ordGroupBoot.Rd
When bootstrapping models for ordinal Y when Y is fairly continuous, it is frequently the case that one or more bootstrap samples will not include one or more of the distinct original Y values. When fitting an ordinal model (including a Cox PH model), this means that an intercept cannot be estimated, and the parameter vectors will not align over bootstrap samples. To prevent this from happening, some grouping of Y may be necessary. The ordGroupBoot
function uses cutGn()
to group Y so that the minimum number in any group is guaranteed to not exceed a certain integer m
. ordGroupBoot
tries a range of m
and stops at the lowest m
such that either all B
tested bootstrap samples contain all the original distinct values of Y (if B
>0), or that the probability that a given sample of size n
with replacement will contain all the distinct original values exceeds aprob
(B
=0). This probability is computed approximately using an approximation to the probability of complete sample coverage from the coupon collector's problem and is quite accurate for our purposes.
a numeric vector
number of bootstrap samples to test, or zero to use a coverage probability approximation
range of minimum group sizes to test; the default range is usually adequate
specifies that either the mean y
in each group should be returned, a factor
version of this with interval endpoints in the levels, or the computed value of m
should be returned
minimum coverage probability sought
set to FALSE
to not print the computed value of the minimum m
satisfying the needed condition
a numeric vector corresponding to y
but grouped, containing eithr the mean of y
in each group or a factor variable representing grouped y
, either with the minimum m
that satisfied the required sample covrage
set.seed(1)
x <- c(1:6, NA, 7:22)
ordGroupBoot(x, m=5:10)
#> Minimum m: 10
#> [1] 5.5 5.5 5.5 5.5 5.5 5.5 NA 5.5 5.5 5.5 5.5 16.5 16.5 16.5 16.5
#> [16] 16.5 16.5 16.5 16.5 16.5 16.5 16.5 16.5
ordGroupBoot(x, m=5:10, B=5000, what='factor')
#> Minimum m: 8
#> [1] [1, 8] [1, 8] [1, 8] [1, 8] [1, 8] [1, 8] [1, 8] [1, 8] [9,22] [9,22]
#> [11] [9,22] [9,22] [9,22] [9,22] [9,22] [9,22] [9,22] [9,22] [9,22] [9,22]
#> [21] [9,22] [9,22]
#> Levels: [1, 8] [9,22]