If type is "stationary", then the stationary
  bootstrap scheme with mean block length b according to Politis
  and Romano (1994) is computed. For type equals "block",
  the blockwise bootstrap with block length b according to
  Kuensch (1989) is used.   If m > 1, then the block of blocks bootstrap is computed
  (see Kuensch, 1989). The basic sampling scheme is the same as for 
  the case m = 1, except that the bootstrap is applied to a series
  y containing blocks of length m, where each block of y is
  defined as $y[t] = (x[t], \dots, x[t-m+1])$. Therefore, for the block
  of blocks bootstrap the first argument of statistic is given by
  a n x m matrix yb, where each row of yb contains one
  bootstrapped basic block observation $y[t]$ (n is the number of
  observations in x). 
  Note, that for statistics which are functions of the empirical
  m-dimensional marginal (m > 1) only this procedure
  yields asymptotically valid bootstrap estimates. The 
  case m = 1 may only be used for symmetric statistics (i.e., for
  statistics which are invariant under permutations of x).
  tsboot does not implement the block of blocks
  bootstrap, and, therefore, the first example in tsboot
  yields inconsistent estimates.
  
  For consistency, the (mean) block length b should grow with
  n at an appropriate rate. If b is not given, then a
  default growth rate of const * n^(1/3) is used. This rate is
  "optimal" under certain conditions (see the references for more
  details). However, in general the growth rate depends on the specific
  properties of the data generation process. A default value for
  const has been determined by a Monte Carlo simulation using a
  Gaussian AR(1) process (AR(1)-parameter of 0.5, 500
  observations). const has been chosen such that the mean square
  error for the bootstrap estimate of the variance of the empirical mean
  is minimized.  
  Note, that the computationally intensive parts are fully implemented
  in C which makes tsbootstrap about 10 to 30 times faster
  than tsboot.  
  
  Missing values are not allowed.
  There is a special print method for objects of class
  "resample.statistic" which by default uses
  max(3, getOption("digits") - 3) digits to format real numbers.