10.1184/R1/6471695.v1
Rajiv Garg
Rajiv
Garg
Michael Smith
Michael
Smith
Rahul Telang
Rahul
Telang
Measuring Information Diffusion in an Online Community
Carnegie Mellon University
2009
information diffusion
peer influence
new content discovery
online music community
social influence
empirical research
data mining
2009-05-01 00:00:00
Journal contribution
https://kilthub.cmu.edu/articles/journal_contribution/Measuring_Information_Diffusion_in_an_Online_Community/6471695
<p>Measuring peer influence in social networks is an important business and policy question that has become increasingly salient with the development of globally interconnected ICT networks. However, in spite of the new data sources available today, researchers still face many of the same measurement challenges that have been present in the literature for over four decades: homophily, reflection and selection problems, identifying the source of influence, and determining pre-existing knowledge. The goal of this paper is to develop an empirical approach for measuring information diffusion and discovery in online social networks that have these measurement challenges. We develop such an approach and apply it to data collected from 4,000 users of an online music community. We show that peers on such network significantly increase music discovery. Moreover, we demonstrate how future research can use this method to measure information discovery and diffusion using data from other online social networks.</p>