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In [[multivariate analysis]], '''ordination''' or '''[[gradient analysis]]''' is a method complementary to [[data clustering]], and used mainly in [[exploratory data analysis]] (rather than in [[hypothesis testing]]). Ordination [[partially ordered set|orders]] objects that are characterized by values on multiple variables (i.e., multivariate objects) so that similar objects are near each other and dissimilar objects are farther from each other. These relationships between the objects, on each of several axes (one for each variable), are then characterized numerically and/or graphically. Many ordination techniques exist, including [[principal components analysis]] (PCA), non-metric [[multidimensional scaling]] (NMDS), [[correspondence analysis]] (CA) and its derivatives ([[detrended correspondence analysis|detrended CA (DCA)]], canonical CA (CCA)), [[Bray–Curtis ordination]], and [[redundancy analysis]] (RDA), among others.
In [[multivariate analysis]], '''ordination''' or '''gradient analysis''' is a method complementary to [[data clustering]], and used mainly in [[exploratory data analysis]] (rather than in [[hypothesis testing]]). Ordination [[partially ordered set|orders]] objects that are characterized by values on multiple variables (i.e., multivariate objects) so that similar objects are near each other and dissimilar objects are farther from each other. These relationships between the objects, on each of several axes (one for each variable), are then characterized numerically and/or graphically. Many ordination techniques exist, including [[principal components analysis]] (PCA), non-metric [[multidimensional scaling]] (NMDS), [[correspondence analysis]] (CA) and its derivatives ([[detrended correspondence analysis|detrended CA (DCA)]], canonical CA (CCA)), [[Bray–Curtis ordination]], and [[redundancy analysis]] (RDA), among others.


==Applications==
==Applications==

Revision as of 17:52, 8 February 2017

In multivariate analysis, ordination or gradient analysis is a method complementary to data clustering, and used mainly in exploratory data analysis (rather than in hypothesis testing). Ordination orders objects that are characterized by values on multiple variables (i.e., multivariate objects) so that similar objects are near each other and dissimilar objects are farther from each other. These relationships between the objects, on each of several axes (one for each variable), are then characterized numerically and/or graphically. Many ordination techniques exist, including principal components analysis (PCA), non-metric multidimensional scaling (NMDS), correspondence analysis (CA) and its derivatives (detrended CA (DCA), canonical CA (CCA)), Bray–Curtis ordination, and redundancy analysis (RDA), among others.

Applications

See also

  • Multivariate statistics
  • Principal components analysis
  • Correspondence analysis
  • Multiple correspondence analysis
  • Detrended correspondence analysis
  • Intrinsic dimension
  • "Methodi Ordinatio: a proposed methodology to select and rank relevant scientific papers encompassing the impact factor, number of citation, and year of publication". Scientometrics. 105: 2109–2135. doi:10.1007/s11192-015-1744-x.

References

  • Birks, H.J.B., 1998. An Annotated Bibliography Of Canonical Correspondence Analysis And Related Constrained Ordination Methods 1986–1996. Botanical Institute, University of Bergen. World Wide Web: http://www.bio.umontreal.ca/Casgrain/cca_bib/index.html
  • Braak, C.J.F. ter & I.C. Prentice 1988 A theory of gradient analysis. Adv. Ecol. Res. 18:271-313.
  • Gauch, H.G., Jr. 1982. Multivariate Analysis in Community Ecology. Cambridge University Press, Cambridge.
  • Jongman et al., 1995. Data Analysis in Community and Landscape Ecology. Cambridge University Press, Cambridge.
  • Pagani et al., 2015. Methodi Ordinatio: a proposed methodology to select and rank relevant scientific papers encompassing the impact factor, number of citation, and year of publication. Scientometrics, December 2015, Volume 105, Issue 3, pp 2109-2135.

Further Reading

  1. General
  2. Specific Techniques
  3. Software