Alan Agresti

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Alan Agresti
Born (1947-02-06) February 6, 1947 (age 77)
Alma mater University of Rochester
University of Wisconsin–Madison
Known for Categorical data analysis
Agresti–Coull interval
Scientific career
Fields Statistics
Thesis Bounds on the Extinction-Time Distribution of a Branching Process
Doctoral advisor Stephen Stigler
Doctoral students Ivy Liu
Brent Coull

Alan Gilbert Agresti (born February 6, 1947) is an American statistician and Distinguished Professor Emeritus at the University of Florida. [1] He has written several textbooks on categorical data analysis that are considered seminal in the field.

Contents

The Agresti–Coull confidence interval for a binomial proportion is named after him and his doctoral student Brent Coull. [2]

Biography

Agresti earned his bachelor's degree in mathematics from the University of Rochester in 1968. He earned his doctorate in statistics from the University of Wisconsin–Madison in 1972. His doctoral advisor was Stephen Stigler [3] and his thesis work was on stochastic processes.

He was a professor of statistics for many years at the University of Florida, from 1972 until his retirement in 2010 as a Distinguished Professor. [4] He was also a visiting professor at the department of statistics at Harvard University for several years. Notable doctoral students include Ivy Liu and Brent Coull. [5]

He wrote the textbook Categorical Data Analysis during a sabbatical year at Imperial College. [4]

He has taught short courses about categorical data analysis for 30 years at universities around the world, including at several Italian universities, and in 2017 became a dual citizen of Italy and the United States.

Honors and awards

He became a fellow of the American Statistical Association in 1990 and a fellow of the Institute of Mathematical Statistics in 2008. [6]

He received an honorary doctorate from De Montfort University in 1999.

He was named "Statistician of the Year" by the Chicago chapter of the American Statistical Association in 2003.

The workshop "Categorical Data Analysis & Friends" was held in his honor in Florence, Italy in 2019.[5]

Personal life

His wife is Jacki Levine. [7]

Selected works

Textbooks

Agresti has written several books on categorical data analysis, including An Introduction to Categorical Data Analysis and Categorical Data Analysis.

Other textbooks include the following:

Articles

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References

  1. ""Statistics is an evolving field, rather than a fixed toolbox": An interview with Alan Agresti on the book he is proudest of as Wiley publishes its third edition". Statistics Views. Retrieved 16 May 2020.
  2. Agresti, Alan; Coull, Brent A. (1998). "Approximate Is Better than "Exact" for Interval Estimation of Binomial Proportions". The American Statistician. 52 (2): 119–126. doi:10.2307/2685469. ISSN   0003-1305. JSTOR   2685469.
  3. "Alan Gilbert Agresti". Mathematics Genealogy Project. Retrieved 15 March 2020.
  4. 1 2 "Teaching the foundations of data analysis: An interview with Alan Agresti | StatsLife". www.statslife.org.uk. Retrieved 16 May 2020.
  5. "Alan Agresti - The Mathematics Genealogy Project". mathgenealogy.org. Retrieved 2023-04-09.
  6. "Alan Agresti Personal Homepage". University of Florida Department of Statistics. Retrieved 16 May 2020.
  7. Agresti, Alan (2013). Categorical Data Analysis. John Wiley & Sons. ISBN   978-1-118-71094-4 . Retrieved 17 May 2020.
  8. Agresti, Alan (1992). "A Survey of Exact Inference for Contingency Tables". Statistical Science. 7 (1): 131–153. CiteSeerX   10.1.1.296.874 . doi:10.1214/ss/1177011454. JSTOR   2246001.