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MANOVA
Multivariate analysis When 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
MANOVA ,[object Object]
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.,[object Object]
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) ,[object Object]
Anova vs. Manova Consider the following 2 group and 3 group scenarios, regarding two DVs Y1 and Y2 If 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 DV However, considering the joint distributions of scores on Y1 and Y2 together (ellipses), we may see differences otherwise undetectable
Anova vs. Manova Now we can look for the greatest possible effect along some linear combination of Y1 and Y2 The linear combination of the DVs created makes the differences among group means on this new dimension look as large as possible
Anova vs. Manova So, by measuring multiple DVs you increase your chances for finding a group difference In 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 believe Also conducting multiple ANOVAs increases the chance for type 1 error and MANOVA can in some cases help control for the inflation
MANOVA ASSUMPTIONS ,[object Object]
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

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This study involves three independent groups (mode of presentation: website, nurse practitioner, video) and three dependent variables (ratings of presentation: difficulty, useful, importance). Therefore, MANOVA is the appropriate statistical analysis to use here since it allows comparison of multiple groups on multiple dependent variables simultaneously, while controlling for increased risk of Type 1 error that would occur from multiple univariate ANOVAs. A MANOVA would determine if there are any overall differences in the pattern of ratings across the three dependent variables based on mode of presentation. If significant, follow up univariate ANOVAs could help identify where specifically the differences lie. This addresses the researcher's question of whether the interactive website is superior in a single omnibus test, while accounting for the interrelationships between dependent

  • 2. Multivariate analysis When 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.
  • 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.
  • 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.
  • 11. Anova vs. Manova Consider the following 2 group and 3 group scenarios, regarding two DVs Y1 and Y2 If 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 DV However, considering the joint distributions of scores on Y1 and Y2 together (ellipses), we may see differences otherwise undetectable
  • 12. Anova vs. Manova Now we can look for the greatest possible effect along some linear combination of Y1 and Y2 The linear combination of the DVs created makes the differences among group means on this new dimension look as large as possible
  • 13. Anova vs. Manova So, by measuring multiple DVs you increase your chances for finding a group difference In 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 believe Also conducting multiple ANOVAs increases the chance for type 1 error and MANOVA can in some cases help control for the inflation
  • 14.
  • 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
  • 27.
  • 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.
  • 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.
  • 41.
  • 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.
  • 49. Considers differences over all the characteristic roots
  • 51. Considers differences over all the characteristic roots
  • 52.
  • 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.
  • 56. It has the power of convergence (no single operationally defined dependent variable is likely to capture perfectly the conceptual variable of interest)
  • 57.
  • 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.
  • 61.
  • 62.
  • 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.