| control {boot} | R Documentation | 
This function will find control variate estimates from a bootstrap output object. It can either find the adjusted bias estimate using post-simulation balancing or it can estimate the bias, variance, third cumulant and quantiles, using the linear approximation as a control variate.
control(boot.out, L = NULL, distn = NULL, index = 1, t0 = NULL,
        t = NULL, bias.adj = FALSE, alpha = NULL, ...)
| boot.out | A bootstrap output object returned from boot.  The bootstrap
replicates must have been generated using the usual nonparametric
bootstrap. | 
| L | The empirical influence values for the statistic of interest.  If Lis not supplied thenempinfis called to calculate
them fromboot.out. | 
| distn | If present this must be the output from smooth.splinegiving
the distribution function of the linear approximation.  This is used
only ifbias.adjisFALSE.  Normally this would be
found using a saddlepoint approximation. If it is not supplied in
that case then it is calculated bysaddle.distn. | 
| index | The index of the variable of interest in the output of boot.out$statistic. | 
| t0 | The observed value of the statistic of interest on the original data
set boot.out$data.  This argument is used only ifbias.adjisFALSE. The input value is ignored iftis not also supplied.  The default value is isboot.out$t0[index]. | 
| t | The bootstrap replicate values of the statistic of interest.  This
argument is used only if bias.adjisFALSE.  The input
is ignored ift0is not supplied also.  The default value isboot.out$t[,index]. | 
| bias.adj | A logical variable which if TRUEspecifies that the adjusted
bias estimate using post-simulation balance is all that is required.
Ifbias.adjisFALSE(default) then the linear
approximation to the statistic is calculated and used as a control
variate in estimates of the bias, variance and third cumulant as
well as quantiles. | 
| alpha | The alpha levels for the required quantiles if bias.adjisFALSE. | 
| ... | Any additional arguments that boot.out$statisticrequires.
These are passed unchanged every timeboot.out$statisticis
called.boot.out$statisticis called once ifbias.adjisTRUE, otherwise it may be called byempinffor
empirical influence calculations ifLis not supplied. | 
If bias.adj is FALSE then the linear approximation to
the statistic is found and evaluated at each bootstrap replicate.
Then using the equation T* = Tl*+(T*-Tl*), moment estimates can
be found.  For quantile estimation the distribution of the linear
approximation to t is approximated very accurately by
saddlepoint methods, this is then combined with the bootstrap
replicates to approximate the bootstrap distribution of t and
hence to estimate the bootstrap quantiles of t.
If bias.adj is TRUE then the returned value is the
adjusted bias estimate.
If bias.adj is FALSE then the returned value is a list
with the following components
| L | The empirical influence values used.  These are the input values if
supplied, and otherwise they are the values calculated by empinf. | 
| tL | The linear approximations to the bootstrap replicates tof
the statistic of interest. | 
| bias | The control estimate of bias using the linear approximation to tas a control variate. | 
| var | The control estimate of variance using the linear approximation to tas a control variate. | 
| k3 | The control estimate of the third cumulant using the linear
approximation to tas a control variate. | 
| quantiles | A matrix with two columns; the first column are the alpha levels
used for the quantiles and the second column gives the corresponding
control estimates of the quantiles using the linear approximation to tas a control variate. | 
| distn | An output object from smooth.splinedescribing the
saddlepoint approximation to the bootstrap distribution of the
linear approximation tot.  Ifdistnwas supplied on
input then this is the same as the input otherwise it is calculated
by a call tosaddle.distn. | 
Davison, A.C. and Hinkley, D.V. (1997) Bootstrap Methods and Their Application. Cambridge University Press.
Davison, A.C., Hinkley, D.V. and Schechtman, E. (1986) Efficient bootstrap simulation. Biometrika, 73, 555–566.
Efron, B. (1990) More efficient bootstrap computations. Journal of the American Statistical Association, 55, 79–89.
boot, empinf, k3.linear, linear.approx, saddle.distn, smooth.spline, var.linear
# Use of control variates for the variance of the air-conditioning data
mean.fun <- function(d, i)
{    m <- mean(d$hours[i])
     n <- nrow(d)
     v <- (n-1)*var(d$hours[i])/n^2
     c(m, v)
}
air.boot <- boot(aircondit, mean.fun, R = 999)
control(air.boot, index = 2, bias.adj = TRUE)
air.cont <- control(air.boot, index = 2)
# Now let us try the variance on the log scale.
air.cont1 <- control(air.boot, t0=log(air.boot$t0[2]),
                     t=log(air.boot$t[,2]))