| Type: | Package |
| Title: | Ex Post Survey Data Harmonization |
| Version: | 0.2.8 |
| Date: | 2026-05-19 |
| Maintainer: | Daniel Antal <daniel.antal@dataobservatory.eu> |
| Description: | Assist in reproducible retrospective (ex-post) harmonization of data, particularly individual level survey data, by providing tools for organizing metadata, standardizing the coding of variables, and variable names and value labels, including missing values, and documenting the data transformations, with the help of comprehensive s3 classes. |
| License: | GPL-3 |
| URL: | https://retroharmonize.dataobservatory.eu/ |
| BugReports: | https://github.com/dataobservatory-eu/retroharmonize/issues |
| Depends: | R (≥ 3.5.0) |
| Imports: | assertthat, cli, dataset, dplyr (≥ 1.0.0), fs, glue, haven, here, labelled, magrittr, purrr, rlang, snakecase, stats, stringr, tibble, tidyr, tidyselect, utils, vctrs |
| Suggests: | covr, ggplot2, knitr, markdown, png, rmarkdown, pillar, spelling, statcodelists, testthat (≥ 3.0.0) |
| VignetteBuilder: | knitr |
| Config/testthat/edition: | 3 |
| Encoding: | UTF-8 |
| Language: | en-US |
| Config/roxygen2/version: | 8.0.0 |
| NeedsCompilation: | no |
| Packaged: | 2026-05-20 19:04:59 UTC; DanielAntal |
| Author: | Daniel Antal |
| Repository: | CRAN |
| Date/Publication: | 2026-05-21 07:20:09 UTC |
retroharmonize: Ex Post Survey Data Harmonization
Description
Assist in reproducible retrospective (ex-post) harmonization of data, particularly individual level survey data, by providing tools for organizing metadata, standardizing the coding of variables, and variable names and value labels, including missing values, and documenting the data transformations, with the help of comprehensive s3 classes.
Author(s)
Maintainer: Daniel Antal daniel.antal@dataobservatory.eu (ORCID)
Authors:
Daniel Antal daniel.antal@dataobservatory.eu (ORCID)
Other contributors:
Marta Kolczynska mkolczynska@gmail.com (ORCID) [contributor]
See Also
Useful links:
Report bugs at https://github.com/dataobservatory-eu/retroharmonize/issues
Pipe operator
Description
See magrittr::%>% for details.
Usage
lhs %>% rhs
Labelled to labelled_spss_survey
Description
Labelled to labelled_spss_survey
Usage
as_labelled_spss_survey(x, id)
Arguments
x |
A vector of class haven_labelled or haven_labelled_spss. |
id |
The survey identifier. |
Value
A vector of labelled_spss_survey
See Also
Other type conversion functions:
labelled_spss_survey_coercion
Collect labels from metadata file
Description
Collect labels from metadata file
Usage
collect_val_labels(metadata)
collect_na_labels(metadata)
Arguments
metadata |
A metadata data frame created by
|
Value
The unique valid labels or the user-defined missing
labels found in all the files analyzed in metadata.
See Also
Other harmonization functions:
crosswalk_surveys(),
harmonize_na_values(),
harmonize_survey_values(),
harmonize_values(),
harmonize_var_names(),
is.crosswalk_table(),
label_normalize()
Examples
test_survey <- retroharmonize::read_rds(
file = system.file("examples", "ZA7576.rds",
package = "retroharmonize"
),
id = "test"
)
example_metadata <- metadata_create(test_survey)
collect_val_labels(metadata = example_metadata)
collect_na_labels(metadata = example_metadata)
Concatenate haven_labelled_spss vectors
Description
Concatenate haven_labelled_spss vectors
Usage
concatenate(x, y)
Arguments
x |
A haven_labelled_spss vector. |
y |
A haven_labelled_spss vector. |
Value
A concatenated haven_labelled_spss vector. Returns an error if the attributes do not match. Gives a warning when only the variable label do not match.
Examples
v1 <- labelled::labelled(
c(3, 4, 4, 3, 8, 9),
c(YES = 3, NO = 4, `WRONG LABEL` = 8, REFUSED = 9)
)
v2 <- labelled::labelled(
c(4, 3, 3, 9),
c(YES = 3, NO = 4, `WRONG LABEL` = 8, REFUSED = 9)
)
s1 <- haven::labelled_spss(
x = unclass(v1), # remove labels from earlier defined
labels = labelled::val_labels(v1), # use the labels from earlier defined
na_values = NULL,
na_range = 8:9,
label = "Variable Example"
)
s2 <- haven::labelled_spss(
x = unclass(v2), # remove labels from earlier defined
labels = labelled::val_labels(v2), # use the labels from earlier defined
na_values = NULL,
na_range = 8:9,
label = "Variable Example"
)
concatenate(s1, s2)
Convert to haven_labelled_spss
Description
Convert to haven_labelled_spss
Usage
convert_to_labelled_spss(x, na_labels = NULL)
Arguments
x |
A vector |
na_labels |
A named vector of missing values, defaults to
|
Value
A haven_labelled_spss vector
Create a survey codebook
Description
Expand survey metadata into a long-format codebook of value labels.
Usage
create_codebook(metadata = NULL, survey = NULL)
codebook_waves_create(waves)
codebook_surveys_create(survey_list)
Arguments
metadata |
A metadata table created by [metadata_create()]. If supplied, 'survey' must be 'NULL'. |
survey |
A survey object of class '"survey"'. If supplied, metadata is generated internally using [metadata_create()]. |
waves |
A list of surveys. |
survey_list |
A list containing surveys of class survey. |
Details
'create_codebook()' takes survey-level metadata and returns a tidy data frame describing all labelled variables and their associated value labels. Each row corresponds to a single value label, classified as either a valid value or a missing value.
Unlabelled numeric and character variables are excluded.
For multiple survey waves, use [codebook_surveys_create()].
If both 'metadata' and 'survey' are provided, 'survey' takes precedence.
Value
A data frame with one row per value label, including:
survey identifiers ('id', 'filename')
original variable names and labels
value codes and value labels
label type ('"valid"' or '"missing"')
summary counts of labels
Additional user-defined metadata columns present in the input metadata are preserved.
See Also
[metadata_create()], [codebook_surveys_create()]
Other metadata functions:
is.crosswalk_table(),
metadata_create(),
metadata_survey_create()
Examples
survey <- read_rds(
system.file("examples", "ZA7576.rds", package = "retroharmonize")
)
cb <- create_codebook(survey = survey)
head(cb)
examples_dir <- system.file("examples", package = "retroharmonize")
survey_list <- dir(examples_dir)[grepl("\\.rds", dir(examples_dir))]
example_surveys <- read_surveys(
file.path(examples_dir, survey_list),
save_to_rds = FALSE
)
codebook_surveys_create(example_surveys)
Crosswalk and harmonize surveys
Description
Harmonize one or more surveys using a crosswalk table that defines how variable names, value labels, numeric codes, and variable classes should be aligned across surveys.
Usage
crosswalk_surveys(
crosswalk_table,
survey_list = NULL,
survey_paths = NULL,
import_path = NULL,
na_values = NULL
)
crosswalk(survey_list, crosswalk_table, na_values = NULL)
Arguments
crosswalk_table |
A crosswalk table created with [crosswalk_table_create()] or a data frame containing at least the columns 'id', 'var_name_orig', and 'var_name_target'. If the columns 'val_label_orig' and 'val_label_target' are present, value labels are harmonized. If 'val_numeric_orig' and 'val_numeric_target' are present, numeric codes are harmonized. If 'class_target' is present, variables are coerced to the specified target class ('"factor"', '"numeric"', or '"character"') using [as_factor()], [as_numeric()], or [as_character()]. |
survey_list |
A list of survey objects to be harmonized. |
survey_paths |
Optional character vector of file paths to surveys. Used when surveys must be read from disk before harmonization. |
import_path |
Optional base directory used to resolve 'survey_paths'. This is primarily intended for workflows where surveys are stored outside the current working directory. |
na_values |
Optional named vector defining numeric codes to be treated as missing values. Names correspond to missing-value labels. |
Details
A crosswalk table can be created with [crosswalk_table_create()] or supplied manually as a data frame. At a minimum, the table must contain columns 'id', 'var_name_orig', and 'var_name_target'. Additional columns enable harmonization of value labels, numeric codes, missing values, and variable classes.
Value
'crosswalk_surveys()' returns a list of harmonized survey data frames. 'crosswalk()' returns either a single data frame (if only one survey is harmonized) or a merged data frame combining all harmonized surveys.
See Also
[crosswalk_table_create()] to create a crosswalk table, [harmonize_survey_variables()] for lower-level variable harmonization.
Other harmonization functions:
collect_val_labels(),
harmonize_na_values(),
harmonize_survey_values(),
harmonize_values(),
harmonize_var_names(),
is.crosswalk_table(),
label_normalize()
Examples
## Not run:
examples_dir <- system.file("examples", package = "retroharmonize")
survey_files <- dir(examples_dir, pattern = "\\.rds$")
surveys <- read_surveys(
file.path(examples_dir, survey_files),
save_to_rds = FALSE
)
metadata <- metadata_create(survey_list = surveys)
crosswalk_table <- crosswalk_table_create(metadata)
harmonized <- crosswalk_surveys(
crosswalk_table = crosswalk_table,
survey_list = surveys
)
## End(Not run)
Document survey item provenance
Description
Document the current and historical coding, labels, missing values, and survey provenance of a harmonized survey variable.
Usage
document_survey_item(x)
Arguments
x |
A 'labelled_spss_survey' vector originating from a single survey or concatenated from multiple surveys. |
Value
A named list containing:
current and historical value coding,
variable labels,
valid and missing value definitions,
original variable names,
survey identifiers.
See Also
Other documentation functions:
document_surveys()
Examples
var1 <- labelled::labelled_spss(
x = c(1, 0, 1, 1, 0, 8, 9),
labels = c(
"TRUST" = 1,
"NOT TRUST" = 0,
"DON'T KNOW" = 8,
"INAP. HERE" = 9
),
na_values = c(8, 9)
)
var2 <- labelled::labelled_spss(
x = c(2, 2, 8, 9, 1, 1),
labels = c(
"Tend to trust" = 1,
"Tend not to trust" = 2,
"DK" = 8,
"Inap" = 9
),
na_values = c(8, 9)
)
harmonization <- list(
from = c(
"^tend\\sto|^trust",
"^tend\\snot|not\\strust",
"^dk|^don",
"^inap"
),
to = c(
"trust",
"not_trust",
"do_not_know",
"inap"
),
numeric_values = c(1, 0, 99997, 99999)
)
missing_values <- c(
"do_not_know" = 99997,
"inap" = 99999
)
h1 <- harmonize_values(
x = var1,
harmonize_label = "Do you trust the European Union?",
harmonize_labels = harmonization,
na_values = missing_values,
id = "survey1"
)
h2 <- harmonize_values(
x = var2,
harmonize_label = "Do you trust the European Union?",
harmonize_labels = harmonization,
na_values = missing_values,
id = "survey2"
)
h3 <- concatenate(h1, h2)
document_survey_item(h3)
Document survey lists
Description
Document the key attributes surveys in a survey list.
Usage
document_surveys(survey_list = NULL, survey_paths = NULL, .f = NULL)
document_waves(waves)
Arguments
survey_list |
A list of |
survey_paths |
A vector of full file paths to the surveys to subset, defaults to
|
.f |
A function to import the surveys with.
Defaults to |
waves |
A list of |
Details
The function has two alternative input parameters. If survey_list is the
input, it returns the name of the original source data file, the number of rows and
columns, and the size of the object as stored in memory. In case survey_paths
contains the source data files, it will sequentially read those files, and add the file
size, the last access and the last modified time attributes.
The earlier form document_waves is deprecated.
Currently called document_surveys.
Value
Returns a data frame with the key attributes of the surveys in a survey list: the name of the data file, the number of rows and columns, and the size of the object as stored in memory.
See Also
Other documentation functions:
document_survey_item()
Examples
examples_dir <- system.file("examples", package = "retroharmonize")
my_rds_files <- dir(examples_dir)[grepl(
".rds",
dir(examples_dir)
)]
example_surveys <- read_surveys(file.path(examples_dir, my_rds_files))
documented <- document_surveys(example_surveys)
attr(documented, "original_list")
documented
document_surveys(survey_paths = file.path(examples_dir, my_rds_files))
Find import function by file extension
Description
This is an internal utility to select the appropriate importing function.
Usage
find_import_function(file_path)
Value
The name of the function that should read file_path based on the file
extension.
Harmonize na_values in haven_labelled_spss
Description
Harmonize na_values in haven_labelled_spss
Usage
harmonize_na_values(df)
Arguments
df |
A data frame that contains haven_labelled_spss vectors. |
Value
A tibble where the na_values are consistent
See Also
Other harmonization functions:
collect_val_labels(),
crosswalk_surveys(),
harmonize_survey_values(),
harmonize_values(),
harmonize_var_names(),
is.crosswalk_table(),
label_normalize()
Examples
examples_dir <- system.file(
"examples",
package = "retroharmonize"
)
test_read <- read_rds(
file.path(examples_dir, "ZA7576.rds"),
id = "ZA7576",
doi = "test_doi"
)
harmonize_na_values(test_read)
Harmonize values in surveys
Description
Harmonize value codes and value labels across multiple surveys and combine them into a single data frame.
Usage
harmonize_survey_values(survey_list, .f, status_message = FALSE)
harmonize_waves(waves, .f, status_message = FALSE)
Arguments
survey_list |
A list of surveys (data frames). In earlier versions this argument was called
|
.f |
A function applied to each labelled variable
(class |
status_message |
Logical. If |
waves |
A list of surveys. Deprecated. |
Details
The function first aligns the structure of all surveys by ensuring that they contain the same set of variables. Missing variables are added and filled with appropriate missing values depending on their type.
Variables of class "retroharmonize_labelled_spss_survey" are then
harmonized by applying a user-supplied function .f to each variable
separately within each survey.
The harmonization function .f must return a vector of the same length
as its input. If .f returns NULL, the original variable is kept
unchanged.
Prior to version 0.2.0 this function was called harmonize_waves.
The earlier form harmonize_waves is deprecated.
The function is currently called harmonize_waves.
Value
A data frame containing the row-wise combination of all surveys, with harmonized labelled variables and preserved attributes describing the original surveys.
See Also
Other harmonization functions:
collect_val_labels(),
crosswalk_surveys(),
harmonize_na_values(),
harmonize_values(),
harmonize_var_names(),
is.crosswalk_table(),
label_normalize()
Examples
examples_dir <- system.file("examples", package = "retroharmonize")
survey_files <- dir(examples_dir, pattern = "\\.rds$", full.names = TRUE)
surveys <- read_surveys(
survey_files,
export_path = NULL
)
# Keep only supported variable types
surveys <- lapply(
surveys,
function(s) {
s[, vapply(
s,
function(x) {
inherits(x, c(
"retroharmonize_labelled_spss_survey",
"numeric",
"character",
"Date"
))
},
logical(1)
)]
}
)
# Identity harmonization (no-op)
harmonized <- harmonize_survey_values(
survey_list = surveys,
.f = function(x) x,
status_message = FALSE
)
head(harmonized)
Read a survey from a CSV file
Description
Import a survey stored in a CSV file and return it as a survey object with attached dataset- and survey-level metadata.
Usage
harmonize_survey_variables(
crosswalk_table,
subset_name = "subset",
survey_list = NULL,
survey_paths = NULL,
import_path = NULL,
export_path = NULL
)
Arguments
crosswalk_table |
A crosswalk table created with [crosswalk_table_create()]. |
subset_name |
Character string appended to filenames of subsetted surveys. Defaults to '"subset"'. |
survey_list |
A list containing surveys of class survey. |
survey_paths |
Optional character vector of file paths to surveys. |
import_path |
Optional base directory used to resolve 'survey_paths'. |
export_path |
Optional directory where subsetted surveys are exported to |
Details
The CSV file is read using [utils::read.csv()]. Character variables with more than one unique value are automatically converted to labelled factors. A unique row identifier is added and labelled.
If the file cannot be read, an empty survey object is returned with a warning.
If a column named '"X"' is present (commonly created by 'write.csv()'), it is removed automatically.
Value
An object of class '"survey"', which is a data frame with attached survey- and dataset-level metadata.
See Also
[read_rds()] for importing surveys from RDS files, [survey_df()] for constructing survey objects manually.
Other import functions:
pull_survey(),
read_csv(),
read_dta(),
read_rds(),
read_spss(),
read_surveys()
Examples
# Create a temporary CSV file from an example survey
path <- system.file("examples", "ZA7576.rds",
package = "retroharmonize"
)
survey <- read_rds(path)
tmp <- tempfile(fileext = ".csv")
write.csv(survey, tmp, row.names = FALSE)
# Read the CSV file back as a survey
re_read <- read_csv(
file = tmp,
id = "ZA7576",
doi = "10.0000/example"
)
Harmonize values and labels of labelled vectors
Description
'harmonize_values()' converts heterogeneous labelled survey vectors into a harmonized representation suitable for cross-survey integration.
The function:
- harmonizes value labels using regex-based matching; - assigns harmonized numeric codes; - preserves original coding metadata; - standardizes user-defined missing values; - preserves SPSS-style labelled metadata; - and records provenance attributes.
Usage
harmonize_values(
x,
harmonize_label = NULL,
harmonize_labels = NULL,
na_values = c(do_not_know = 99997, declined = 99998, inap = 99999),
na_range = NULL,
id = "survey_id",
name_orig = NULL,
remove = NULL,
perl = FALSE
)
Arguments
x |
A labelled vector, typically of class '"haven_labelled"' or '"haven_labelled_spss"'. |
harmonize_label |
Optional harmonized variable label. Defaults to the original variable label. |
harmonize_labels |
A list describing harmonization rules. Must contain the elements: - 'from' - 'to' - 'numeric_values' |
na_values |
Named numeric vector defining harmonized missing value codes. |
na_range |
Optional SPSS-style missing value range. Usually left 'NULL'. |
id |
Survey identifier. Defaults to '"survey_id"'. |
name_orig |
Optional original variable name. Defaults to the object name supplied to 'x'. |
remove |
Optional regex pattern removed from original labels before harmonization. |
perl |
Logical. Use Perl-compatible regular expressions? Defaults to 'FALSE'. |
Details
Create a harmonized labelled vector with standardized value labels, numeric coding, and missing value definitions.
Harmonization is performed using a harmonization table supplied via 'harmonize_labels'.
The harmonization table must contain:
- 'from': regex patterns matching original labels; - 'to': harmonized labels; - 'numeric_values': harmonized numeric codes.
Original labels and numeric codes are preserved in attributes attached to the returned vector.
If no harmonization table is supplied, the function still attempts to normalize common missing value labels such as:
- '"inap"' - '"declined"' - '"do_not_know"'
Value
A harmonized 'haven_labelled_spss' vector.
The returned vector preserves:
- harmonized value labels; - harmonized numeric coding; - SPSS missing value metadata; - original coding metadata; - survey provenance metadata.
See Also
[harmonize_var_names()]
Other harmonization functions:
collect_val_labels(),
crosswalk_surveys(),
harmonize_na_values(),
harmonize_survey_values(),
harmonize_var_names(),
is.crosswalk_table(),
label_normalize()
Examples
var1 <- labelled::labelled_spss(
x = c(1, 0, 1, 1, 0, 8, 9),
labels = c(
"TRUST" = 1,
"NOT TRUST" = 0,
"DON'T KNOW" = 8,
"INAP. HERE" = 9
),
na_values = c(8, 9)
)
harmonize_values(
var1,
harmonize_labels = list(
from = c(
"^tend\\sto|^trust",
"^tend\\snot|not\\strust",
"^dk|^don",
"^inap"
),
to = c(
"trust",
"not_trust",
"do_not_know",
"inap"
),
numeric_values = c(
1,
0,
99997,
99999
)
),
na_values = c(
"do_not_know" = 99997,
"inap" = 99999
),
id = "survey_id"
)
Harmonize variable names across surveys
Description
'harmonize_var_names()' renames variables across multiple surveys to a shared harmonized naming scheme.
The harmonization rules are defined in a metadata table, typically created with [metadata_create()].
Usage
harmonize_var_names(
survey_list,
metadata,
old = "var_name_orig",
new = "var_name_suggested",
rowids = TRUE
)
Arguments
survey_list |
A list of survey objects, typically imported with [read_surveys()]. |
metadata |
A metadata table containing harmonization rules. Typically created with [metadata_create()] and combined across surveys. |
old |
Name of the column in 'metadata' containing the original variable names. |
new |
Name of the column in 'metadata' containing the harmonized variable names. |
rowids |
Logical. Should original 'rowid' variables be renamed to '"uniqid"'? |
Details
Harmonize variable names in a list of survey objects using a metadata crosswalk table.
The function can also be used for survey subsetting workflows. If 'metadata' contains only a subset of variables for a survey, only those variables are retained in the harmonized output.
Value
A list of surveys with harmonized variable names.
See Also
[metadata_create()], [crosswalk()]
Other harmonization functions:
collect_val_labels(),
crosswalk_surveys(),
harmonize_na_values(),
harmonize_survey_values(),
harmonize_values(),
is.crosswalk_table(),
label_normalize()
Examples
examples_dir <- system.file(
"examples",
package = "retroharmonize"
)
survey_files <- dir(
examples_dir,
pattern = "\\.rds$"
)
example_surveys <- read_surveys(
file.path(examples_dir, survey_files)
)
metadata <- metadata_create(
example_surveys
)
metadata$var_name_suggested <-
label_normalize(metadata$var_name)
metadata$var_name_suggested[
metadata$label_orig == "age_education"
] <- "age_education"
harmonized_surveys <- harmonize_var_names(
survey_list = example_surveys,
metadata = metadata
)
harmonized_surveys[[1]]
Here
Description
A utility to make sure the system files of the package and other files are always found, regardless if they are in an example or vignette context.
Details
See here::here for details.
Examples
dir(here("inst", "examples"))
Validate a crosswalk table
Description
Create a crosswalk table with the source variable names and variable labels.
Usage
is.crosswalk_table(ctable)
crosswalk_table_create(metadata)
Arguments
ctable |
A table to validate if it is a crosswalk table. |
metadata |
A metadata table created by [metadata_create()]. |
Details
The table contains a var_name_target and
val_label_target column, but
these values need to be set by further manual or
reproducible harmonization steps.
Value
A tibble with raw crosswalk table. It contains all harmonization tasks, but the target values need to be set by further manipulations.
See Also
Other metadata functions:
create_codebook(),
metadata_create(),
metadata_survey_create()
Other harmonization functions:
collect_val_labels(),
crosswalk_surveys(),
harmonize_na_values(),
harmonize_survey_values(),
harmonize_values(),
harmonize_var_names(),
label_normalize()
Test whether missing values need harmonization
Description
Checks whether both 'na_values' and 'na_range' attributes are present on a labelled vector.
Usage
is.na_range_to_values(x)
Arguments
x |
A labelled vector. |
Value
Logical scalar.
Create a survey object
Description
Construct a survey object from a data frame or tibble by attaching survey-level metadata such as an identifier, source filename, and basic dataset-level descriptive metadata.
Usage
is.survey_df(x)
survey_df(
x,
title = NULL,
creator = person("Unknown", "Creator"),
dataset_bibentry = NULL,
dataset_subject = NULL,
identifier,
filename
)
is.survey_df(x)
## S3 method for class 'survey_df'
print(x, ...)
Arguments
x |
A data frame or tibble containing the survey data. |
title |
Optional title for the survey. Defaults to '"Untitled Survey"'. |
creator |
A [utils::person()] object describing the dataset creator. Defaults to 'person("Unknown", "Creator")'. |
dataset_bibentry |
Optional dataset-level bibliographic metadata. If 'NULL', a minimal DataCite entry is created automatically using 'title', 'creator', and 'dataset_subject'. |
dataset_subject |
Dataset subject metadata. If 'NULL', defaults to the Library of Congress Subject Heading Surveys. |
identifier |
A character scalar identifying the survey. |
filename |
A character scalar giving the source filename, or 'NULL' if unknown. |
... |
potentially further arguments for methods. |
Details
This function is primarily intended for use by import helpers such as [read_rds()], [read_spss()], [read_dta()], and [read_csv()]. Most users will not need to call it directly.
Value
An object of class '"survey_df"', which is a data frame with additional survey-level metadata stored as attributes and dataset-level metadata stored using the 'dataset' package.
See Also
[read_survey()] for importing survey data from external files.
Other importing functions:
survey()
Examples
survey_df(
x = data.frame(
rowid = 1:6,
observations = runif(6)
),
identifier = "example",
filename = "no_file"
)
Normalize value and variable labels
Description
label_normalize removes special characters, whitespace,
and other typical typing errors.
Usage
label_normalize(x)
var_label_normalize(x)
val_label_normalize(x)
Arguments
x |
A character vector of labels to be normalized. |
Details
var_label_normalize and val_label_normalize removes possible
chunks from question identifiers.
The functions var_label_normalize and
val_label_normalize may
be differently implemented for various survey series.
Value
Returns a suggested, normalized label without special characters. The
var_label_normalize and val_label_normalize returns them in
snake_case for programmatic use.
See Also
Other variable label harmonization functions:
na_range_to_values()
Other harmonization functions:
collect_val_labels(),
crosswalk_surveys(),
harmonize_na_values(),
harmonize_survey_values(),
harmonize_values(),
harmonize_var_names(),
is.crosswalk_table()
Examples
label_normalize(
c(
"Don't know", " TRUST", "DO NOT TRUST",
"inap in Q.3", "Not 100%", "TRUST < 50%",
"TRUST >=90%", "Verify & Check", "TRUST 99%+"
)
)
var_label_normalize(
c(
"Q1_Do you trust the national government?",
" Do you trust the European Commission"
)
)
val_label_normalize(
c(
"Q1_Do you trust the national government?",
" Do you trust the European Commission"
)
)
Coercion methods for labelled survey vectors
Description
Convert labelled SPSS-style survey vectors to common R data types. These helpers provide consistent coercion behavior for '"retroharmonize_labelled_spss_survey"' objects while respecting labelled missing values.
Usage
as_numeric(x)
as_character(x)
as_factor(x, levels = "default", ordered = FALSE)
Arguments
x |
A labelled survey vector created with [labelled_spss_survey()]. |
levels |
Character string indicating how factor levels should be constructed. Currently retained for compatibility. |
ordered |
Logical; whether the resulting factor should be ordered. Currently ignored. |
Value
* 'as_numeric()' returns a numeric vector with labelled missing values converted to 'NA'. * 'as_character()' returns a character vector based on the factor representation of 'x'. * 'as_factor()' returns a factor with levels derived from value labels.
See Also
[labelled_spss_survey()], [haven::as_factor()]
Other type conversion functions:
as_labelled_spss_survey()
vctrs type and casting methods for labelled survey vectors
Description
These methods define how
retroharmonize_labelled_spss_survey objects interact with
base vectors and with each other in vctrs-based operations such as
concatenation, binding, and coercion.
Usage
## S3 method for class 'retroharmonize_labelled_spss_survey.double'
vec_ptype2(x, y, ...)
## S3 method for class 'double.retroharmonize_labelled_spss_survey'
vec_ptype2(x, y, ...)
## S3 method for class 'integer.retroharmonize_labelled_spss_survey'
vec_ptype2(x, y, ...)
## S3 method for class 'retroharmonize_labelled_spss_survey.integer'
vec_ptype2(x, y, ...)
## S3 method for class 'double.retroharmonize_labelled_spss_survey'
vec_cast(x, to, ...)
## S3 method for class 'integer.retroharmonize_labelled_spss_survey'
vec_cast(x, to, ...)
## S3 method for class 'character.retroharmonize_labelled_spss_survey'
vec_cast(x, to, ...)
Details
They ensure that labelled survey vectors:
combine safely with numeric vectors,
cast consistently to base types,
error on incompatible coercions.
These functions are part of the internal type system and are not intended to be called directly by users.
Merge and harmonize surveys
Description
'merge_surveys()' applies a harmonization specification to a list of survey objects and returns harmonized survey datasets with aligned variable names and metadata.
Usage
merge_surveys(survey_list, var_harmonization)
Arguments
survey_list |
A list of survey objects. |
var_harmonization |
A metadata table describing the harmonization rules. The table must contain at least: - 'filename' - 'var_name_orig' - 'var_name_target' - 'var_label' |
Details
Harmonize variable names, labels, and identifiers across multiple surveys using a metadata crosswalk table.
Prior to version 0.2.0 this function was called 'merge_waves()', reflecting terminology commonly used in Eurobarometer surveys.
The harmonization table supplied in 'var_harmonization' typically originates from [metadata_create()] and contains mappings between original and harmonized variable names.
Value
A list of harmonized survey objects with standardized variable names and variable labels.
See Also
[metadata_create()]
Other survey harmonization functions:
merge_waves()
Examples
examples_dir <- system.file(
"examples",
package = "retroharmonize"
)
survey_files <- dir(
examples_dir,
pattern = "\\.rds$",
full.names = TRUE
)
example_surveys <- read_surveys(
survey_files
)
metadata <- metadata_create(
survey_list = example_surveys
)
to_harmonize <- metadata %>%
dplyr::filter(
var_name_orig %in% c("rowid", "w1") |
grepl("^trust", var_label_orig)
) %>%
dplyr::mutate(
var_label = var_label_normalize(var_label_orig),
var_name_target = val_label_normalize(var_label),
var_name_target = ifelse(
.data$var_name_orig %in%
c("rowid", "w1", "wex"),
.data$var_name_orig,
.data$var_name_target
)
)
merged_surveys <- merge_surveys(
survey_list = example_surveys,
var_harmonization = to_harmonize
)
merged_surveys[[1]]
Deprecated wrapper for 'merge_surveys()'
Description
'merge_waves()' has been renamed to [merge_surveys()] for more general survey harmonization workflows.
Usage
merge_waves(waves, var_harmonization)
Arguments
waves |
Deprecated alias for 'survey_list'. |
var_harmonization |
A metadata table describing the harmonization rules. The table must contain at least: - 'filename' - 'var_name_orig' - 'var_name_target' - 'var_label' |
Value
A list of harmonized survey objects.
See Also
[merge_surveys()]
Other survey harmonization functions:
merge_surveys()
Create metadata tables from survey datasets
Description
Create a variable-level metadata table from one or more survey datasets. Metadata are extracted either from survey objects already loaded into memory or directly from survey files.
Usage
metadata_create(survey_list = NULL, survey_paths = NULL, .f = NULL)
metadata_waves_create(survey_list)
Arguments
survey_list |
Optional list of survey objects of class [survey()]. |
survey_paths |
Optional character vector containing paths to survey files. |
.f |
Import function used to read surveys from 'survey_paths'. When 'NULL', the import function is inferred from the file extension. |
Details
The resulting metadata table contains information about:
variable names and labels,
storage classes,
value labels,
user-defined missing values,
and missing value ranges.
'metadata_create()' is a convenience wrapper around repeated [metadata_survey_create()] calls.
The form metadata_waves_create is deprecated.
Value
A data frame containing variable-level survey metadata.
See Also
[metadata_survey_create()], [create_variable_catalog()]
Other metadata functions:
create_codebook(),
is.crosswalk_table(),
metadata_survey_create()
Examples
examples_dir <- system.file(
"examples",
package = "retroharmonize"
)
my_rds_files <- dir(examples_dir)[grepl(
"\\.rds$",
dir(examples_dir)
)]
example_surveys <- read_surveys(
file.path(examples_dir, my_rds_files)
)
metadata_create(example_surveys)
Initialize a metadata data frame
Description
Initialize a metadata data frame
Usage
metadata_initialize(filename, id)
Arguments
filename |
A file name |
id |
An id. |
Value
A nested data frame with metadata and the range of labels, na_values and the na_range itself.
Create variable-level metadata from a survey dataset
Description
Extract variable-level metadata from a survey dataset and return the result as a nested data frame.
Usage
metadata_survey_create(survey)
Arguments
survey |
A survey object of class [survey()]. Survey objects are typically created with:
Survey objects can also be created manually from a data frame with [survey()]. |
Details
The metadata table contains:
variable names and labels,
imported storage classes,
value labels,
user-defined missing values,
missing value ranges,
and summary counts of labelled categories.
For multiple surveys, use [metadata_create()], which applies 'metadata_survey_create()' across a list of surveys or survey files.
Value
A nested data frame containing:
- filename
Original survey file name.
- id
Survey identifier.
- var_name_orig
Original variable name.
- class_orig
Imported storage class.
- var_label_orig
Original variable label.
- labels
List column of value labels.
- valid_labels
List column of non-missing value labels.
- na_labels
List column of user-defined missing labels.
- na_range
List column containing user-defined missing ranges.
- n_labels
Number of labelled categories.
- n_valid_labels
Number of non-missing categories.
- n_na_labels
Number of missing categories.
See Also
[metadata_create()], [create_variable_catalog()]
Other metadata functions:
create_codebook(),
is.crosswalk_table(),
metadata_create()
Examples
metadata_survey_create(
survey = read_rds(
system.file(
"examples",
"ZA7576.rds",
package = "retroharmonize"
)
)
)
Harmonize SPSS-style missing value ranges
Description
Ensure consistency between SPSS-style missing value ranges ('na_range') and explicit missing values ('na_values') for labelled survey vectors.
Usage
na_range_to_values(x)
Arguments
x |
A labelled vector created with [haven::labelled_spss()] or 'retroharmonize_labelled_spss_survey'. |
Details
When both attributes are present, this function:
adjusts the missing range if it conflicts with existing missing values,
derives missing values from the range when necessary,
leaves non-SPSS-labelled vectors unchanged.
This harmonization is important before joining, binding, or summarizing survey data.
Value
The input vector with harmonized 'na_values' and 'na_range' attributes. If no harmonization is needed, 'x' is returned unchanged.
See Also
[labelled::na_range()], [labelled::na_values()], [as_numeric()]
Other variable label harmonization functions:
label_normalize()
Labelled SPSS-style vectors with survey provenance
Description
Create a labelled vector compatible with [haven::labelled_spss()] that carries additional survey-level provenance metadata.
Usage
## S3 method for class 'retroharmonize_labelled_spss_survey'
print(x, ...)
labelled_spss_survey(
x = double(),
labels = NULL,
na_values = NULL,
na_range = NULL,
label = NULL,
id = NULL,
name_orig = NULL
)
## S3 method for class 'retroharmonize_labelled_spss_survey'
x[i, ...]
## S3 method for class 'retroharmonize_labelled_spss_survey'
summary(object, ...)
## S3 replacement method for class 'retroharmonize_labelled_spss_survey'
names(x) <- value
## S3 method for class 'retroharmonize_labelled_spss_survey'
is.na(x)
## S3 method for class 'retroharmonize_labelled_spss_survey'
levels(x)
## S3 method for class 'retroharmonize_labelled_spss_survey'
format(x, ..., digits = getOption("digits"))
is.labelled_spss_survey(x)
## S3 method for class 'retroharmonize_labelled_spss_survey'
median(x, na.rm = TRUE, ...)
## S3 method for class 'retroharmonize_labelled_spss_survey'
quantile(x, probs, ...)
## S3 method for class 'retroharmonize_labelled_spss_survey'
weighted.mean(x, w, ...)
## S3 method for class 'retroharmonize_labelled_spss_survey'
mean(x, ...)
## S3 method for class 'retroharmonize_labelled_spss_survey'
sum(x, ...)
Arguments
x |
A vector of values. |
... |
potentially further arguments for methods; not used in the default method. |
labels |
A named vector of value labels. |
na_values |
A vector of values to be treated as missing. |
na_range |
A numeric range defining missing values. |
label |
A variable label. |
id |
A character scalar identifying the survey. |
name_orig |
Original variable name. Defaults to the name of 'x'. |
i |
Index vector used for subsetting. |
object |
A labelled_spss_survey to summarize. |
value |
Replacement values used when assigning names. |
digits |
Number of digits to use in string representation in the format method. |
na.rm |
a logical value indicating whether |
probs |
numeric vector of probabilities with values in
|
w |
a numerical vector of weights the same length as |
Details
The resulting object behaves like a 'haven_labelled_spss' vector, but stores:
a survey identifier;
the original variable name;
the original value coding.
Several arithmetic and statistical summary methods operate on the numeric representation of labelled survey vectors, converting SPSS-style missing values to 'NA' before computation.
You can coerce 'labelled_spss_survey' vectors to numeric, character or factor representation.
Value
An object of class '"retroharmonize_labelled_spss_survey"', extending [haven::labelled_spss()].
See Also
[haven::labelled_spss()], [as_factor()], [as_numeric()], [as_character()]
Examples
x <- labelled_spss_survey(
x = c(1, 2, 9),
labels = c(Yes = 1, No = 2),
na_values = 9,
id = "survey_1"
)
is.na(x)
as_factor(x)
Retrieve a survey from a survey list
Description
'pull_survey()' retrieves a survey object from a list created with [read_surveys()].
Surveys can be selected using:
- the survey identifier stored in the '"id"' attribute, or - the original source file name stored in the '"filename"' attribute.
Usage
pull_survey(survey_list, id = NULL, filename = NULL)
Arguments
survey_list |
A list of 'survey' objects. |
id |
Optional survey identifier. |
filename |
Optional source file name. |
Details
Extract a single 'survey' object from a list of surveys using either its survey identifier or source file name.
Either 'id' or 'filename' must be supplied.
The function throws an error if:
- neither argument is provided; - the requested survey cannot be found; - or multiple surveys match the query.
Value
A single 'survey' object.
See Also
[read_surveys()]
Other import functions:
harmonize_survey_variables(),
read_csv(),
read_dta(),
read_rds(),
read_spss(),
read_surveys()
Examples
examples_dir <- system.file(
"examples",
package = "retroharmonize"
)
survey_files <- dir(
examples_dir,
pattern = "\\.rds$"
)
example_surveys <- read_surveys(
file.path(examples_dir, survey_files)
)
pull_survey(
example_surveys,
id = "ZA5913"
)
Data Input
Description
See utils::read.csv for details.
Read a survey dataset from a CSV file
Description
Import a survey dataset stored in comma-separated value ('.csv') format and convert it into a survey-compatible tibble with reproducibility metadata retained as attributes.
Usage
read_csv(file, id = NULL, doi = NULL, dataset_bibentry = NULL, ...)
Arguments
file |
Path to a '.csv' file. |
id |
Optional dataset identifier. When omitted, the file name without extension is used. |
doi |
Optional dataset DOI identifier. |
dataset_bibentry |
Optional bibliographic metadata created with [dataset::dublincore()] or [dataset::datacite()]. |
... |
Additional arguments passed to [utils::read.csv()]. |
Details
The imported object is returned as a tibble with additional survey metadata such as identifiers, DOI references, and optional dataset bibliographic metadata.
Value
A tibble-like survey object with metadata attributes retained for reproducible workflows.
See Also
Other import functions:
harmonize_survey_variables(),
pull_survey(),
read_dta(),
read_rds(),
read_spss(),
read_surveys()
Examples
# Create a temporary CSV file:
path <- system.file(
"examples",
"ZA7576.rds",
package = "retroharmonize"
)
read_survey <- read_rds(path)
test_csv_file <- tempfile(fileext = ".csv")
write.csv(
x = read_survey,
file = test_csv_file,
row.names = FALSE
)
# Read the CSV file:
re_read <- read_csv(
file = test_csv_file,
id = "ZA7576",
doi = "test_doi"
)
Read a Stata '.dta' survey file
Description
Import a survey dataset stored in Stata '.dta' format and convert it into a 'survey' object with harmonized metadata and labelled variables.
Usage
read_dta(file, id = NULL, doi = NULL, .name_repair = "unique")
Arguments
file |
Path to a Stata '.dta' file. |
id |
Optional survey identifier. Defaults to the file name without extension. |
doi |
Optional DOI identifier for the survey. |
.name_repair |
Strategy for repairing invalid or duplicated column names. Passed to [haven::read_dta()]. |
Details
This function wraps [haven::read_dta()] and adds:
- error handling, - survey metadata creation, - 'rowid' normalization, - preservation of variable labels, - conversion of labelled variables, - and provenance metadata.
Variable labels are preserved using the '"label"' attribute.
Labelled variables are converted to harmonized labelled survey vectors where possible. Variables that inherit from 'haven_labelled' but do not contain valid label definitions are converted back to standard vectors.
If the file cannot be read, the function returns an empty 'survey' object and emits a warning.
Value
A 'survey' object inheriting from 'data.frame' and 'tbl_df'.
See Also
Other import functions:
harmonize_survey_variables(),
pull_survey(),
read_csv(),
read_rds(),
read_spss(),
read_surveys()
Examples
path <- system.file(
"examples",
"iris.dta",
package = "haven"
)
survey_object <- read_dta(path)
attr(survey_object, "id")
attr(survey_object, "filename")
Read a survey from an '.rds' file
Description
Import a serialized survey object stored in '.rds' format and return it as a 'survey' object with harmonized metadata attributes.
Usage
read_rds(file, dataset_bibentry = NULL, id = NULL, doi = NULL)
Arguments
file |
Path to an '.rds' file containing a survey object. |
dataset_bibentry |
Optional bibliographic metadata created with [dataset::dublincore()] or [dataset::datacite()]. |
id |
Optional survey identifier. Defaults to the file name without extension. |
doi |
Optional DOI identifier for the survey. |
Details
This function restores survey objects previously saved with [base::saveRDS()] or exported from the 'retroharmonize' workflow. The returned object retains survey metadata and gains additional provenance attributes such as source file name and file size.
If the file cannot be read, an empty 'survey' object is returned and a warning is emitted.
The function:
- restores the serialized object, - validates source file information, - normalizes 'rowid', - records provenance metadata, - and stores object and source file sizes as attributes.
Value
A 'survey' object inheriting from 'data.frame' and 'tbl_df' with survey metadata attributes.
See Also
Other import functions:
harmonize_survey_variables(),
pull_survey(),
read_csv(),
read_dta(),
read_spss(),
read_surveys()
Examples
path <- system.file(
"examples",
"ZA7576.rds",
package = "retroharmonize"
)
survey_object <- read_rds(path)
attr(survey_object, "id")
attr(survey_object, "filename")
attr(survey_object, "doi")
Read SPSS survey files
Description
Import SPSS survey files in '.sav', '.zsav', or '.por' format and convert them into harmonized 'survey' objects with preserved metadata, labelled variables, and provenance information.
Usage
read_spss(
file,
user_na = TRUE,
dataset_bibentry = NULL,
id = NULL,
doi = NULL,
.name_repair = "unique"
)
Arguments
file |
Path to an SPSS survey file. |
user_na |
Logical. Should user-defined missing values be imported? Defaults to 'TRUE'. |
dataset_bibentry |
Optional bibliographic metadata created with [dataset::dublincore()] or [dataset::datacite()]. |
id |
Optional survey identifier. Defaults to the file name without extension. |
doi |
Optional DOI identifier. |
.name_repair |
Strategy for repairing invalid or duplicated column names. Passed to [haven::read_spss()]. |
Details
This function wraps [haven::read_spss()] and adds:
- error handling, - harmonized survey metadata, - 'rowid' creation and normalization, - preservation of variable labels, - conversion of labelled SPSS vectors, - handling of malformed labelled variables, - and provenance metadata.
'read_sav()' reads both '.sav' and '.zsav' files. 'read_por()' reads portable SPSS '.por' files. 'read_spss()' automatically dispatches to the appropriate importer based on file extension.
Variables that inherit from 'haven_labelled' but do not contain valid label definitions are converted to standard numeric or character vectors.
If a file cannot be imported, the function returns an empty 'survey' object and emits a warning.
Value
A 'survey' object inheriting from 'data.frame' and 'tbl_df'.
Variable labels are stored in the '"label"' attribute of each variable.
Additional provenance metadata are stored as attributes, including:
- '"id"' - '"doi"' - '"object_size"' - '"source_file_size"'
See Also
Other import functions:
harmonize_survey_variables(),
pull_survey(),
read_csv(),
read_dta(),
read_rds(),
read_surveys()
Examples
path <- system.file(
"examples",
"iris.sav",
package = "haven"
)
survey_object <- read_spss(path)
attr(survey_object, "id")
attr(survey_object, "filename")
Read survey files into memory or save as '.rds'
Description
Import one or more survey files into R using a consistent survey import workflow. The function supports SPSS ('.sav', '.por'), Stata ('.dta'), R ('.rds'), and CSV files.
Usage
read_surveys(
survey_paths,
.f = NULL,
export_path = NULL,
ids = NULL,
dois = NULL,
...
)
read_survey(
file_path,
.f = NULL,
export_path = NULL,
doi = NULL,
id = NULL,
...
)
Arguments
survey_paths |
A character vector containing full or relative paths to survey files. |
.f |
Import function to use. When 'NULL', the appropriate import function is selected automatically from the file extension. Supported formats are:
|
export_path |
Optional path where imported surveys should be saved as '.rds' files. Defaults to 'NULL'. |
ids |
Optional survey identifiers. |
dois |
Optional DOI identifiers for the imported surveys. |
... |
Additional arguments passed to the import function. |
Details
Use [read_survey()] to import a single survey file and 'read_surveys()' to import multiple files in a loop.
When 'export_path' is 'NULL', imported surveys are returned as a list in memory. When 'export_path' is a valid directory, imported surveys are saved as '.rds' files with [base::saveRDS()].
Files that cannot be imported are skipped gracefully. A message is printed and 'NULL' is returned for the affected file.
Value
If 'export_path = NULL', a list of imported survey objects.
If 'export_path' is provided, a character vector containing exported '.rds' file names.
Imported surveys are returned as data frame-like [survey()] objects with metadata attributes retained for reproducible workflows.
See Also
[read_survey()], [survey()]
Other import functions:
harmonize_survey_variables(),
pull_survey(),
read_csv(),
read_dta(),
read_rds(),
read_spss()
Examples
file1 <- system.file(
"examples",
"ZA7576.rds",
package = "retroharmonize"
)
file2 <- system.file(
"examples",
"ZA5913.rds",
package = "retroharmonize"
)
surveys <- read_surveys(
c(file1, file2),
.f = "read_rds"
)
retroharmonize: Retrospective harmonization of survey data files
Description
The goal of retroharmonize is to facilitate retrospective (ex-post)
harmonization of data, particularly survey data, in a reproducible manner.
The package provides tools for organizing the metadata, standardizing the
coding of variables, variable names and value labels, including missing
values, and for documenting all transformations, with the help of
comprehensive S3 classes.
import functions
Read data stored in formats with rich metadata, such as SPSS (.sav) files,
and make them usable in a programmatic context.
read_spss: read an SPSS file and record metadata for reproducibility
read_rds: read an rds file and record metadata for reproducibility
read_surveys: programmatically read a list of surveys
pull_survey: pull a single survey from a survey list.
subsetting functions
subset_surveys: remove variables from surveys that cannot be harmonized.
variable name harmonization functions
harmonize_survey_variables: Create a list of surveys with harmonized variable names.
variable label harmonization functions
Create consistent coding and labelling.
harmonize_values: Harmonize the label list across surveys.
harmonize_survey_values: Create a list of surveys with harmonized value labels.
na_range_to_values: Make the na_range attributes,
as imported from SPSS, consistent with the na_values attributes.
label_normalize removes special characters, whitespace,
and other typical typing errors and helps the uniformization of labels
and variable names.
survey harmonization functions
merge_surveys: Create a list of surveys with harmonized names and variable labels.
crosswalk_surveys: Create a list of surveys with harmonized variable names, harmonized
value labels and harmonize R classes.
crosswalk: Create a joined data frame of surveys with harmonized variable names, harmonized
value labels and harmonize R classes.
metadata functions
metadata_create: Createa metadata dataa from one or more survey.
metadata_survey_create: Create a joined metadata data frame from one survey.
create_codebook and codebook_waves_create
crosswalk_table_create: Create an initial crosswalk table from a metadata data frame.
documentation functions
Make the workflow reproducible by recording the harmonization process.
document_survey_item: Returns a list of the current and historic coding,
labelling of the valid range and missing values or range, the history of the variable names
and the history of the survey IDs.
document_surveys: Document the key attributes surveys in a survey list.
type conversion functions
Consistently treat labels and SPSS-style user-defined missing
values in the R language.
survey helps constructing a valid survey data frame, and
labelled_spss_survey helps creating a vector for a
questionnaire item.
as_numeric: convert to numeric values.
as_factor: convert to labels to factor levels.
as_character: convert to labels to characters.
as_labelled_spss_survey: convert labelled and labelled_spss
vectors to labelled_spss_survey vectors.
Author(s)
Maintainer: Daniel Antal daniel.antal@dataobservatory.eu (ORCID)
Authors:
Daniel Antal daniel.antal@dataobservatory.eu (ORCID)
Other contributors:
Marta Kolczynska mkolczynska@gmail.com (ORCID) [contributor]
See Also
Useful links:
Report bugs at https://github.com/dataobservatory-eu/retroharmonize/issues
Subset surveys from files
Description
Subset surveys from files
Usage
subset_survey_file(
file_path,
subset_vars,
subset_name = "subset",
id = NULL,
export_path = NULL
)
Arguments
file_path |
A single survey files. |
subset_vars |
Character vector of variable names to retain. If 'NULL', all variables are retained. |
subset_name |
Character string appended to filenames of subsetted surveys. Defaults to '"subset"'. |
export_path |
Optional directory where subsetted surveys are saved as '.rds' files. If 'NULL', surveys are returned in memory. |
Subset surveys in memory
Description
Subset surveys in memory
Usage
subset_survey_memory(
this_survey,
subset_vars,
subset_name = "subset",
export_path = NULL
)
Arguments
subset_vars |
Character vector of variable names to retain. If 'NULL', all variables are retained. |
subset_name |
Character string appended to filenames of subsetted surveys. Defaults to '"subset"'. |
export_path |
Optional directory where subsetted surveys are saved as '.rds' files. If 'NULL', surveys are returned in memory. |
Subset and optionally harmonize surveys
Description
Subset one or more surveys by retaining a specified set of variables. Subsetting can be performed either on surveys already loaded in memory or directly from survey files on disk.
If a crosswalk table is supplied, variables are selected based on the variables listed for each survey in the crosswalk, and variable names can optionally be harmonized using 'var_name_target'.
This function replaces the deprecated helpers [subset_waves()] and [subset_save_surveys()].
Usage
subset_surveys(
survey_list,
survey_paths = NULL,
rowid = "rowid",
subset_name = "subset",
subset_vars = NULL,
crosswalk_table = NULL,
import_path = NULL,
export_path = NULL
)
subset_waves(waves, subset_vars = NULL)
subset_save_surveys(
crosswalk_table,
subset_name = "subset",
survey_list = NULL,
subset_vars = NULL,
survey_paths = NULL,
import_path = NULL,
export_path = NULL
)
Arguments
survey_list |
A list of survey objects created by [read_surveys()]. If 'NULL', surveys are read from disk. |
survey_paths |
A character vector of full file paths to survey files. Used when 'survey_list' is 'NULL'. |
rowid |
Name of the unique observation identifier column. Defaults to '"rowid"'. |
subset_name |
Character string appended to filenames of subsetted surveys. Defaults to '"subset"'. |
subset_vars |
Character vector of variable names to retain. If 'NULL', all variables are retained. |
crosswalk_table |
Optional crosswalk table created with [crosswalk_table_create()]. If supplied, variables are selected per survey based on 'var_name_orig', and variable names may be harmonized using 'var_name_target'. |
import_path |
Optional directory containing survey files. Used to resolve filenames when subsetting from disk. |
export_path |
Optional directory where subsetted surveys are saved as '.rds' files. If 'NULL', surveys are returned in memory. |
waves |
A list of surveys imported with [read_surveys()]. |
Details
The function supports multiple workflows:
* **In-memory subsetting** using 'survey_list' * **File-based subsetting** using 'survey_paths' or 'import_path' * **Crosswalk-driven subsetting**, where variables are selected per survey using a crosswalk table created by [crosswalk_table_create()]
If 'export_path' is provided, subsetted surveys are written to disk as '.rds' files. Otherwise, subsetted surveys are returned in memory.
Value
Either: * a list of subsetted survey objects (if 'export_path = NULL'), or * a character vector of filenames written to 'export_path'.
See Also
[crosswalk_table_create()], [harmonize_survey_variables()], [read_surveys()]
Examples
examples_dir <- system.file("examples", package = "retroharmonize")
survey_files <- dir(examples_dir, pattern = "\\.rds$")
surveys <- read_surveys(
file.path(examples_dir, survey_files),
export_path = NULL
)
subset_surveys(
survey_list = surveys,
subset_vars = c("rowid", "isocntry", "qa10_1", "qa14_1"),
subset_name = "example_subset"
)
Create a survey data frame
Description
Store the data of a survey in a tibble (data frame) with a unique survey identifier, import filename, and optional document object identifier.
Usage
survey(object = data.frame(), id = "survey_id", filename = NULL, doi = NULL)
is.survey(object)
## S3 method for class 'survey'
summary(object, ...)
Arguments
object |
A tibble or data frame that contains the survey data. |
id |
A mandatory identifier for the survey. |
filename |
The import file name. |
doi |
Optional document object identifier (doi), can be omitted. |
... |
Arguments passed to summary method. |
Details
Whilst you can create a survey object with this helper function, it is most likely that
you will receive it with an importing function, i.e.
read_rds, read_spss read_dta, read_csv or
their common wrapper read_survey.
Value
A tibble with id, filename, doi
metadata information.
See Also
Other importing functions:
is.survey_df()
Examples
example_survey <- survey(
object = data.frame(
rowid = 1:6,
observations = runif(6)
),
id = "example",
filename = "no_file"
)
Validate harmonize_labels parameter Check if "from", "to", and "numeric_values" are of equal lengths.
Description
Validate harmonize_labels parameter Check if "from", "to", and "numeric_values" are of equal lengths.
Usage
validate_harmonize_labels(harmonize_labels)
Convert labelled missing values to NA
Description
Internal helper used by numeric summary methods to replace SPSS-style missing values with 'NA'.
Usage
vec_convert_na(x)
Arguments
x |
A labelled survey vector. |
Value
A numeric vector with missing values converted to 'NA'.