mutual_within {segregation} | R Documentation |
Calculates detailed within-category segregation scores for M and H
Description
Calculates the segregation between group
and unit
within each category defined by within
.
Usage
mutual_within(
data,
group,
unit,
within,
weight = NULL,
se = FALSE,
CI = 0.95,
n_bootstrap = 100,
base = exp(1),
wide = FALSE
)
Arguments
data |
A data frame. |
group |
A categorical variable or a vector of variables
contained in |
unit |
A categorical variable or a vector of variables
contained in |
within |
A categorical variable or a vector of variables
contained in |
weight |
Numeric. (Default |
se |
If |
CI |
If |
n_bootstrap |
Number of bootstrap iterations. (Default |
base |
Base of the logarithm that is used in the calculation. Defaults to the natural logarithm. |
wide |
Returns a wide dataframe instead of a long dataframe.
(Default |
Value
Returns a data.table with four rows for each category defined by within
.
The column est
contains four statistics that
are provided for each unit:
M
is the within-category M, and p
is the proportion of the category.
Multiplying M
and p
gives the contribution of each within-category
towards the total M.
H
is the within-category H, and ent_ratio
provides the entropy ratio,
defined as EW/E
, where EW
is the within-category entropy,
and E
is the overall entropy.
Multiplying H
, p
, and ent_ratio
gives the contribution of each within-category
towards the total H.
If se
is set to TRUE
, an additional column se
contains
the associated bootstrapped standard errors, an additional column CI
contains
the estimate confidence interval as a list column, an additional column bias
contains
the estimated bias, and the column est
contains the bias-corrected estimates.
If wide
is set to TRUE
, returns instead a wide dataframe, with one
row for each within
category, and the associated statistics in separate columns.
References
Henri Theil. 1971. Principles of Econometrics. New York: Wiley.
Ricardo Mora and Javier Ruiz-Castillo. 2011. "Entropy-based Segregation Indices". Sociological Methodology 41(1): 159–194.
Examples
## Not run:
(within <- mutual_within(schools00, "race", "school",
within = "state",
weight = "n", wide = TRUE
))
# the M for state "A" is .409
# manual calculation
schools_A <- schools00[schools00$state == "A", ]
mutual_total(schools_A, "race", "school", weight = "n") # M => .409
# to recover the within M and H from the output, multiply
# p * M and p * ent_ratio * H, respectively
sum(within$p * within$M) # => .326
sum(within$p * within$ent_ratio * within$H) # => .321
# compare with:
mutual_total(schools00, "race", "school", within = "state", weight = "n")
## End(Not run)