For each response variable, the model can be written in the form
where
is the ith observation of the response variable.
are the k factor variables for the ith observation.
are the L covariates, including the intercept term.
is the symmetrized matrix of quadratic parameters, with diagonal elements equal to the coefficients of the pure quadratic terms
in the model and off-diagonal elements equal to half the coefficient of the corresponding crossproduct.
is the vector of linear parameters.
is the vector of covariate parameters, one of which is the intercept.
is the error associated with the ith observation. Tests performed by PROC RSREG assume that errors are independently and normally distributed with mean zero
and variance .
The parameters in ,
, and
are estimated by least squares. To optimize
with respect to
, take partial derivatives, set them to zero, and solve:
You can determine if the solution is a maximum or minimum by looking at the eigenvalues of :
If the eigenvalues… |
then the solution is… |
|
---|---|---|
are all negative |
a maximum |
|
are all positive |
a minimum |
|
have mixed signs |
a saddle point |
|
contain zeros |
in a flat area |
If the largest eigenvalue is positive, its eigenvector gives the direction of steepest ascent from the stationary point; if the largest eigenvalue is negative, its eigenvector gives the direction of steepest descent. The eigenvectors corresponding to small or zero eigenvalues point in directions of relative flatness.
The point on the optimum response ridge at a given radius R from the ridge origin is found by optimizing
over satisfying
, where
is the
vector containing the ridge origin and
and
are as previously discussed. By the method of Lagrange multipliers, the optimal
has the form
where is the
identity matrix and
is chosen so that
. There can be several values of
that satisfy this constraint; the correct one depends on which sort of response ridge is of interest. If you are searching
for the ridge of maximum response, then the appropriate
is the unique one that satisfies the constraint and is greater than all the eigenvalues of
. Similarly, the appropriate
for the ridge of minimum response satisfies the constraint and is less than all the eigenvalues of
. (See Myers and Montgomery (1995) for details.)