Small World Dynamics and the Process of Knowledge Diffusion. The Case of the Metropolitan Area of Greater Santiago de Chile
Abstract
This paper aims to understand some of the mechanisms which dominate the phenomenon of
knowledge diffusion in the process that is called ‘interactive learning’. We examine how knowledge spreads
in a network in which agents have ‘face-to-face’ learning interactions. We define a social network structured
as a graph consisting of agents (vertices) and connections (edges) and situated on a grid which resembles the
geographical characteristics of the metropolitan area of Greater Santiago de Chile. The target of this
simulation is to test whether knowledge diffuses homogeneously or whether it follows some biased path
generating geographical divergence between a core area and a periphery. We also investigate the efficiency
of our ‘preference’ model of agent decision-making and show that this system evolves towards a small-world
type network.