Leo Breiman
{{Short description|American statistician}} {{no footnotes|date=February 2013}} {{Infobox scientist | name = Leo Breiman | image = Leo_Breiman.jpg | image_size = 200px | caption = Breiman in 2003 | birth_date = {{Birth date|1928|1|27}} | birth_place = [[New York City]], U.S. | death_date = {{Death date and age|2005|7|5|1928|1|27}} | death_place = [[Berkeley, California]], U.S. | field = [[Statistics]] | work_institutions = [[University of California, Berkeley]] | alma_mater = [[University of California, Berkeley]] | doctoral_advisor = [[Michel Loève]] | doctoral_students = [[Adele Cutler]][[Sam Buttrey]] | thesis_title = Homogeneous Processes | thesis_year = 1954 | thesis_url = http://oskicat.berkeley.edu/record=b12056407~S1 | known_for = [[Classification and regression tree|CART]], [[Bootstrap aggregating|Bagging]], [[Random forest]] | influences = | influenced = | prizes = | footnotes = }}
'''Leo Breiman''' (January 27, 1928 – July 5, 2005) was an American [[statistician]] at the [[University of California, Berkeley]] and a member of the [[United States National Academy of Sciences]].
Breiman's work helped to bridge the gap between statistics and [[computer science]], particularly in the field of [[machine learning]]. His most important contributions were his work on [[decision tree learning|classification and regression trees]] and ensembles of trees fit to [[bootstrap (statistics)|bootstrap]] samples. [[Bootstrap aggregating|Bootstrap aggregation]] was given the name [[bootstrap aggregating|''bagging'']] by Breiman. Another of Breiman's ensemble approaches is the [[random forest]].
== See also ==
- [[Shannon–McMillan–Breiman theorem]]
== Further reading ==
- Leo Breiman [http://www.berkeley.edu/news/media/releases/2005/07/07_breiman.shtml obituary], from the University of California, Berkeley
- [[Richard A. Olshen]] "[https://projecteuclid.org/journals/statistical-science/volume-16/issue-2/A-Conversaton-with-Leo-Breiman/10.1214/ss/1009213290.full A Conversation with Leo Breiman]," Statistical Science Volume 16, Issue 2, 2001 *{{Cite journal | last1 = Breiman | first1 = L. | title = Statistical Modeling: the Two Cultures | doi = 10.1214/ss/1009213725 | jstor = 2676681 | journal = Statistical Science | volume = 16 | issue = 3 | pages = 199–215 | year = 2001 | doi-access = }}
== External links == *{{MathGenealogy |id=32157}} *[http://www.york.ac.uk/depts/maths/histstat/people/breiman.gif Leo Breiman] from [http://www.york.ac.uk/depts/maths/histstat/people/welcome.htm PORTRAITS OF STATISTICIANS] *[http://videolectures.net/ecml03_breiman_teapb/ A video record] of a Leo Breiman's lecture about one of his machine learning techniques
{{Authority control}}
{{DEFAULTSORT:Breiman, Leo}} [[Category:1928 births]] [[Category:2005 deaths]] [[Category:20th-century American statisticians]] [[Category:Fellows of the American Statistical Association]] [[Category:Machine learning researchers]] [[Category:Members of the United States National Academy of Sciences]] [[Category:University of California, Berkeley College of Letters and Science faculty]] [[Category:Computational statisticians]]
{{US-statistician-stub}}
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