Diameter ofWWW: <d>=0.35 + 2.06 logN For: Ν=8x108<d>=18.59 [compare to a square of same size: edge length=30000]

  19. Communication networks The Earth is developing an electronic nervous system, a network with diverse nodes and links are -computers -routers -satellites -phone lines -TV cables -EM waves Communication networks: Many non-identical components with diverseconnections between them.

  20. Coauthorship SCIENCE COAUTHORSHIP Nodes: scientist (authors) Links: write paper together (Newman, 2000, H. Jeong et al 2001)

  21. Citation 25 2212 SCIENCE CITATION INDEX Nodes: papers Links: citations Witten-Sander PRL 1981 1736 PRL papers (1988) P(k) ~k- ( = 3) (S. Redner, 1998)

  22. Actors ACTOR CONNECTIVITIES Nodes: actors Links: cast jointly Days of Thunder (1990) Far and Away (1992) Eyes Wide Shut (1999) N = 212,250 actors k = 28.78 P(k) ~k- =2.3

  23. Sex-web Nodes: people (Females; Males) Links: sexual relationships 4781 Swedes; 18-74; 59% response rate. Liljeros et al. Nature 2001

  24. Yeast protein network Nodes: proteins Links: physical interactions (binding) P. Uetz, et al.Nature 403, 623-7 (2000).

  25. What does it mean? Poisson distribution Power-law distribution Exponential Network Scale-free Network

  26. Network Backbone at University of Thessaloniki

  27. Connections with probability p p=1/6 N=10 k ~ 1.5 Poisson distribution The model ofErdös-Rényi(1960) Pál Erdös(1913-1996) - Democratic - Random

  28. Problem: • construct an Erdos-Renyi Network • use N=1000 • use p=0.1666 • draw a random number (rn) from a uniform distribution • if rn<0.1666 link exists, otherwise it does not • find the complete distribution of links for all N=1000 nodes • Construct the P(k) vs. k diagram

  29. TheErdos-Renyi model p=6x10-4 p=10-3

  30. Problem: Scale free networks • need a random number generator that produces random numbers with a power-law distribution • P(k)~ k-g • not so simple distribution • check book “Numerical Recipes” by Press et al • construction of network is more cumbersome • can do node-by-node….or • can do link-by-link • many more methods, e.g. thermalization and annealing of links

  31. Fill node-by-node 3 2 1 1 ? 3 1 1 5 3 2 2 2 1 1 2 2 1 1 1 1 k k-connectivity node, completed with k links k k-connectivity node, with missing links

  32. Link-to-link 3 3 2 2 1 1 1 1 5 5 3 3 2 2 2 2 1 1 2 2 1 1 1 1 k k-connectivity node, completed with k links k k-connectivity node, with missing links

  33. Regular network

  34. Small world network

  35. TheWatts-Strogatz model C(p) : clustering coeff. L(p) : average path length (Watts and Strogatz, Nature 393, 440 (1998))

  36. Small world network

  37. Small world network

  38. Small-world network

  39. Most real networks have similar internal structure: Scale-free networks Why? What does it mean?

  40. Origins SF (2) The additions are not uniform A node that already has a large number of connections is connected with larger probability than another node. Example: WWW : new topics usually go to well-known sites (CNN, YAHOO, NewYork Times, etc) Citation : papers that have a large number of references are more probable to be refered again Scale-free networks (1) The number of nodes is not pre-determined Τhe networks continuously expand with the addition of new nodes Example: WWW : addition of new pages Citation : publication of new articles

  41. BA model Scale-free networks P(k) ~k-3 (1)Growth:At every moment we add a new node withm connections (which is added to the already existing nodes). (2)Preferential Attachment:The probability Π that a new node will be connected to node i dependson the number ki , the number of connections of this node A.-L.Barabási, R. Albert, Science 286, 509 (1999)

  42. Network categories: • (1) Random network (Erdos-Renyi) • (2) Network on a regular lattice • (2) Small world network (Strogatz-Watts) • (3) Network with a power-law

  43. Society Nodes: individuals Links: social relationship (family/work/friendship/etc.) S. Milgram (1967) John Guare How many (n) connectionsare needed so that an individual is connected with any other person in the world? N=6 billion people Result: n~6 Conclusion:We live in a small world Six Degrees of Separation!!

  44. New books:

  45. Facebook: • 900,000,000 registered users • 50,000,000 active users • 5,000,000 generate 95% of the traffic • Questions needing answers: • How many people communicate ? • How many connections does one have? • How often does he communicate? • How long does it last?

  46. Real-world phenomena related to communication patterns • Crowd behavior: strategies to evacuate people and stop panic. • Search strategies: efficient networks for searching objects and people. • Traffic flow: optimization of collective flow. • Dynamics of collaboration: human relationship networks such as collaboration, opinion propagation and email networks. • Spread of epidemics: efficient immunization strategies. • Patterns in economics and finance: dynamic patterns in other disciplines, such as Economics and Finance, and Environmental networks.

  47. Where is George?

More Related