grimmer_map_total_n | R Documentation |
When reporting group means, some published studies only report the total sample size but no group sizes corresponding to each mean. However, group sizes are crucial for GRIMMER-testing.
In the two-groups case, grimmer_map_total_n()
helps in these ways:
It creates hypothetical group sizes. With an even total sample size, it incrementally moves up and down from half the total sample size. For example, with a total sample size of 40, it starts at 20, goes on to 19 and 21, then to 18 and 22, etc. With odd sample sizes, it starts from the two integers around half.
It GRIMMER-tests all of these values together with the group means.
It reports all the scenarios in which both "dispersed" hypothetical group sizes are GRIMMER-consistent with the group means.
All of this works with one or more total sample sizes at a time. Call
audit_total_n()
for summary statistics.
grimmer_map_total_n(
data,
x1 = NULL,
x2 = NULL,
sd1 = NULL,
sd2 = NULL,
dispersion = 0:5,
n_min = 1L,
n_max = NULL,
constant = NULL,
constant_index = NULL,
...
)
data |
Data frame with string columns |
x1 , x2 , sd1 , sd2 |
Optionally, specify these arguments as column names in
|
dispersion |
Numeric. Steps up and down from half the |
n_min |
Numeric. Minimal group size. Default is 1. |
n_max |
Numeric. Maximal group size. Default is |
constant |
Optionally, add a length-2 vector or a list of length-2
vectors (such as a data frame with exactly two rows) to accompany the pairs
of dispersed values. Default is |
constant_index |
Integer (length 1). Index of |
... |
Arguments passed down to |
A tibble with these columns:
x
, the group-wise reported input statistic, is repeated in row pairs.
n
is dispersed from half the input n
, with n_change
tracking the
differences.
both_consistent
flags scenarios where both reported x
values are
consistent with the hypothetical n
values.
case
corresponds to the row numbers of the input data frame.
dir
is "forth"
in the first half of rows and "back"
in the second
half. "forth"
means that x2
from the input is paired with the larger
dispersed n
, whereas "back"
means that x1
is paired with the larger
dispersed n
.
Other columns from grimmer_map()
are preserved. See there for an
explanation of the reason
column.
audit_total_n()
You can call
audit_total_n()
following up on grimmer_map_total_n()
to get a tibble with summary statistics. It will have these columns:
x1
, x2
, sd1
, sd2
, and n
are the original inputs.
hits_total
is the number of scenarios in which all of
x1
, x2
, sd1
, and sd2
are GRIMMER-consistent. It is the sum
of hits_forth
and hits_back
below.
hits_forth
is the number of both-consistent cases that result
from pairing x2
and sd2
with the larger dispersed n
value.
hits_back
is the same, except x1
and sd1
are
paired with the larger dispersed n
value.
scenarios_total
is the total number of test scenarios,
whether or not both x1
and sd1
as well as x2
and sd2
are GRIMMER-consistent.
hit_rate
is the ratio of hits_total
to scenarios_total
.
Bauer, P. J., & Francis, G. (2021). Expression of Concern: Is It Light or Dark? Recalling Moral Behavior Changes Perception of Brightness. Psychological Science, 32(12), 2042–2043. https://journals.sagepub.com/doi/10.1177/09567976211058727
Allard, A. (2018). Analytic-GRIMMER: a new way of testing the possibility of standard deviations. https://aurelienallard.netlify.app/post/anaytic-grimmer-possibility-standard-deviations/
Bauer, P. J., & Francis, G. (2021). Expression of Concern: Is It Light or Dark? Recalling Moral Behavior Changes Perception of Brightness. Psychological Science, 32(12), 2042–2043. https://journals.sagepub.com/doi/10.1177/09567976211058727
function_map_total_n()
, which created the present function using
grimmer_map()
.
# Run `grimmer_map_total_n()` on data like these:
df <- tibble::tribble(
~x1, ~x2, ~sd1, ~sd2, ~n,
"3.43", "5.28", "1.09", "2.12", 70,
"2.97", "4.42", "0.43", "1.65", 65
)
df
grimmer_map_total_n(df)
# `audit_total_n()` summaries can be more important than
# the detailed results themselves.
# The `hits_total` column shows all scenarios in
# which both divergent `n` values are GRIMMER-consistent
# with the `x*` values when paired with them both ways:
df %>%
grimmer_map_total_n() %>%
audit_total_n()
# By default (`dispersion = 0:5`), the function goes
# five steps up and down from `n`. If this sequence
# gets longer, the number of hits tends to increase:
df %>%
grimmer_map_total_n(dispersion = 0:10) %>%
audit_total_n()
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