Graphics enhanced version of this site
Learning Outbreak Regions in Bayesian Spatial Scan Statistics
M. Makatchev and D.B. Neill
ICML 2008 Workshop on Machine Learning for Health Care Applications, Helsinki, Finland, July, 2008.
Jump to: Download | Abstract | Notes | Text Reference | BibTeX Reference
Adobe portable document format (pdf) [276 KB]
Copyright notice: This material is presented to ensure timely dissemination of scholarly and technical work. Copyright and all rights therein are retained by authors or by other copyright holders. All persons copying this information are expected to adhere to the terms and constraints invoked by each author's copyright. These works may not be reposted without the explicit permission of the copyright holder.
The problem of anomaly detection for biosurveillance is typically approached in an unsupervised setting, due to the small amount of labeled training data with positive examples of disease outbreaks. On the other hand, such model-based methods as the Bayesian scan statistic (BSS) naturally allow for adaptation to the supervised learning setting, provided that the models can be learned from a small number of training examples. We propose modeling the spatial characteristics of outbreaks from a small amount of training data using a generative model of outbreaks with latent center. We present the model and the EM-based learning of its parameters, and we compare its performance to the standard BSS method on simulated outbreaks injected into real-world Emergency Department visits data from Allegheny County, Pennsylvania.
Associated lab/group: Auton Lab
M. Makatchev and D.B. Neill, "Learning Outbreak Regions in Bayesian Spatial Scan Statistics," ICML 2008 Workshop on Machine Learning for Health Care Applications, Helsinki, Finland, July, 2008.
@inproceedings{Makatchev_2008_6103,
author = "Maxim Makatchev and Daniel Bertrand Neill",
title = "Learning Outbreak Regions in Bayesian Spatial Scan Statistics",
booktitle = "ICML 2008 Workshop on Machine Learning for Health Care Applications",
month = "July",
year = "2008",
address = "Helsinki, Finland"
}