Cumulative structure and path length in networks of knowledge
P.G.J. Persoon

TL;DR
This paper analyzes the structure of knowledge networks, deriving exact solutions for path length distributions and showing how cumulative advantage effects influence network growth and path redundancy.
Contribution
It provides an exact solution for path length distribution in knowledge networks based on the Price model and explores the impact of cumulative advantage on network structure.
Findings
Cumulative advantage slows down path length growth.
Number of longest paths converges to a finite limit.
Network properties shape the structure of knowledge accumulation.
Abstract
An important knowledge dimension of science and technology is the extent to which their development is cumulative, that is, the extent to which later findings build on earlier ones. Cumulative knowledge structures can be studied using a network approach, in which nodes represent findings and links represent knowledge flows. Of particular interest to those studies is the notion of network paths and path length. Starting from the Price model of network growth, we derive an exact solution for the path length distribution of all unique paths from a given initial node to each node in the network. We study the relative importance of the average in-degree and cumulative advantage effect and implement a generalization where the in-degree depends on the number of nodes. The cumulative advantage effect is found to fundamentally slow down path length growth. As the collection of all unique paths…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Advanced Graph Neural Networks
