il_additional: Additional Information-Loss measures

IL_correlR Documentation

Additional Information-Loss measures

Description

Measures IL_correl() and IL_variables() were proposed by Andrzej Mlodak and are (theoretically) bounded between 0 and 1.

Usage

IL_correl(x, xm)

## S3 method for class 'il_correl'
print(x, digits = 3, ...)

IL_variables(x, xm)

## S3 method for class 'il_variables'
print(x, digits = 3, ...)

Arguments

x

an object coercible to a data.frame representing the original dataset

xm

an object coercible to a data.frame representing the perturbed, modified dataset

digits

number digits used for rounding when displaying results

...

additional parameter for print-methods; currently ignored

Details

  • IL_correl(): is a information-loss measure that can be applied to common numerically scaled variables in x and xm. It is based on diagonal entries of inverse correlation matrices in the original and perturbed data.

  • IL_variables(): for common-variables in x and xm the individual distance-functions depend on the class of the variable; specifically these functions are different for numeric variables, ordered-factors and character/factor variables. The individual distances are summed up and scaled by n * m with n being the number of records and m being the number of (common) variables.

Details can be found in the references below

The implementation of IL_correl() differs slightly with the original proposition from Mlodak, A. (2020) as the constant multiplier was changed to 1 / sqrt(2) instead of 1/2 for better efficiency and interpretability of the measure.

Value

the corresponding information-loss measure

Author(s)

Bernhard Meindl bernhard.meindl@statistik.gv.at

References

Mlodak, A. (2020). Information loss resulting from statistical disclosure control of output data, Wiadomosci Statystyczne. The Polish Statistician, 2020, 65(9), 7-27, DOI: 10.5604/01.3001.0014.4121

Mlodak, A. (2019). Using the Complex Measure in an Assessment of the Information Loss Due to the Microdata Disclosure Control, PrzeglÄ…d Statystyczny, 2019, 66(1), 7-26, DOI: 10.5604/01.3001.0013.8285

Examples

data("Tarragona", package = "sdcMicro")
res1 <- addNoise(obj = Tarragona, variables = colnames(Tarragona), noise = 100)
IL_correl(x = as.data.frame(res1$x), xm = as.data.frame(res1$xm))

res2 <- addNoise(obj = Tarragona, variables = colnames(Tarragona), noise = 25) 
IL_correl(x = as.data.frame(res2$x), xm = as.data.frame(res2$xm))

# creating test-inputs
n <- 150
x <- xm <- data.frame(
  v1 = factor(sample(letters[1:5], n, replace = TRUE), levels = letters[1:5]),
  v2 = rnorm(n),
  v3 = runif(3),
  v4 = ordered(sample(LETTERS[1:3], n, replace = TRUE), levels = c("A", "B", "C"))
)
xm$v1[1:5] <- "a"
xm$v2 <- rnorm(n, mean = 5)
xm$v4[1:5] <- "A"
IL_variables(x, xm)

sdcTools/sdcMicro documentation built on March 15, 2024, 12:32 p.m.