See more details in huge
huge.ct(
x,
nlambda = NULL,
lambda.min.ratio = NULL,
lambda = NULL,
verbose = TRUE
)
There are 2 options: (1) x
is an n
by d
data matrix (2) a d
by d
sample covariance matrix. The program automatically identifies the input matrix by checking the symmetry. (n
is the sample size and d
is the dimension).
The number of regularization/thresholding parameters. The default value is 30
for method = "ct"
and 10
for method = "mb"
, "glasso"
or "tiger"
.
If method = "mb"
, "glasso"
or "tiger"
, it is the smallest value for lambda
, as a fraction of the upperbound (MAX
) of the regularization/thresholding parameter which makes all estimates equal to 0
. The program can automatically generate lambda
as a sequence of length = nlambda
starting from MAX
to lambda.min.ratio*MAX
in log scale. If method = "ct"
, it is the largest sparsity level for estimated graphs. The program can automatically generate lambda
as a sequence of length = nlambda
, which makes the sparsity level of the graph path increases from 0
to lambda.min.ratio
evenly.The default value is 0.1
when method = "mb"
, "glasso"
or "tiger"
, and 0.05 method = "ct"
.
A sequence of decreasing positive numbers to control the regularization when method = "mb"
, "glasso"
or "tiger"
, or the thresholding in method = "ct"
. Typical usage is to leave the input lambda = NULL
and have the program compute its own lambda
sequence based on nlambda
and lambda.min.ratio
. Users can also specify a sequence to override this. When method = "mb"
, "glasso"
or "tiger"
, use with care - it is better to supply a decreasing sequence values than a single (small) value.
If verbose = FALSE
, tracing information printing is disabled. The default value is TRUE
.
huge
, and huge-package
.