R/links-97-pair-doc.R

#' @name Links97Pair
#'
#' @docType data
#'
#' @title Kinship linking file for pairs of relatives in the NLSY97
#'
#' @description This dataset specifies the relatedness coefficient (ie, '`R`') between
#' subjects in the same extended family.  Each row represents a unique
#' relationship pair.
#'
#' NOTE: Two variable names changed in November 2013. `Subject1Tag` and `Subject2Tag` became `SubjectTag_S1` and `SubjectTag_S2`.
#'
#' @format A data frame with 2,519 observations on the following 5 variables.
#' There is one row per unique pair of subjects, irrespective of order.
#'
#' * **ExtendedID** Identity of the extended family of the pair; it corresponds to the HHID in the NLSY97.  See References below.
#' * **SubjectTag_S1** Identity of the pair's first subject.  See Details below.
#' * **SubjectTag_S2** Identity of the pair's second subject.  See Details below.
#' * **R** The pair's Relatedness coefficient.  See Details below.
#' * **RelationshipPath** Specifies the relationship category of the pair.  This variable is a factor, with level `Housemates`=1.
#'
#' @details
#'
#' The variable `ExtendedID` corresponds to the NLSY97 variable `[SIDCODE]`
#' (*e.g.*, [R11930.00](https://www.nlsinfo.org/investigator/pages/search.jsp#R11930.00)),
#' which uniquely identifies a *household* that may contain multiple NLSY97 subjects.
#'
#' The variables `SubjectTag_S1` and `SubjectTag_S2` uniquely identify
#' subjects.  It corresponds to the NLSY97 variable `[PUBID]`,
#' (*e.g.*, [R00001.00](https://www.nlsinfo.org/investigator/pages/search.jsp#R00001.00)).
#'
#' The `RelationshipPath` variable is not useful with this dataset,
#' but is included to be consistent with the [Links97Pair] dataset.
#'
#' An extended family with \eqn{k} subjects will have
#' \eqn{k}(\eqn{k}-1)/2 rows.  Typically, Subject1 is older while Subject2 is
#' younger.
#'
#' MZ twins have *R*=1.  DZ twins and full-siblings have *R*=.5.
#' Half-siblings have *R*=.25. Typical first cousins have *R*=.125.
#' Unrelated subjects have *R*=0 (this occasionally happens for
#' `Housemates`, but never for the other paths).
#' Other *R* coefficients are possible.
#'
#' There are several other uncommon possibilities, such as half-cousins (*R*=.0625) and
#' ambiguous aunt-nieces (*R*=.125, which is an average of 1/4 and 0/4).
#' The variable coding for genetic relatedness,`R`, in [`Links97Pair`] contains
#' only the common values of *R* whose groups are likely to have stable estimates.
#' However the variable `RFull` in [`Links97PairExpanded`] contains all *R* values.
#' We strongly recommend using `R` in this [base::data.frame].  Move to
#' `RFull` (or some combination) only if you have a good reason, and are willing
#' to carefully monitor a variety of validity checks.  Some of these
#' excluded groups are too small to be estimated reliably.
#'
#' @author Will Beasley
#'
#' @seealso The `LinksPair97` dataset contains columns necessary for a
#' basic BG analysis.  The [Links97PairExpanded] dataset contains
#' further information that might be useful in more complicated BG analyses.
#'
#' A tutorial that produces a similar dataset is
#' http://www.nlsinfo.org/childya/nlsdocs/tutorials/linking_mothers_and_children/linking_mothers_and_children_tutorial.html.
#' It provides examples in SAS, SPSS, and STATA.
#'
#' The current dataset (ie, `Links97Pair`) can be saved as a CSV file
#' (comma-separated file) and imported into in other programs and languages.
#' In the R console, type the following two lines of code:
#'
#' `library(NlsyLinks)`
#' `write.csv(Links97Pair, "C:/BGDirectory/Links97Pair.csv")`
#'
#' where `"C:/BGDirectory/"` is replaced by your preferred directory.
#' Remember to use forward slashes instead of backslashes; for instance, the
#' path `"C:\BGDirectory\Links97Pair.csv"` can be misinterpreted.
#'
#' **Download CSV**
#' If you're using the NlsyLinks package in R, the dataset is automatically available.
#' To use it in a different environment,
#' [download the csv](https://github.com/nlsy-links/NlsyLinks/blob/master/outside-data/nlsy-97/links-2017-97.csv?raw=true),
#' which is readable by all statistical software.
#' [links-metadata-2017-97.yml](https://github.com/nlsy-links/NlsyLinks/blob/master/outside-data/nlsy-97/links-metadata-2017-97.yml)
#' documents the dataset version information.
#'
#' @references
#'
#' For more information on *R* (*ie*, the Relatedness coefficient), please see
#' Rodgers, Joseph Lee, & Kohler, Hans-Peter (2005).
#' [Reformulating and simplifying the DF analysis model.](https://pubmed.ncbi.nlm.nih.gov/15685433/)
#' *Behavior Genetics, 35* (2), 211-217.
#'
#' @source Information comes from the Summer 2018 release of the
#' [NLSY97 sample](https://www.nlsinfo.org/content/cohorts/nlsy97).
#' Data were extracted with the NLS Investigator
#' (https://www.nlsinfo.org/investigator/).
#'
#' @keywords datasets
#'
#' @examples
#' library(NlsyLinks) # Load the package into the current R session.
#' summary(Links97Pair) # Summarize the five variables.
#' hist(Links97Pair$R) # Display a histogram of the Relatedness coefficients.
#' table(Links97Pair$R) # Create a table of the Relatedness coefficients for the whole sample.
#'
#' # Create a dataset of only monozygotic sibs.
#' mz_sibs <- subset(Links97Pair, R > .9)
#' summary(mz_sibs) # Create a table MZ sibs.
#'
NULL

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NlsyLinks documentation built on Oct. 10, 2024, 5:08 p.m.