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'''Multivariate analysis of variance (MANOVA)''' is a statistical test procedure for comparing multivariate (population) means of several groups. Unlike ANOVA, it uses the variance-covariance between variables in testing the statistical significance of the mean differences.


It is a generalized form of univariate [[analysis of variance]] (ANOVA). It is used when there are two or more dependent variables. It helps to answer : 1. do changes in the independent variable(s) have significant effects on the dependent variables; 2. what are the interactions among the dependent variables and 3. among the independent variables.<ref>Stevens, J. P. (2002). ''Applied multivariate statistics for the social sciences.'' Mahwah, NJ: Lawrence Erblaum.</ref>  Statistical reports however will provide individual p-values for each dependent variable, indicating whether differences and interactions are statistically significant.


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Where [[sums of squares]]{{dn|date=December 2013}} appear in univariate analysis of variance, in multivariate analysis of variance certain [[positive-definite matrix|positive-definite matrices]] appear.  The diagonal entries are the same kinds of sums of squares that appear in univariate [[ANOVA]].  The off-diagonal entries are corresponding sums of products.  Under normality assumptions about [[errors and residuals in statistics|error]] distributions, the counterpart of the sum of squares due to error has a [[Wishart distribution]].
 
Analogous to [[ANOVA]], MANOVA is based on the product of model variance matrix, <math>\Sigma_{model}</math> and
inverse of the error variance matrix, <math>\Sigma_{res}^{-1}</math>, or <math>A=\Sigma_{model} \times \Sigma_{res}^{-1}</math>.  The hypothesis that <math>\Sigma_{model} = \Sigma_{residual}</math> implies that the product <math>A \sim I</math>.<ref>{{cite web|last=Carey|first=Gregory|title=Multivariate Analysis of Variance (MANOVA): I. Theory|url=http://ibgwww.colorado.edu/~carey/p7291dir/handouts/manova1.pdf|accessdate=2011-03-22}}</ref>  Invariance considerations imply the MANOVA statistic should be a measure of [[magnitude (mathematics)|magnitude]] of the [[singular value decomposition]] of this matrix product, but there is no unique choice owing to the multi-[[dimension]]al nature of the alternative hypothesis.  
 
The most common<ref>{{cite web|last=Garson|first=G. David|title=Multivariate GLM, MANOVA, and MANCOVA|url=http://faculty.chass.ncsu.edu/garson/PA765/manova.htm|accessdate=2011-03-22}}</ref><ref>{{cite web|last=UCLA: Academic Technology Services, Statistical Consulting Group.|title=Stata Annotated Output -- MANOVA|url=http://www.ats.ucla.edu/stat/stata/output/Stata_MANOVA.htm|accessdate=2011-03-22}}</ref>  statistics are summaries based on the roots (or [[eigenvalues]]) <math>\lambda_p</math> of the <math>A</math> matrix:
* [[Samuel Stanley Wilks]]' <math>\Lambda_{Wilks} = \prod _{i=1...p}(1/(1 + \lambda_{i}))</math> distributed as [[Wilks' lambda distribution|lambda]] (Λ)
* the Pillai-[[M. S. Bartlett]] [[trace of a matrix|trace]], <math>\Lambda_{Pillai} = \sum _{i=1...p}(\lambda_{i}/(1 + \lambda_{i}))</math>
* the Lawley-[[Harold Hotelling|Hotelling]] trace, <math>\Lambda_{LH} = \sum _{i=1...p}(\lambda_{i})</math>
* [[Roy's greatest root]] (also called ''Roy's largest root''), <math>\Lambda_{Roy} = max_i(\lambda_i)</math>
 
Discussion continues over the merits of each, though the greatest root leads only to a bound on significance which is not generally of practical interest. A further complication is that the distribution of these statistics under the [[null hypothesis]] is not straightforward and can only be approximated except in a few low-dimensional cases.{{Citation needed|date=March 2013}} The best-known [[approximation]] for Wilks' lambda was derived by [[C. R. Rao]].
 
In the case of two groups, all the statistics are equivalent and the test reduces to [[Hotelling's T-square]].
 
==Correlation of dependent variables==
MANOVA is most effective when dependent variables are moderately correlated (.4 - .7). If dependent variables are too highly correlated it could be assumed that they may be measuring the same variable.
 
==See also==
*[[Discriminant function analysis]]
*[[Repeated measures design]]
 
==References==
{{reflist}}
 
==External links==
{{wikiversity}}
*[http://online.sfsu.edu/~efc/classes/biol710/manova/manovanewest.htm  Multivariate Analysis of Variance (MANOVA) by Aaron French, Marcelo Macedo, John Poulsen, Tyler Waterson and Angela Yu, San Francisco State University]
 
{{Statistics}}
{{Experimental design}}
 
[[Category:Analysis of variance]]
[[Category:Design of experiments]]

Revision as of 20:44, 30 January 2014

Template:Cleanup Multivariate analysis of variance (MANOVA) is a statistical test procedure for comparing multivariate (population) means of several groups. Unlike ANOVA, it uses the variance-covariance between variables in testing the statistical significance of the mean differences.

It is a generalized form of univariate analysis of variance (ANOVA). It is used when there are two or more dependent variables. It helps to answer : 1. do changes in the independent variable(s) have significant effects on the dependent variables; 2. what are the interactions among the dependent variables and 3. among the independent variables.[1] Statistical reports however will provide individual p-values for each dependent variable, indicating whether differences and interactions are statistically significant.

Where sums of squaresTemplate:Dn appear in univariate analysis of variance, in multivariate analysis of variance certain positive-definite matrices appear. The diagonal entries are the same kinds of sums of squares that appear in univariate ANOVA. The off-diagonal entries are corresponding sums of products. Under normality assumptions about error distributions, the counterpart of the sum of squares due to error has a Wishart distribution.

Analogous to ANOVA, MANOVA is based on the product of model variance matrix, and inverse of the error variance matrix, , or . The hypothesis that implies that the product .[2] Invariance considerations imply the MANOVA statistic should be a measure of magnitude of the singular value decomposition of this matrix product, but there is no unique choice owing to the multi-dimensional nature of the alternative hypothesis.

The most common[3][4] statistics are summaries based on the roots (or eigenvalues) of the matrix:

Discussion continues over the merits of each, though the greatest root leads only to a bound on significance which is not generally of practical interest. A further complication is that the distribution of these statistics under the null hypothesis is not straightforward and can only be approximated except in a few low-dimensional cases.Potter or Ceramic Artist Truman Bedell from Rexton, has interests which include ceramics, best property developers in singapore developers in singapore and scrabble. Was especially enthused after visiting Alejandro de Humboldt National Park. The best-known approximation for Wilks' lambda was derived by C. R. Rao.

In the case of two groups, all the statistics are equivalent and the test reduces to Hotelling's T-square.

Correlation of dependent variables

MANOVA is most effective when dependent variables are moderately correlated (.4 - .7). If dependent variables are too highly correlated it could be assumed that they may be measuring the same variable.

See also

References

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External links

Template:Wikiversity

Template:Statistics Template:Experimental design

  1. Stevens, J. P. (2002). Applied multivariate statistics for the social sciences. Mahwah, NJ: Lawrence Erblaum.
  2. Template:Cite web
  3. Template:Cite web
  4. Template:Cite web