| subsets {car} | R Documentation | 
The regsubsets function in the leaps package finds
optimal subsets of predictors. This function plots a measure of fit
(see the statistic argument below) against subset size).
subsets(object, ...)
## S3 method for class 'regsubsets':
subsets(object, 
    names=abbreviate(object$xnames, minlength = abbrev), 
    abbrev=1, min.size=1, max.size=length(names), legend, 
    statistic=c("bic", "cp", "adjr2", "rsq", "rss"), 
    las=par('las'), cex.subsets=1, ...)
object | 
a regsubsets object produced by the regsubsets function
in the leaps package. | 
names | 
a vector of (short) names for the predictors, excluding the
regression intercept, if one is present; if missing, these are
derived from the predictor names in object. | 
abbrev | 
minimum number of characters to use in abbreviating predictor names. | 
min.size | 
minimum size subset to plot; default is 1. | 
max.size | 
maximum size subset to plot; default is number of predictors. | 
legend | 
TRUE to plot a legend of predictor names; defaults to TRUE if abbreviations are computed for predictor names. The legend is placed on the plot interactively with the mouse. | 
statistic | 
statistic to plot for each predictor subset; one of: 
"bic", Bayes Information Criterion; 
"cp", Mallows's Cp;
"adjr2", R^2 adjusted for degrees of freedom;
"rsq", unadjusted R^2;
"rss", residual sum of squares. | 
las | 
if 0, ticks labels are drawn parallel to the
axis; set to 1 for horizontal labels (see par). | 
cex.subsets | 
can be used to change the relative size of the characters used to
plot the regression subsets; default is 1. | 
... | 
arguments to be passed down to 
subsets.regsubsets and plot. | 
NULL. This function is used for its side effect –
to create a plot.
John Fox
    ## Not run: 
library(leaps)
subsets(regsubsets(undercount ~ ., data=Ericksen))
    
## End(Not run)