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Presentation by: Petros Kavassalis ATLANTIS Group, University of Crete & ICS_FORTH, Greece

Explain emergence of structure in the World Wide Web Aggregation and competition under informational increasing returns. Presentation by: Petros Kavassalis ATLANTIS Group, University of Crete & ICS_FORTH, Greece Contact at: petros@itc.mit.edu. FET. together with:.

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Presentation by: Petros Kavassalis ATLANTIS Group, University of Crete & ICS_FORTH, Greece

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  1. Explain emergence of structure in the World Wide WebAggregation and competition under informational increasing returns Presentation by: Petros Kavassalis ATLANTIS Group, University of Crete & ICS_FORTH, Greece Contact at: petros@itc.mit.edu FET

  2. together with: • Stelios LELIS, ATLANTIS Group, Univ. of Crete, Greece • Charis LINA, ATLANTIS Group, Univ. of Crete, Greece • Manolis PETRAKIS, Dpt of Economics & ATLANTIS Group, Univ. of Crete, Greece • Jakka SAIRAMESH, IBM IAC, USA • Presentation at BT meeting: M. Vavalis, iCities Project Manager BT/January 2003

  3. agenda • A Web Simulated Economy (WSE)… • …To explain agglomeration and fast growth in the Web • Network approach to “Web’s Hidden Order” • Urban explanations of the web sites’ fast growth and differentiated competition BT/January 2003

  4. iCitiesproject funded byFET • WSE • Design of iCities ? Behavior Language Economic Geography & Case studies • Conceptual framework • Behavioral rules iCities project • Modeling experience • Analysis of • existing information cities Simulation Framework Internet Behavioral Models • Speed • Data-strucuture design • Parallel/distributed execution • Scalability • Configurability (programability) • Multiple models • Component-based • Data structures/interfaces • Economic frameworks • Bounded rationality • User heterogeneous preferences • Sites with differentiated offerings • Info propagation networks • Sites linked hierarchically • Network externalities BT/January 2003

  5. A Web Simulated Economy (iCities WSE) • On top of Mozart/Oz (SICS): rigorous simulation environment • Capturing essential characteristics of the real web economy: agglomeration & scale-free state in distribution of population across web sites • Capable to provide insight on empirical regularities: result of the joint action of superposed networks • Able to explain web organization and progressive, fast, web formation: reveal patterns of Internet population clustering into web locations • Reference: New Economic Geography • Agglomeration in the real world • Increasing returns • P. Krugman, B. Arthur BT/January 2003

  6. What the EconGeo has to say to the Web? • P. Krugman, The Self-organizing Economy • The geographical space reveals different forms of concentration of population and economic activity. These are not only the result of inherent differences between locations but also of some set of cumulative processes, necessarily involving some forms of increasing returns, whereby concentration can be self-reinforcing. • B. Arthur, Increasing Returns and Path Dependence in the Economy • Increasing returns are the tendency forthatwhich is ahead to get further ahead,for that which loses advantage to further lose advantage. They are mechanisms of increasing returns that operateto reinforce that which gains successor aggravate that which suffers loss. BT/January 2003

  7. Towards an economic geography of the Web • H1: Heterogeneous populations of agents • H2: Network structures matter • H3: There are Informational Increasing Returns BT/January 2003

  8. H1: An economy with two populations... • Internet Users with partial information • Web Sites with performance varying over the course BT/January 2003

  9. H2: Decision embedded in nets of interaction Word-of-mouth network or network externalities U Underlying network Portfolio of sites BT/January 2003

  10. H3: Informational Increasing Returns • Networks carry increasing returns • Word-of-mouth information propagation network (social network with local ties and long distance relationships) • Underlying network linking sites (navigation is hierarchical, produces “linkages”) • Amazon.com-like network externalities (agglomeration benefit) BT/January 2003

  11. The issue: explain power law regularity • A Web Simulated Economy (WSE)… • …To explain agglomeration and fast growth in the Web • Network approach to “Web’s Hidden Order” • Urban explanations of the web sites’ fast growth and differentiated competition BT/January 2003

  12. Xerox Internet Ecologies Project AOL Data, Proportion of sites Number of users Huberman’s diagnostic: Web Hidden Order! • The distribution of Internet users per web site follows a universal power law • A power law distribution is a straight line on a log-log scale Xerox Internet Ecologies Project AOL Data, BT/January 2003

  13. % users volume • % • sites • all sites • Our results • all sites • Xerox results • 0.1 • 9.28 • 32.36 • 1 • 56.79 • 55.63 • 5 • 85.27 • 74.81 • 10 • 92.77 • 82.26 • 50 • 98.96 • 94.92 We have reproduced it! BT/January 2003

  14. Why is this important? • We provide a network-base explanation for the power law regularity! • Internet consumers: • Surf the web • Learn about web sites by asking other people (word-of-mouth) or by surfing from one site to another along hyperlinks • Visit these sites, evaluate and include them in a portfolio of FVS (U = performance + e) • Have loyal behavior • Web sites BT/January 2003

  15. What does this imply? • A network approach to the power law issue: • Previous attempts: “random growth” models (from Simon to… Huberman) • Question: Where does such a growth come from? • Direction: Krugman sees in percolation models, one possible way around the problems with “random growth” models • We took that way: online concentration should be the result of a process involving random transport networks • Word-of-mouth information diffuses over a social network structure linking Internet users • Sites link network transport users from one site to another (navigational hierarchies) BT/January 2003

  16. In a nutshell… INFORMATIONAL INCREASING RETURNS Networks carry increasing returns Word-of-mouth network Sites linknetwork • Small world assumption • Watt-Storgatz (WS) beta model with • new nodes entering the game • Short path length • Large clustering coefficient • 1.Small world (WS model) • 2. Scale free network (Barabasi) • Directed links • New nodes enter the game • Rewiring of existing links • Preferential attachment BT/January 2003

  17. Small world-Small World: findings (I) Scatter plot: Sizeversus Age Scatter plot: Sizeversus Performance BT/January 2003

  18. Small world-Small World: findings (II) Evolution of growth rate for site ranked at position 1 Evolution of growth rate for site ranked at position 125 BT/January 2003

  19. Small world-Small World: findings (III) Sites succeeding to be ranked at the higher positions belong to “neighborhoods” of highly visited sites BT/January 2003

  20. Small world-Small World: findings (IV) Word of mouth (Centripetal) Exploration (Centrifugal) Users loyalty (Centrifugal) Clustering coefficient (Centrifugal) μ :power law exponent γ :proportion of sites that are visited at least by one user at final timestep BT/January 2003

  21. Small world-Scale free: findings (I) • Most findings are confirmed (slope: 1.4) BT/January 2003

  22. Small world-Scale free: findings (II) Scatter plot: Sizeversus Performance and In-degree Relative performance! BT/January 2003

  23. Small world-Scale free-Investments • Sites performance varies over time • Sites decide to make investments in predefined time intervals, to improve their performance (affront clutter costs) • Accumulated investments depreciate over time • Investments are made on the basis of • Growth rate • Market share (for established sites) • Investments produce a performance increment with a certain probability (there are attention costs) • Entry strategies suppose an investment to obtain a good performance and a number of in-links • Out- links are also growing over time • Algorithm for out-links growth BT/January 2003

  24. Small world-Scale free-Investments: findings (I) • A power law distribution in sites sizes is again obtained (in general and within categories) BT/January 2003

  25. Small world-Scale free-Investments: findings (II) • Sites’ growth rates fluctuate between time intervals in an uncorrelated fashion but about a positive mean value • This is evident in Huberman-Adamic’s data and they use it as an assumption to build their model • Right picture: Fractional fluctuations in the number of users of site ranked at position 60. BT/January 2003

  26. Small world-Scale free-Investments: findings (III) • Web sites’ age and popularity are slightly correlated • This is evident in Huberman-Adamic’s data. • Right picture: Scatter plot of the number of unique visitors versus age. BT/January 2003

  27. Small world-Scale free-Investments: findings (IV) • In- and out-degree distribution of sites follow power-laws. Out-degree distribution In-degree distribution BT/January 2003

  28. Small world-Scale free-Investments: findings (V) • Slight correlation between the age of sites and their number of in-coming links. • This is evident in Huberman-Adamic’s data. • Right picture: Scatter plot of the number of incoming links versus age. BT/January 2003

  29. Small world-Scale free-Investments: findings (VI) • Again: • Relative performance is awarded more than absolute performance • A number of late entrants may survive and prosper (our model spans over Huberman and Barabasi’s models) • But: • As economic variables enter directly the model, they are able to break down the power law stability • Or, a power law distribution survives as long as new sites enter regularly the game (our assumption: exponential entry rate) • Then? Instability? What kind of instability? BT/January 2003

  30. The issue: provide directly economic explanations • A Web Simulated Economy (WSE)… • …To explain agglomeration and fast growth in the Web • Network approach to “Web’s Hidden Order” • Urban explanations of the web sites’ fast growth and differentiated competition BT/January 2003

  31. Users of the web location j Web location j web topology • Performance • Vector of products j Search engine externality portfolio of user i User i • Vector of preferences An info-economy for experience goods BT/January 2003

  32. Internet users • Have preferences over content/service categories (e.g. Books, Internet communication) and versions (generic/scientific, e-mail/instant messaging/chat rooms etc) • Have a portfolio of frequently visited sites • Find new sites to visit through: • Search Engine. Users periodically submit queries related to their preferences to a search engine • Exploration. Users surf from one site to another following the links of sites network • Evaluate new sites and include in their portfolio the sites with the highest utility • Users are loyal to their portfolio sites/They include a new site in their portfolio after number λ visits to that site (stickiness) • Users’ utility function depends on • Site performance • Matching of user preferences and site offerings • Agglomeration benefit BT/January 2003

  33. Web sites • Offer a vector of product versions on specific content/service categories • Have a dynamic performance characteristic , rj, that determines their performance in practice. • Periodically make investment to ameliorate their performance • May offer services that provide an additional benefit (“agglomeration” benefit/AB) to their visitors: • When agents make choices about web sites, they receive a payoff depending on the number of agents having already visited that site at the time of choice Configuration with 3 types of sites n versions in 1 category + AB Specialized Highly Differentiated n versions in m categories [1…n] versions in 2 categories + AB with some probability Partially Differentiated BT/January 2003

  34. Model ingredients • Investment Strategy • Conservative • Aggressive • Entry strategy • Initial investments • Strategic use of “in-links” opportunities • Strategic use of Search Engines’ promotion opportunities • Continuously updated Sites link network • Sites implement a “where to link” strategy (according to categorial relatedness and popularity) • Random update • Growing number of out- links BT/January 2003

  35. Principal formal elements BT/January 2003

  36. Results (I) New entrants can enter top ranks Evidence of concentration BT/January 2003

  37. Results (II) • Fast growth pattern is due to various networks that are present (mostly to the sites link network) and depends also on how search engines are doing their work • Coexistence of Highly Diversified, Partially Diversified & Specialized Sites • The Agglomeration Benefit introduces interesting criticalities • Early entry seems to be related with a higher probability of success (however, late entrants can survive and prosper) • Strategic investment produces instability • Speculation: Instability would evolve to a “cable TV”-like industrial organization model? BT/January 2003

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