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Welcome to Prof. Jianqing Fan's Statistics Lab. Fan's group is interested in
statistical methods in financial econometrics and risk managements,
computational biology, biostatistics, high-dimensional statistical learning,
data-analytic modeling, longitudinal and functional data analysis, nonlinear
time series, wavelets and their applications, among others. Our primary
research focuses on developing and justifying statistical methods that are
used to solve problems from the frontiers of scientific research. This is
expanded into other disciplines where the statistics discipline is useful. Recently, our group is particularly interested in financial econometrics, risk management, computational biology, biostatistics, high-dimensional data-analytic modeling and inferences, nonlinear time series, analysis of longitudinal and functional data, and other interdisciplinary collaborations. According to Science Watch, a weekly web publication by Thomson Reuters, Princeton University is a "high-impact" research institution in the areas of probability and statistics. Princeton claims the third spot among institutions ranked by the number of citations per paper. The comparison data was drawn from U.S.-based institutions, specifically those with at least 75 papers appearing in journals indexed by Thomas Reuters between 2005 and 2009. The rankings appear in this Sci-Bytes entry for the week of January 2nd, which cites InCites™ Global Comparisons as well as Thomson Reuters' publication index. |
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Fan's Stat
Lab, Princeton University | Sherrerd Hall 213,
Princeton, NJ 08544 |
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