Experience versus Talent Shapes the Structure of the Web
Joseph S. Kong, Nima Sarshar, Vwani P. Roychowdhury

TL;DR
This paper empirically analyzes how experience and inherent talent influence the web's evolving structure, revealing that small talent differences are amplified by preferential attachment, shaping degree distributions and enabling talented pages to rise.
Contribution
It introduces a model combining experience and talent to explain web structure evolution, supported by large-scale crawl data analysis.
Findings
Web structure is shaped by experience and talent interplay.
Talent distribution is exponential with low variance.
Preferential attachment amplifies small talent differences.
Abstract
We use sequential large-scale crawl data to empirically investigate and validate the dynamics that underlie the evolution of the structure of the web. We find that the overall structure of the web is defined by an intricate interplay between experience or entitlement of the pages (as measured by the number of inbound hyperlinks a page already has), inherent talent or fitness of the pages (as measured by the likelihood that someone visiting the page would give a hyperlink to it), and the continual high rates of birth and death of pages on the web. We find that the web is conservative in judging talent and the overall fitness distribution is exponential, showing low variability. The small variance in talent, however, is enough to lead to experience distributions with high variance: The preferential attachment mechanism amplifies these small biases and leads to heavy-tailed power-law (PL)…
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