Compute a weighted version of the empirical cumulative distribution function.
ewcdf(x, weights = NULL, normalise=TRUE, adjust=1)Numeric vector of observations.
Optional. Numeric vector of non-negative weights for x.
    Defaults to equal weight 1 for each entry of x.
Logical value indicating whether the weights should be rescaled so that they sum to 1.
Numeric value. Adjustment factor.
    The weights will be multiplied by adjust.
A function, of class "ewcdf", inheriting from 
  "ecdf" (if normalise=TRUE) and "stepfun".
This is a modification of the standard function ecdf
  allowing the observations x to have weights.
The weighted e.c.d.f. (empirical cumulative distribution function)
  Fn is defined so that, for any real number y, the value of
  Fn(y) is equal to the total weight of all entries of
  x that are less than or equal to y. That is
  Fn(y) = sum(weights[x <= y]).
Thus Fn is a step function which jumps at the
  values of x. The height of the jump at a point y
  is the total weight of all entries in x 
  number of tied observations at that value.  Missing values are
  ignored.
If weights is omitted, the default is equivalent to
  ecdf(x) except for the class membership.
The result of ewcdf is a function, of class "ewcdf",
  inheriting from the classes "ecdf" (if normalise=TRUE)
  and "stepfun".
  The class ewcdf has methods for print and quantile.
  The inherited classes ecdf and stepfun
  have methods for plot and summary.
ecdf.
# NOT RUN {
   x <- rnorm(100)
   w <- runif(100)
   plot(e <- ewcdf(x,w))
   e
# }
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