A vector with n elements that
contains the response
variable. It can be either a row or a column vector.
Data Types: single| double
Data matrix of explanatory
variables (also called 'regressors')
of dimension (n x p-1). Rows of X represent observations, and
columns represent variables.
Missing values (NaN's) and infinite values (Inf's) are allowed,
since observations (rows) with missing or infinite values will
automatically be excluded from the computations.
Data Types: single| double
Specify optional comma-separated pairs of Name,Value
arguments.
Name
is the argument name and Value
is the corresponding value. Name
must appear
inside single quotes (' '
).
You can specify several name and value pair arguments in any order as
Name1,Value1,...,NameN,ValueN
.
Example:
'intercept',false
, 'la',[0 0.5]
, 'Lik',false
, 'nocheck',true
Indicator for the constant term (intercept) in the fit,
specified as the comma-separated pair consisting of
'Intercept' and either true to include or false to remove
the constant term from the model.
Example: 'intercept',false
Data Types: boolean
It specifies for which values of the
transformation parameter it is necessary to compute the
score test.
Default value of lambda is la=[-1 -0.5 0 0.5 1]; that
is the five most common values of lambda
Example: 'la',[0 0.5]
Data Types: double
If true the value of the likelihood for the augmented
model will be produced
else (default) only the value of the score test will be
given
Example: 'Lik',false
Data Types: logical
If nocheck is equal to true no check is performed on
matrix y and matrix X. Notice that y and X are left
unchanged. In other words the additional column of ones
for the intercept is not added. As default nocheck=false.
Example: 'nocheck',true
Data Types: boolean