Generative Model To Construct Blog and Post Networks In Blogosphere
Web graphs have been very useful in the structural and statistical analysis of the web.
Various models have been proposed to simulate web graphs that generate degree distributions
similar to the web. Real world blog networks resemble many properties of web
graphs. But the dynamic nature of the blogosphere and the link structure evolving due to
blog readership and social interactions is not well expressed by the existing models.
In this research we propose a model for a blogger to construct blog graphs. We combine
the existing preferential attachment and random attachment model to generate blog
graphs which are type of scale-free networks. The blogger is modeled using read, write,
idle states and finite read memory. The combination of these techniques helps in evolution
of time stamped blog-blog and post-post network through citations within the blog-blog
network. Other parameters like the growth function and the randomness in reading and
writing posts help in the formation of graphs with different structural properties.
We empirically show that these simulated blog graph exhibits properties similar to the
real world blog networks in their degree distributions, degree correlations and clustering
coefficient. We believe that this model will help researchers to evaluate and analyze the
properties of the blogosphere and facilitate the testing of new algorithms.
Date: May 01, 2007
Type: MastersThesis
Publisher: University of Maryland at Baltimore County
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@MastersThesis{Generative_Model_To_Construct_Blog_and_P,
author = "Amit Karandikar",
title = "{Generative Model To Construct Blog and Post Networks In Blogosphere}",
month = "May",
year = "2007",
publisher = "University of Maryland at Baltimore County",
}