Biosecure 2008 (2008)
Purnamrita Sarkar, Lujie Chen, and Artur Dubrawski
Abstract
Salmonella is among the most common food borne illnesses which may result
from consumption of contaminated products. In this paper we model the
co-occurrence data between USDA-controlled food processing establishments and
various strains of Salmonella (serotypes) as a network which evolves over time.
We apply a latent space model
originally developed for dynamic analysis of social networks to predict the
future link structure of the graph. Experimental results indicate predictive
utility of analyzing establishments as a network of interconnected entities as
opposed to modeling their risk independently of each other. The model can be
used to predict occurrences of a particular strain of Salmonella in the future.
That could potentially aid in proactive monitoring of establishments at risk,
allowing for early intervention and mitigation of adverse consequences to public
health.
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Approximate BibTeX Entry
@inproceedings{SarkarChenDubrawski208,
Year = {2008},
Volume = {LNCS 5354},
Pages = {56?63},
Publisher = {Springer-Verlag},
Address = {Berlin, Heidelberg},
Booktitle = {BioSecure 2008},
Editor = {D. Zeng et al.},
Title = {Biosecure 2008}
}