Peter McCullagh
Irish statistician (born 1952) From Wikipedia, the free encyclopedia
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Irish statistician (born 1952) From Wikipedia, the free encyclopedia
Peter McCullagh FRS (born 8 January 1952) is a Northern Irish-born American statistician and John D. MacArthur Distinguished Service Professor in the Department of Statistics at the University of Chicago.[1]
Peter McCullagh | |
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Born | [1] Northern Ireland | 8 January 1952
Alma mater | |
Known for | McCullagh's parametrization of the Cauchy distributions |
Awards |
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Scientific career | |
Fields | Statistics |
Institutions | University of Chicago |
Thesis | Analysis of Ordered Categorical Data (1977) |
Doctoral advisor |
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Doctoral students | |
Website | www |
McCullagh is from Plumbridge, Northern Ireland. He attended the University of Birmingham and completed his PhD at Imperial College London, supervised by David Cox and Anthony Atkinson.[2]
McCullagh is the coauthor with John Nelder of Generalized Linear Models (1983, Chapman and Hall – second edition 1989), a seminal text on the subject of generalized linear models (GLMs) with more than 23,000 citations. [citation needed] He also wrote "Tensor Methods in Statistics", published originally in 1987.
McCullagh is a Fellow of the Royal Society and the American Academy of Arts and Sciences. He won the COPSS Presidents' Award in 1990. He was the recipient of the Royal Statistical Society's Guy Medal in Bronze in 1983 and in Silver in 2005.[citation needed]
He was also the recipient of the inaugural Karl Pearson Prize of the International Statistical Institute, with John Nelder, "for their monograph Generalized Linear Models (1983)".[3] He won a Notable Alumni Award in 2007 from his grammar school, St Columb's College.[citation needed]
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