Means
command:
Means 0.9087 0.8685Second, we declare a matrix for the means, e.g.
M Full 1 2
in
the matrices declaration section. Third, we can equate parameters for the first
and second twins by using a Specify
statement such as
Specify M 101 101where
101
is a parameter number that has not been used
elsewhere in the script. By using the same number for the two means,
they are constrained to be equal. Fourth, we include a model for the
means:
Means M;In the DZ group we also supply the observed means, and adjust the model for the means. We can then either (i) equate the mean for MZ twins to that for DZ twins by using the same matrix
M
, 'copied' from the MZ group or
equated to that of the MZ group as follows:
M Full 1 2 = M2where
M2
refers to matrix M
in group 2; to fit a no
heterogeneity model (Model I); or (ii) equate DZ twin 1 and DZ twin 2
means
but allow them to differ from the MZ means by declaring a new matrix
(possibly called M too; matrices are specific to the group in which
they are defined, unless they are equated to a matrix or copied from
a previous group) to fit a zygosity dependent means model
(
, Model II); or (iii) estimate four
means,
i.e., first and second twins in each of the MZ and DZ groups; to fit the
heterogeneity model (Model III).
This
third option gives a perfect fit to the data with regard to mean
structure, so that the only contribution to the fit function comes
from the covariance structure. Hence the four means model gives the
same goodness-of-fit as in the analyses ignoring means.
Table 6.6 reports the results of fitting models
incorporating means
Female | Male | ||||||||
Young | Older | Young | Older | ||||||
df | |||||||||
Model I | 6 | 7.84 | .25 | 5.74 | .57 | 12.81 | .05 | 5.69 | .58 |
Model II | 5 | 3.93 | .56 | 4.75 | .58 | 7.72 | .17 | 5.36 | .50 |
Model III | 3 | 3.71 | .29 | 2.38 | .67 | 7.28 | .06 | 5.03 | .17 |
Genetic Model | ADE | AE | ADE | AE | |||||
AE models have one more degree of freedom than shown in the df column |