SlideShare a Scribd company logo
2
Most read
3
Most read
17
Most read
MANOVA
Multivariate analysisWhen there is more than one dependent variable, it is inappropriate to do a series of univariate tests. Multivariate analysis of variance (MANOVA) is an extension  of analysis of variance, used  with two or more dependent variables
MANOVADeveloped as a theoretical construct by Samual S. Wilks in 1932
An extension of univariate ANOVA procedures to situations in which there are two or more related dependent variables (ANOVA analyses only a single DV at a time)
The MANOVA procedure identifies (inferentially) whether:
Different levels of the IVs have a significant effect on a linear combination of each of the DVs
There are interactions between the IVs and a linear combination of the DVs.
There are significant univariate effects for each of the DVs separately.MANOVA USAGEMANOVA is appropriate when we have several DVs which all measure different aspects of some cohesive theme, e.g., several different types of academic achievement (e.g., Maths, English, Science).
MANOVA works well in situations where there are moderate correlations between DVs. For very high or very low correlation in DVs, it is not suitable: if DVs are too correlated, there isn’t enough variance left over after the first DV is fit, and if DVs are uncorrelated, the multivariate test will lack power
"Because of the increase in complexity and ambiguity of results with MANOVA, one of the best overall recommendations is: Avoid it if you can." (Tabachnick & Fidell, 1983, p.230) Anova vs. ManovaWhy not multiple Anovas?Anovas run separately cannot take into account the pattern of covariation among the dependent measuresIt may be possible that multiple Anovas may show no differences while the Manova brings them outMANOVA is sensitive not only to mean differences but also to the direction and size of correlations among the dependents
Anova vs. ManovaConsider the following 2 group and 3 group scenarios, regarding two DVs Y1 and Y2If we just look at the marginal distributions of the groups on each separate DV, the overlap suggests a statistically significant difference would be hard to come by for either DVHowever, considering the joint distributions of scores on Y1 and Y2 together (ellipses), we may see differences otherwise undetectable
Anova vs. ManovaNow we can look for the greatest possible effect along some linear combination of Y1 and Y2The linear combination of the DVs created makes the differences among group means on this new dimension look as large as possible
Anova vs. ManovaSo, by measuring multiple DVs you increase your chances for finding a group differenceIn this sense, in many cases such a test has more power than the univariate procedure, but this is not necessarily true as some seem to believeAlso conducting multiple ANOVAs increases the chance for type 1 error and MANOVA can in some cases help control for the inflation
MANOVA ASSUMPTIONSSample size
Rule of thumb: the n in each cell > the number of DVs
Larger samples make the procedure more robust to violation of assumptions
Normality
MANOVA sig. tests assume multivariate normality, however when cell size > ~20 to 30 the procedure is robust violating this assumption
Note that univariate normality is not a guarantee of multivariate normality, but it does help.
Check univariate normality via histograms, normal probability plots, skewness, kurtosis, etc
Linearity

More Related Content

PPTX
Manova ppt
PDF
MANOVA SPSS
PPTX
Repeated anova measures ppt
PPT
PPTX
Multivariate data analysis
PPT
Analysis of covariance
PPTX
Multivariate analysis
PPT
Anova lecture
Manova ppt
MANOVA SPSS
Repeated anova measures ppt
Multivariate data analysis
Analysis of covariance
Multivariate analysis
Anova lecture

What's hot (20)

PDF
Anova, ancova, manova thiyagu
PPTX
Sign test
PPTX
Parametric test - t Test, ANOVA, ANCOVA, MANOVA
PPTX
Factor analysis
PDF
Multivariate Analaysis of Variance (MANOVA): Sharma, Chapter 11 - Bijan Yavar
PPTX
Anova, ancova
PPTX
Chi -square test
PPTX
Manova
PPTX
Anova (f test) and mean differentiation
PPTX
Lecture 6. univariate and bivariate analysis
PPTX
Correlation analysis
PPT
DIstinguish between Parametric vs nonparametric test
PPTX
ANCOVA-Analysis-of-Covariance.pptx
PPTX
non parametric statistics
PPTX
The median test
PPT
Chi – square test
PPTX
The mann whitney u test
ODP
Multiple Linear Regression II and ANOVA I
PPTX
Student t-test
Anova, ancova, manova thiyagu
Sign test
Parametric test - t Test, ANOVA, ANCOVA, MANOVA
Factor analysis
Multivariate Analaysis of Variance (MANOVA): Sharma, Chapter 11 - Bijan Yavar
Anova, ancova
Chi -square test
Manova
Anova (f test) and mean differentiation
Lecture 6. univariate and bivariate analysis
Correlation analysis
DIstinguish between Parametric vs nonparametric test
ANCOVA-Analysis-of-Covariance.pptx
non parametric statistics
The median test
Chi – square test
The mann whitney u test
Multiple Linear Regression II and ANOVA I
Student t-test
Ad

Similar to Manova (20)

PDF
manova-110702093736-phpapp02.pdf
DOCX
Manova Report
PPTX
MANOVA .pptx
PPTX
MANOVS.pptx
PDF
manova-a-multivariate-statistical-technique-for-data-analysis.pdf
PPTX
Full anova and manova by ammara aftab
PPTX
MANOVA-PPT-ABADIANO-JUSTINE-VARGAS--pptx
PPTX
MANOVA.pptx
PPTX
MONOVA
PPTX
Attractive presentation on Anova and manova by ammara aftab
PPT
PPTX
Anova ancova manova_mancova
PPTX
Manova
PPTX
ANOVA.pptxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx
PPTX
ANOVA biostat easy explaination .pptx
PPTX
Saleh PPT
DOCX
Advanced StatisticsUnit 5There are several r.docx
PPTX
manova.short.1.pptxfcghfhfhfhfhtjjgjggygygygy
DOCX
Looking up MANOVA, the purpose of this research method is to answe.docx
DOC
Mancova
manova-110702093736-phpapp02.pdf
Manova Report
MANOVA .pptx
MANOVS.pptx
manova-a-multivariate-statistical-technique-for-data-analysis.pdf
Full anova and manova by ammara aftab
MANOVA-PPT-ABADIANO-JUSTINE-VARGAS--pptx
MANOVA.pptx
MONOVA
Attractive presentation on Anova and manova by ammara aftab
Anova ancova manova_mancova
Manova
ANOVA.pptxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx
ANOVA biostat easy explaination .pptx
Saleh PPT
Advanced StatisticsUnit 5There are several r.docx
manova.short.1.pptxfcghfhfhfhfhtjjgjggygygygy
Looking up MANOVA, the purpose of this research method is to answe.docx
Mancova
Ad

More from Ashutosh Kumar Jha (20)

PPTX
Virgin mobile
PDF
Gillette report 2
PPTX
Gillette final
PDF
Nokia Supply Chain Management
PDF
Marlboro Brand Equity
PDF
Taj trapezium
PDF
Environmental issue pertaining to a business sudha gramodyog
PPTX
Taj Trapezium
PDF
Mandatory investment in csr
PDF
IBM B2B segments
PPTX
Kanban strategies
PPTX
Line Layout and Workstation Identification
PPTX
Lean manufacturing
PPTX
Operations management - Kortek electronics (india) pvt
DOCX
Tata JLR acquisition case study
PPTX
Eureka forbes
DOCX
Nokia distribution network delhi ncr
PPTX
Group7 nokia
DOCX
TQM - SPC Tools Report
PPTX
TQM - SPC Tools
Virgin mobile
Gillette report 2
Gillette final
Nokia Supply Chain Management
Marlboro Brand Equity
Taj trapezium
Environmental issue pertaining to a business sudha gramodyog
Taj Trapezium
Mandatory investment in csr
IBM B2B segments
Kanban strategies
Line Layout and Workstation Identification
Lean manufacturing
Operations management - Kortek electronics (india) pvt
Tata JLR acquisition case study
Eureka forbes
Nokia distribution network delhi ncr
Group7 nokia
TQM - SPC Tools Report
TQM - SPC Tools

Manova

  • 2. Multivariate analysisWhen there is more than one dependent variable, it is inappropriate to do a series of univariate tests. Multivariate analysis of variance (MANOVA) is an extension of analysis of variance, used with two or more dependent variables
  • 3. MANOVADeveloped as a theoretical construct by Samual S. Wilks in 1932
  • 4. An extension of univariate ANOVA procedures to situations in which there are two or more related dependent variables (ANOVA analyses only a single DV at a time)
  • 5. The MANOVA procedure identifies (inferentially) whether:
  • 6. Different levels of the IVs have a significant effect on a linear combination of each of the DVs
  • 7. There are interactions between the IVs and a linear combination of the DVs.
  • 8. There are significant univariate effects for each of the DVs separately.MANOVA USAGEMANOVA is appropriate when we have several DVs which all measure different aspects of some cohesive theme, e.g., several different types of academic achievement (e.g., Maths, English, Science).
  • 9. MANOVA works well in situations where there are moderate correlations between DVs. For very high or very low correlation in DVs, it is not suitable: if DVs are too correlated, there isn’t enough variance left over after the first DV is fit, and if DVs are uncorrelated, the multivariate test will lack power
  • 10. "Because of the increase in complexity and ambiguity of results with MANOVA, one of the best overall recommendations is: Avoid it if you can." (Tabachnick & Fidell, 1983, p.230) Anova vs. ManovaWhy not multiple Anovas?Anovas run separately cannot take into account the pattern of covariation among the dependent measuresIt may be possible that multiple Anovas may show no differences while the Manova brings them outMANOVA is sensitive not only to mean differences but also to the direction and size of correlations among the dependents
  • 11. Anova vs. ManovaConsider the following 2 group and 3 group scenarios, regarding two DVs Y1 and Y2If we just look at the marginal distributions of the groups on each separate DV, the overlap suggests a statistically significant difference would be hard to come by for either DVHowever, considering the joint distributions of scores on Y1 and Y2 together (ellipses), we may see differences otherwise undetectable
  • 12. Anova vs. ManovaNow we can look for the greatest possible effect along some linear combination of Y1 and Y2The linear combination of the DVs created makes the differences among group means on this new dimension look as large as possible
  • 13. Anova vs. ManovaSo, by measuring multiple DVs you increase your chances for finding a group differenceIn this sense, in many cases such a test has more power than the univariate procedure, but this is not necessarily true as some seem to believeAlso conducting multiple ANOVAs increases the chance for type 1 error and MANOVA can in some cases help control for the inflation
  • 15. Rule of thumb: the n in each cell > the number of DVs
  • 16. Larger samples make the procedure more robust to violation of assumptions
  • 18. MANOVA sig. tests assume multivariate normality, however when cell size > ~20 to 30 the procedure is robust violating this assumption
  • 19. Note that univariate normality is not a guarantee of multivariate normality, but it does help.
  • 20. Check univariate normality via histograms, normal probability plots, skewness, kurtosis, etc
  • 22. Linear relationships among all pairs of DVs
  • 23. Assess via scatterplots and bivariate correlations (check for each level of the IV(s
  • 28. This assumption is only important if using stepdown analysis, i.e., there is reason for ordering the DVs.
  • 29. Covariates must have a homogeneity of regression effect (must have equal effects on the DV across the groups)
  • 31. The F test from Box’s M statistics should be interpreted cautiously because it is a highly sensitive test of the violation of the multivariate normality assumption, particularly with large sample sizes.
  • 32. MANOVA is fairly robust to this assumption where there are equal sample sizes for each cell.MANOVA ASSUMPTIONSMulticollinearityand Singularity
  • 33. MANOVA works best when the DVs are only moderately correlated.
  • 34. When correlations are low, consider running separate ANOVAs
  • 35. When there is strong multicollinearity, there are redundant DVs (singularity) which decreases statistical efficiency.
  • 36. Correlations above .7, and particularly above .8 or .9 are reason for concern.
  • 38. MANOVA is sensitive to the effect of outliers (they impact on the Type I error rate)
  • 39. MANOVA can tolerate a few outliers, particularly if their scores are not too extreme and there is a reasonable N. If there are too many outliers, or very extreme scores, consider deleting these cases or transforming the variables involved (see Tabachnick & Fidell)DECISION TREE
  • 41. Multivariate test statisticsRoy's greatest characteristic root
  • 42. Tests for differences on only the first discriminant function
  • 43. Most appropriate when DVs are strongly interrelated on a single dimension
  • 44. Highly sensitive to violation of assumptions - most powerful when all assumptions are met
  • 46. Most commonly used statistic for overall significance
  • 47. Considers differences over all the characteristic roots
  • 48. The smaller the value of Wilks' lambda, the larger the between-groups dispersionMultivariate test statisticsHotelling'strace
  • 49. Considers differences over all the characteristic roots
  • 51. Considers differences over all the characteristic roots
  • 52. More robust than Wilks'; should be used when sample size decreases, unequal cell sizes or homogeneity of covariances is violatedTest statistics - PreferencesPillai’s criterion or wilk’s lambda is the preferred measure when the basic design considerations( adequate sample size, no violations of assumptions, approx. equal cell sizes) are met
  • 53. Pillai’s criterion is considered more robust and should be used if sample size decreases, unequal cell sizes appear or homogeneity of covariances is violated
  • 54. Roy’s gcris a more powerful test statistic if the researcher is confident that all assumptions are strictly met and the dependent measures are representative of a single dimension of effects
  • 55. In a vast majority of situations, all of statistical measures provide similar conclusionsMANOVA - ADVANTAGESIt tests the effects of several independent variables and several outcome (dependent) variables within a single analysis
  • 56. It has the power of convergence (no single operationally defined dependent variable is likely to capture perfectly the conceptual variable of interest)
  • 57. independent variables of interest are likely to affect a number of different conceptual variables- for example: an organisation's non-smoking policy will affect satisfaction, production, absenteeism, health insurance claims, etcIt can provide a more powerful test of significance than available when using univariate tests
  • 58. It reduces error rate compared with performing a series of univariate tests
  • 59. It provides interpretive advantages over a series of univariate ANOVAs
  • 60. Since only ‘one’ dependent variable is tested, the researcher is protected against inflating the type 1 error due to multiple comparisons. MANOVA - DISADVANTAGESDiscriminantfunctions are not always easy to interpret - they are designed to separate groups, not to make conceptual sense. In MANOVA, each effect evaluated for significance uses different discriminant functions (Factor A may be found to influence a combination of dependent variables totally different from the combination most affected by Factor B or the interaction between Factors A and B).
  • 61. Like discriminant analysis, the assumptions on which it is based are numerous and difficult to assess and meet.HOW TO AVOID MANOVA Combine or eliminate dependent variables so that only one dependent variable need be analyzed
  • 62. Use factor analysis to find orthogonal factors that make up the dependent variables, then use univariate ANOVAs on each factor (because the factors are orthogonal each univariate analysis should be unrelated)MANOVA - LIMITATIONSThe number of people in the smallest cell should be larger than the total number of dependent variables
  • 63. It can be very sensitive to outliers, for small N
  • 64. It assumes a linear relationship (some sort of correlation) between the dependent variables
  • 65. MANOVA won't give you the interaction effects between the main effect and the repeated factorMANOVA QuestionA researcher randomly assigns 33 subjects to one of three groups. The first group receives technical dietary information interactively from an on-line website. Group 2 receives the same information in from a nurse practitioner, while group 3 receives the information from a video tape made by the same nurse practitioner. The researcher looks at three different ratings of the presentation, difficulty, useful and importance, to determine if there is a difference in the modes of presentation. In particular, the researcher is interested in whether the interactive website is superior because that is the most cost-effective way of delivering the information.