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vardpoor (version 0.2.0.9.2)

lingpg: Linearization of the gender pay (wage) gap.

Description

Estimate the gender pay (wage) gap and its linearization.

Usage

lingpg(inc, gender = NULL, id, 
       weight=NULL, sort = NULL,
       Dom = NULL, period=NULL,
       dataset = NULL, na.rm=FALSE,
       var_name="lin_gpg")

Arguments

inc
Study variable (for example equivalized disposable income). One dimentional object convertable to one-column data.frame or variable name as character, column number or logical vector with only one TRUE value (length of the vector
gender
Factor variable for gender. One dimentional object convertable to one-column data.frame or variable name as character, column number or logical vector with only one TRUE value (length of the vector has to be the same as the colum
id
Optional variable for unit ID codes. One dimentional object convertable to one-column data.frame or variable name as character, column number or logical vector with only one TRUE value (length of the vector has to be the same as
weight
Optional weight variable. One dimentional object convertable to one-column data.frame or variable name as character, column number or logical vector with only one TRUE value (length of the vector has to be the same as the column
sort
Optional variable to be used as tie-breaker for sorting. One dimentional object convertable to one-column data.frame or variable name as character, column number or logical vector with only one TRUE value (length of the vector ha
Dom
Optional variables used to define population domains. If supplied, linearization of the at-risk-of-poverty rate is done for each domain. An object convertable to data.frame or variable names as character vector, column numbers or logical vect
period
Optional variable for survey period. If supplied, linearization of the at-risk-of-poverty rate is done for each time period. Object convertable to data.frame or variable names as character, column numbers or logical vector (length of the vect
dataset
Optional survey data object convertable to data.frame.
na.rm
A logical value indicating whether missing values in study variable should be removed.
var_name
A character specifying the name of the linearized variable.

Value

  • A list with two objects are returned by the function:
  • valueA data.frame containing the estimated gender pay (wage) gap (in percentage).
  • linA data.frame containing the linearized variables of the gender pay (wage) gap (in percentage)..

References

Working group on Statistics on Income and Living Conditions (2004) Common cross-sectional EU indicators based on EU-SILC; the gender pay gap. EU-SILC 131-rev/04, Eurostat. Guillaume Osier (2009). Variance estimation for complex indicators of poverty and inequality. Journal of the European Survey Research Association, Vol.3, No.3, pp. 167-195, ISSN 1864-3361, URL https://ojs.ub.uni-konstanz.de/srm/article/view/369. Jean-Claude Deville (1999). Variance estimation for complex statistics and estimators: linearization and residual techniques. Survey Methodology, 25, 193-203, URL http://www5.statcan.gc.ca/bsolc/olc-cel/olc-cel?lang=eng&catno=12-001-X19990024882.

See Also

linqsr, lingini, varpoord

Examples

Run this code
data(ses)
dati=data.frame(1:nrow(ses),ses)
colnames(dati)[1]<-"ID"
gpgs2<-lingpg("earningsHour", gender="sex", id="ID", weight="weights",
               Dom="education", dataset=dati)
gpgs2$value

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