Genstat

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Genstat
Genstat interface.gif
Original author(s)John Nelder
Developer(s)VSN International (VSNi)
Stable release
19.1 / December 2017; 4 years ago (2017-12)[1]
Operating systemMicrosoft Windows
Available inEnglish
TypeStatistical package
Licenceproprietary
Websitewww.vsni.co.uk/software/Genstat

Genstat (General Statistics) is a statistical software package with data analysis capabilities, particularly in the field of agriculture.[2][3]

In 1968, it was developed by Rothamsted Research in the United Kingdom, and is designed to provide modular design, linear mixed models[4][page needed] and graphic functions.[5] It is presently developed and distributed by VSN International (VSNi),[6] which is owned by The Numerical Algorithms Group and Rothamsted Research.

Genstat is used in a number of research areas, including plant science, forestry, animal science, and medicine,[3] and is recognized by several universities and businesses.[which?]

Statistical features[edit]

Genstat includes statistical methods such as statistical tests, ANOVA, regression analysis, REML, etc.

See also[edit]

  • ASReml, a statistical package which fits linear mixed models to large data sets with complex variance models using Residual Maximum Likelihood (REML)

References[edit]

  1. ^ "What's New". genstat.kb.vsni.co.uk.
  2. ^ "AGRONOMIX Software inc., Software for plant breeding". Archived from the original on 2017-02-06.
  3. ^ a b "GenStat (General Statistical)". The University of Warwick.
  4. ^ Mixed Models and Multilevel Data Structures in Agriculture.
  5. ^ Gower, John C. (2015). "The Development of Statistical Computing at Rothamsted". International Statistical Review / Revue Internationale de Statistique. 83 (3): 357–370. ISSN 0306-7734.
  6. ^ "Statistics software success for spinout company VSN international". Biotechnology and Biological Sciences Research Council.

Further reading[edit]

Payne, R. W. (2009). "Genstat". Wiley Interdisciplinary Reviews: Computational Statistics. 1 (2): 255–258. doi:10.1002/wics.32.

External links[edit]