Title: MANOVA
1MANOVA
- LDF MANOVA
- Geometric example of MANOVA multivariate power
- MANOVA dimensionality
- Follow-up analyses if k gt 2
- Factorial MANOVA
2- ldf MANOVA
- 1 grouping variable and multiple others
(quantitative or binary) - Naming conventions
- LDF -- if the groups are naturally occurring
- bio-taxonomy to diagnostic categories
measurement - grouping variable is called the criterion
- others called the discriminator or predictor
variables - MANOVA -- if the groups are the result of IV
manipulation - multivariate assessment of agricultural
programs - grouping variable is called the IV
- others called the DVs
3- Ways of thinking about the new variable in
MANOVA - (like regression) involves constructing a new
quantitative variate from a weighted
combination of quantitative, binary, or coded
predictors, discriminators or DVs - The new variable is constructed so that when
it is used as the DV in an ANOVA, the F-value
will be as large as possible (simultaneously
maximizing between groups variation and
minimizing within-groups variation) - the new variable is called
- MANOVA variate -- a variate is constructed
from variables - linear discriminant function -- a linear
function of the original variables constructed
to maximally discriminate among the groups - canonical variate -- alludes to canonical
correlation as the general model within which
all corr and ANOVA models fit
4How MANOVA works -- two groups and 2 vars
Var 2
Var 1
Plot each participants position in this
2-space, keeping track of group membership.
Mark each groups centroid
5Look at the group difference on each variable,
separately.
Var 2
Var 1
The dash/dot lines show the mean difference on
each variable -- which are small relative to
within-group differences, so small Fs
6The MANOVA variate positioned to maximize
resulting F
Var 2
Var 1
In this way, two variables with non-significant
ANOVA Fs can combine to produce a significant
MANOVA F
7- Like ANOVA, ldf can be applied to two or more
groups. - When we have multiple groups there may be an
advantage to using multiple discriminant
functions to maximally discriminate between the
groups. - That is, we must decide whether the multiple
groups line up on a single dimension (called a
concentrated structure), or whether they are best
described by their position in a multidimensional
space (called a diffuse structure). - Maximum dimensions for a given analysis
- the smaller of groups - 1
- predictor variables
- e.g., 4 groups with 6 predictor variables ?
Max ldfs _____
8- Anticipating the number of dimensions (MANOVAs)
- By inspecting the group profiles, (means of
each group on each of the predictor variables)
you can often anticipate whether there will be
more than one ldf - if the groups have similar patterns of
differences (similar profiles) for each
predictor variable (for which there are
differences), then you would expect a single
discriminant function. - If the groups have different profiles for
different predictor variables, then you would
expect more than one ldf
Group Var1 Var2 Var3 Var4 Group
Var1 Var2 Var3 Var4 1 10
12 6 8 1
10 12 6 14 2
18 12 10 2 2
18 6 6 14 3
18 12 10 2 3
18 6 2 7
Concentrated 0 -
Diffuse 1st - 0
0 2nd 0 0 - -
9- Determining the number of dimensions (variates)
- Like other determinations, there is a
significance test involved - Each variate is tested as to whether it
contributes to the model using one of the
available F-tests of the ?-value. - The first variate will always account for the
most between-group variation (have the largest F
and Rc) -- subsequent variates are orthogonal
(providing independent information), and will
account for successively less between group
variation. - If there is a single variate, then the model is
said to have a concentrated structure - if there are 2 or more variates then the model
has a diffuse structure - the distinction between a concentrated and a
diffuse structure is considered the fundamental
multivariate question in a multiple group
analysis.
10- There are two major types of follow-ups when k gt
2 - Univariate follow-ups -- abandoning the
multivariate analysis, simply describe the
results of the ANOVA (with pairwise comparisons)
for each of the predictors (DVs) - MANOVA variate follow-ups -- use the ldf(s) as
DVs in ANOVA (with pairwise comparisons) to
explicate what which ldfs discriminate between
what groups - this nicely augments the spatial
re-classification depictions - if you have a concentrated structure, it tells
you exactly what groups can be significantly
discriminated - if you have a diffuse structure, it tells you
whether the second variate provides
discriminatory power the 1st doesnt
11- Factorial MANOVA
- A factorial MANOVA is applied with you have . . .
- a factorial design
- multiple DVs
- A factorial MANOVA analysis is (essentially) a
separate MANOVA performed for each of the
factorial effects, in a 2-way factorial . . . - Interaction effect
- one main effect
- other main effect
- It is likely that the MANOVA variates for the
effects will not be the same. Said differently,
different MANOVA main and interaction effects are
likely to be produced by different DV
combinations weightings. So, each variate for
each effect must be carefully examined and
interpreted!