tests/testthat/test-extract-svyisq.R

# load libraries
library(survey)
library(laeken)

# return test context
context("svyisq output survey.design and svyrep.design")

### test 1: test if funtion works on unweighted objects

# load data
data("api")

# set up convey design
expect_warning(dstrat1 <-
                 convey_prep(svydesign(id =  ~ 1, data = apistrat)))

# perform tests
test_that("svyisq works on unweighted designs", {
  expect_false(is.na (coef(
    svyisq(
      ~ api00,
      design = dstrat1 ,
      alpha = .2 ,
      deff = TRUE
    )
  )))
  expect_false(is.na (SE(
    svyisq(
      ~ api00,
      design = dstrat1 ,
      alpha = .2 ,
      deff = TRUE
    )
  )))
})

### test 2: income data from eusilc --- data.frame-backed design object

# collect and format data
data(eusilc)
names(eusilc) <- tolower(names(eusilc))

# set up survey design objects
des_eusilc <-
  svydesign(
    ids = ~ rb030 ,
    strata = ~ db040 ,
    weights = ~ rb050 ,
    data = eusilc
  )
des_eusilc_rep <-
  as.svrepdesign(des_eusilc , type = "bootstrap" , replicates = 50)

# prepare for convey
des_eusilc <- convey_prep(des_eusilc)
des_eusilc_rep <- convey_prep(des_eusilc_rep)

# filter positive incomes
des_eusilc <- subset( des_eusilc , eqincome > 0 )
des_eusilc_rep <- subset( des_eusilc_rep , eqincome > 0 )

# calculate estimates
a1 <- svyisq( ~ eqincome , des_eusilc , alpha = .2 , deff = TRUE , influence = TRUE , linearized = TRUE )
a2 <-
  svyby( ~ eqincome ,
         ~ hsize,
         des_eusilc,
         svyisq ,
         alpha = .2 ,
         deff = TRUE)
b1 <-
  svyisq( ~ eqincome , des_eusilc_rep , alpha = .2 , deff = TRUE)
b2 <-
  svyby( ~ eqincome ,
         ~ hsize,
         des_eusilc_rep,
         svyisq ,
         alpha = .2 ,
         deff = TRUE)

# calculate auxilliary tests statistics
cv_diff1 <- abs(cv(a1) - cv(b1))
se_diff2 <- max(abs(SE(a2) - SE(b2)) , na.rm = TRUE)

# perform tests
test_that("output svyisq" , {
  expect_is(coef(a1) , "numeric")
  expect_is(coef(a2) , "numeric")
  expect_is(coef(b1) , "numeric")
  expect_is(coef(b2) , "numeric")
  expect_equal(coef(a1) , coef(b1))
  expect_equal(coef(a2) , coef(b2))
  # expect_lte( cv_diff1 , coef(a1) * 0.20 )         # the difference between CVs should be less than 5% of the coefficient, otherwise manually set it
  expect_lte(se_diff2 , max(coef(a2)) * 0.20)  # the difference between CVs should be less than 10% of the maximum coefficient, otherwise manually set it
  expect_is(SE(a1) , "matrix")
  expect_is(SE(a2) , "numeric")
  expect_is(SE(b1) , "numeric")
  expect_is(SE(b2) , "numeric")
  expect_lte(confint(a1)[1] ,  coef(a1))
  expect_gte(confint(a1)[2] , coef(a1))
  expect_lte(confint(b1)[, 1] , coef(b1))
  expect_gte(confint(b1)[2] , coef(b1))
  expect_equal(sum(confint(a2)[, 1] <= coef(a2)) , length(coef(a2)))
  expect_equal(sum(confint(a2)[, 2] >= coef(a2)) , length(coef(a2)))
  expect_equal(sum(confint(b2)[, 1] <= coef(b2)) , length(coef(b2)))
  expect_equal(sum(confint(b2)[, 2] >= coef(b2)) , length(coef(b2)))

})

### test 2: income data from eusilc --- database-backed design object

# perform tests
test_that("database svyisq", {
  # skip test on cran
  skip_on_cran()

  # load libraries
  library(RSQLite)
  library(DBI)

  # set-up database
  dbfile <- tempfile()
  conn <- dbConnect(RSQLite::SQLite() , dbfile)
  dbWriteTable(conn , 'eusilc' , eusilc)

  # database-backed design
  dbd_eusilc <-
    svydesign(
      ids = ~ rb030 ,
      strata = ~ db040 ,
      weights = ~ rb050 ,
      data = "eusilc",
      dbname = dbfile,
      dbtype = "SQLite"
    )

  # prepare for convey
  dbd_eusilc <- convey_prep(dbd_eusilc)

  # filter positive incomes
  dbd_eusilc <- subset ( dbd_eusilc , eqincome > 0 )

  # calculate estimates
  c1 <- svyisq( ~ eqincome , dbd_eusilc , alpha = .2 , deff = TRUE , influence = TRUE , linearized = TRUE )
  c2 <-
    svyby(
      ~ eqincome ,
      ~ hsize ,
      dbd_eusilc ,
      FUN = svyisq ,
      alpha = .2 ,
      deff = TRUE
    )
  c3 <-
    svyby(
      ~ eqincome ,
      ~ hsize ,
      des_eusilc ,
      FUN = svyisq ,
      alpha = .2 ,
      deff = TRUE
    )

  # remove table and close connection to database
  dbRemoveTable(conn , 'eusilc')
  dbDisconnect(conn)

  # peform tests
  expect_equal(coef(a1) , coef(c1))
  expect_equal(coef(a2) , coef(c2))
  expect_equal(SE(a1) , SE(c1))
  expect_equal(SE(a2) , SE(c2))
  expect_equal(deff(a1) , deff(c1))
  expect_equal(deff(a2) , deff(c2))
  expect_warning(expect_equal(vcov(a2) , vcov(c2)))
  expect_warning(expect_equal(diag(vcov(c2)) , diag(vcov(c3))))

})

### test 3: compare subsetted objects to svyby objects

# calculate estimates
sub_des <-
  svyisq(
    ~ eqincome ,
    design = subset(des_eusilc , hsize == 1) ,
    alpha = .2 ,
    deff = TRUE , influence = TRUE , linearized = TRUE
  )
sby_des <-
  svyby(
    ~ eqincome,
    by = ~ hsize,
    design = des_eusilc,
    FUN = svyisq ,
    alpha = .2 ,
    deff = TRUE
  )
sub_rep <-
  svyisq(
    ~ eqincome ,
    design = subset(des_eusilc_rep , hsize == 1) ,
    alpha = .2 ,
    deff = TRUE  , influence = TRUE , linearized = TRUE
  )
sby_rep <-
  svyby(
    ~ eqincome,
    by = ~ hsize,
    design = des_eusilc_rep,
    FUN = svyisq ,
    alpha = .2 ,
    deff = TRUE
  )

# perform tests
test_that("subsets equal svyby", {
  # domain vs svyby: coefficients must be equal
  expect_equal(as.numeric(coef(sub_des)) , as.numeric(coef(sby_des))[1])
  expect_equal(as.numeric(coef(sub_rep)) , as.numeric(coef(sby_rep))[1])

  # domain vs svyby: SEs must be equal
  expect_equal(as.numeric(SE(sub_des)) , as.numeric(SE(sby_des))[1])
  expect_equal(as.numeric(SE(sub_rep)) , as.numeric(SE(sby_rep))[1])

  # domain vs svyby: DEffs must be equal
  expect_equal(as.numeric(deff(sub_des)) , as.numeric(deff(sby_des))[1])
  expect_equal(as.numeric(deff(sub_rep)) , as.numeric(deff(sby_rep))[1])

  # domain vs svyby and svydesign vs svyrepdesign:
  # coefficients should match across svydesign
  expect_equal(as.numeric(coef(sub_des)) , as.numeric(coef(sby_rep))[1])

  # domain vs svyby and svydesign vs svyrepdesign:
  # coefficients of variation should be within five percent
  cv_diff <- abs(cv(sub_des) - cv(sby_rep)[1])
  expect_lte(cv_diff , .5)

})

### test 4: compare subsetted objects to svyby objects

# compare database-backed designs to non-database-backed designs
test_that("dbi subsets equal non-dbi subsets", {
  # skip test on cran
  skip_on_cran()

  # load libraries
  library(RSQLite)
  library(DBI)

  # set up database
  dbfile <- tempfile()
  conn <- dbConnect(RSQLite::SQLite() , dbfile)
  dbWriteTable(conn , 'eusilc' , eusilc)

  # create database-backed design (with survey design information)
  dbd_eusilc <-
    svydesign(
      ids = ~ rb030 ,
      strata = ~ db040 ,
      weights = ~ rb050 ,
      data = "eusilc",
      dbname = dbfile,
      dbtype = "SQLite"
    )

  # create a hacky database-backed svrepdesign object
  # mirroring des_eusilc_rep
  dbd_eusilc_rep <-
    svrepdesign(
      weights = ~ rb050,
      repweights = attr(des_eusilc_rep , "full_design")$repweights ,
      scale = attr(des_eusilc_rep , "full_design")$scale ,
      rscales = attr(des_eusilc_rep , "full_design")$rscales ,
      type = "bootstrap" ,
      data = "eusilc" ,
      dbtype = "SQLite" ,
      dbname = dbfile ,
      combined.weights = FALSE
    )

  # prepare for convey
  dbd_eusilc <- convey_prep(dbd_eusilc)
  dbd_eusilc_rep <- convey_prep(dbd_eusilc_rep)

  # prepare for convey
  dbd_eusilc <- subset( dbd_eusilc , eqincome > 0 )
  dbd_eusilc_rep <- subset( dbd_eusilc_rep , eqincome > 0 )

  # calculate estimates
  sub_dbd <-
    svyisq(
      ~ eqincome ,
      design = subset(des_eusilc , hsize == 1) ,
      alpha = .2 ,
      deff = TRUE ,
      influence = TRUE , linearized = TRUE
    )
  sby_dbd <-
    svyby(
      ~ eqincome,
      by = ~ hsize,
      design = des_eusilc,
      FUN = svyisq ,
      alpha = .2 ,
      deff = TRUE
    )
  sub_dbr <-
    svyisq(
      ~ eqincome ,
      design = subset(des_eusilc_rep , hsize == 1) ,
      alpha = .2 ,
      deff = TRUE ,
      influence = TRUE , linearized = TRUE
    )
  sby_dbr <-
    svyby(
      ~ eqincome,
      by = ~ hsize,
      design = des_eusilc_rep,
      FUN = svyisq ,
      alpha = .2 ,
      deff = TRUE
    )

  # remove table and disconnect from database
  dbRemoveTable(conn , 'eusilc')
  dbDisconnect(conn)

  # perform tests
  expect_equal(coef(sub_des) , coef(sub_dbd))
  expect_equal(coef(sub_rep) , coef(sub_dbr))
  expect_equal(SE(sub_des) , SE(sub_dbd))
  expect_equal(SE(sub_rep) , SE(sub_dbr))
  expect_equal(deff(sub_des) , deff(sub_dbd))
  expect_equal(deff(sub_rep) , deff(sub_dbr))

  # compare database-backed subsetted objects to database-backed svyby objects
  # dbi subsets equal dbi svyby
  expect_equal(as.numeric(coef(sub_dbd)) , as.numeric(coef(sby_dbd))[1])
  expect_equal(as.numeric(coef(sub_dbr)) , as.numeric(coef(sby_dbr))[1])
  expect_equal(as.numeric(SE(sub_dbd)) , as.numeric(SE(sby_dbd))[1])
  expect_equal(as.numeric(SE(sub_dbr)) , as.numeric(SE(sby_dbr))[1])
  expect_equal(as.numeric(deff(sub_dbd)) , as.numeric(deff(sby_dbd))[1])
  expect_equal(as.numeric(deff(sub_dbr)) , as.numeric(deff(sby_dbr))[1])
  expect_warning(expect_equal(vcov(sby_des) , vcov(sby_dbd)))
  expect_warning(expect_equal(vcov(sby_rep) , vcov(sby_dbr)))

})
DjalmaPessoa/convey documentation built on Oct. 15, 2024, 10:30 p.m.