bestsetNoise(m = 100, n = 40, method = "exhaustive", nvmax = 3,
X = NULL, y=NULL, intercept=TRUE,
print.summary = TRUE, really.big = FALSE, ...)
bestset.noise(m = 100, n = 40, method = "exhaustive", nvmax = 3,
X = NULL, y=NULL, intercept=TRUE,
print.summary = TRUE, really.big = FALSE, ...)
bsnCV(m = 100, n = 40, method = "exhaustive", nvmax = 3,
X = NULL, y=NULL, intercept=TRUE, nfolds = 2,
print.summary = TRUE, really.big = FALSE)
bsnOpt(X = matrix(rnorm(25 * 10), ncol = 10), y = NULL, method = "exhaustive",
nvmax = NULL, nbest = 1, intercept = TRUE, criterion = "cp",
tcrit = NULL, print.summary = TRUE, really.big = FALSE,
...)
bsnVaryNvar(m = 100, nvar = nvmax:50, nvmax = 3, method = "exhaustive",
intercept=TRUE,
plotit = TRUE, xlab = "# of variables from which to select",
ylab = "p-values for t-statistics", main = paste("Select 'best'",
nvmax, "variables"),
details = FALSE, really.big = TRUE, smooth = TRUE)
exhaustive
search, or backward
selection,
or forward
selection, or sequential
replacement.NULL
, m
and n
are ignored.bsnOpt
). If tcrit
is non-NULL, it may be important to set this greater than one, in
order to have a good chance of finding modelbsnVaryVvar
).bsnOpt
).
Alternatives are tcrit
.bsnVaryVvar
)bsnVaryVvar
)bsnVaryVvar
.)bsnVaryVvar
.)bsnVaryVvar
)TRUE
to allow (currently) for more than
50 explanatory variables.bsnVaryVvar
).regsubsets()
.bestsetNoise
returns the lm
model object for the "best"
model with nvmax
explanatory columns.
bsnCV
returns as many models as there are folds.
bsnVaryVvar
silently returns either (details=FALSE
) a
matrix that has p-values of the coefficients for the details=TRUE
) a list with elements:nvar
. The statistics
returned are for the bsnOpt
silently returns a list with elements:lm
object) with nvmax
or
fewer columns of predictors. If tcrit
is non-NULL, and there
is no model for which all coefficients have t-statistics
less than tcrit
in absolute value, u1
will be NULL.tcrit
{For each model, the minimum of the absolute values of
the t-statistics.}
regsubsets_obj
{The object returned by the call to regsubsets
.}X
is not supplied, and in any case for bsnVaryNvar
, a
set of n
predictor variables are simulated as independent
standard normal, i.e. N(0,1), variates. Additionally a N(0,1) response
variable is simulated. The function bsnOpt
selects the
nvmax
or fewer explanatory variables,
where the argument criterion
specifies the criterion that will
be used to choose between models with different numbers of explanatory
columns. Other functions select the nvmax
explanatory columns. In any case, the selection is made
using the regsubsets()
function from the leaps package.
(The leaps package must be installed for this function to work.)
The function bsnCV
splits the data (randomly) into nfolds
(2 or more) parts. It puts each part aside in turn for use to fit
the model (effectively, test data), with the remaining data used
for selecting the variables that will be used for fitting. One model
fit is returned for each of the nfolds
parts.
The function bsnVaryVvar
makes repeated calls to
bestsetNoise
lm
leaps.out <- try(require(leaps, quietly=TRUE))
leaps.out.log <- is.logical(leaps.out)
if ((leaps.out.log==TRUE)&(leaps.out==TRUE)){
bestsetNoise(20,6) # `best' 3-variable regression for 20 simulated observations
# on 7 unrelated variables (including the response)
bsnCV(20,6) # `best' 3-variable regressions (one for each fold) for 20
# simulated observations on 7 unrelated variables
# (including the response)
bsnVaryNvar(m = 50, nvar = 3:6, nvmax = 3, method = "exhaustive",
plotit=FALSE, details=TRUE)
bsnOpt()
}
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