Applications:
Behavioral Science, Healthcare Research, Informatics, Social Science
Methodologies:
Bayesian Methods, Mathematical and Statistical Modeling, Networks, Statistics
Relevant Projects:

1. Modeling partially observed epidemics on dynamic contact networks

2. Vaccine safety surveillance using real-world healthcare databases


Fan Bu

Assistant Professor

Department of Biostatistics

I am broadly interested in Bayesian and computational statistics for analyzing large-scale and complex data. I am particularly interested in spatio-temporal statistics, network inference, infectious disease models, and distributed learning. My methodological research has been motivated by applications in public health, observational healthcare studies, computational social science, and sports sciences.

I came from a math background but studied statistics in order to become a sports analyst (yes, Moneyball!). Throughout my PhD and postdoc training, I grew a strong appreciation for social sciences (how people behave and interact) and health sciences (how to provide high-quality healthcare for everyone). I see data science as the field to help us make sense of complex data that arise from our daily life and scientific endeavors, by building reliable and reproducible frameworks that transform data to evidence and then to scientific findings and decisions.