Introducing serendipity in a social network model of knowledge diffusion
Authored by Marco Cremonini
Date Published: 2016
DOI: 10.1016/j.chaos.2016.02.023
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Abstract
In this paper, we study serendipity as a possible strategy to control
the behavior of an agent-based network model of knowledge diffusion. The
idea of considering serendipity in a strategic way has been first
explored in Network Learning and Information Seeking studies. After
presenting the major contributions of serendipity studies to digital
environments, we discuss the extension to our model: Agents are enriched
with random topics for establishing new communication according to
different strategies. The results show how important network properties
could be influenced, like reducing the prevalence of hubs in the
network's core and increasing local communication in the periphery, similar to the effects of more traditional self-organization methods.
Therefore, from this initial study, when serendipity is
opportunistically directed, it appears to behave as an effective and
applicable approach to social network control. (C) 2016 Elsevier Ltd.
All rights reserved.
Tags
behavior
growth
Seeking