Abstract
Researchers have begun to mine social network data in order to predict a variety of social, economic, and health related phenomena. While previous work has focused on predicting aggregate properties, such as the prevalence of seasonal influenza in a given country, we consider the task of fine-grained prediction of the health of specific people from noisy and incomplete data. We construct a probabilistic model that can predict if and when an individual will fall ill with high precision and good recall on the basis of his social ties and co-locations with other people, as revealed by their Twitter posts. Our model is highly scalable and can be used to predict general dynamic properties of individuals in large real-world social networks. These results provide a foundation for research on fundamental questions of public health, including the identification of non-cooperative disease carriers (“Typhoid Marys”), adaptive vaccination policies, and our understanding of the emergence of global epidemics from day-today interpersonal interactions.
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CITATION STYLE
Sadilek, A., Kautz, H., & Silenzio, V. (2012). Predicting Disease Transmission from Geo-Tagged Micro-Blog Data. In Proceedings of the 26th AAAI Conference on Artificial Intelligence, AAAI 2012 (pp. 136–142). AAAI Press. https://doi.org/10.1609/aaai.v26i1.8103
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