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hismatch

R package to link historical individual-level data. Optimized to run on many cores. Read documentation here or below.

Installation

The development version from GitHub with:

# install.packages("devtools")
devtools::install_github("eirikberger/hismatch")

Use auth_token option to use personal access tokens while the repo is still privat.

Usage

A brief example of how to setup the class and run it.

library(data.table)
library(furrr)
library(hismatch)

dta1 <- fread("~/Dropbox/shared_server/deathDataFromFMB/processed_data/dar_1928-1945.csv")[1:1000]
dta2 <- copy(dta1)

plan(multisession, workers = 1L)

linkingTest <- Hismatch$new(data1 = dta1,
                            data2 = dta2, 
                            firstname='firstname', 
                            surname='lastname',
                            blocks=c(),
                            dist_thr=0.5, 
                            rel_thr=FALSE, 
                            max_block_size=50000, 
                            matching_method=c("jw"))

# define matching blocks
linkingTest$blocks <- c('l_first', 'l_sur', 'byear', 'bmonth', 'bday', 'male')

# execute fuzzy matching
linkingTest$runMatching()

Inspect results

Examples of how to extract information and data based on fuzzy match, as well as to save and read results.

# print basic matching statistics
linkingTest

# other information and data
linkingTest$getMatchingRatesByVariable_DT(variable_list="birth_year", data=linkingTest$data1_pros)
linkingTest$plotMatchingByGroup('birth_year>1850')

linkingTest$full_match
linkingTest$data1_pros
linkingTest$data2_pros
linkingTest$data1
linkingTest$data2

linkingTest$blocks 

# read and save results
linkingTest <- readHismatchClass('linkingTest.RDS')
saveHismatch('linkingTest', 'linkingTest.RDS')

Iterative Matching

There are cases where you want to start with the most restrictive blocking strategy, and than gradually lift blocks for observations that are not matched. In the following, I demonstrate how this can be implemented, where block_list is a list of the vectors used for blocking from the strictest to the least strict.

linkingTest <- Hismatch$new(data1 = dta1, 
                            data2 = dta2
                            firstname = "firstname",
                            surname = "carryforward_surname",
                            dist_thr = 0.90,
                            rel_thr = FALSE,
                            max_block_size = 50000,
                            letters = 1,
                            matching_method = c("jw")
)

# Linking
bl1 <- c("l_first", "l_sur")
bl2 <- c("l_first", "l_sur", "komnr")
bl3 <- c("l_first", "l_sur", "komnr", "residence")
bl4 <- c("l_first", "l_sur", "komnr", "residence", "occupation")
block_list <- list(bl4, bl3, bl2, bl1)

linkingTest$iterative_link("iterative_linking", block_list, "Norway_to_random_source", "dataset_1", "dataset_2")

iterative_link_by_year is a wrapper around this function, and matches observations by year from the same data.table. This function matches observations in year t to t+2 as defined by the years vector.

linkingTest <- Hismatch$new(firstname = "firstname",
                            surname = "carryforward_surname",
                            dist_thr = 0.90,
                            rel_thr = FALSE,
                            max_block_size = 50000,
                            letters = 1,
                            matching_method = c("jw")
)

# Linking
bl1 <- c("l_first", "l_sur")
bl2 <- c("l_first", "l_sur", "komnr")
bl3 <- c("l_first", "l_sur", "komnr", "residence")
bl4 <- c("l_first", "l_sur", "komnr", "residence", "occupation")
block_list <- list(bl4, bl3, bl2, bl1)

linkingTest$iterative_link_by_year(dta, years, "Norway", "iterative_linking", block_list, 2)

Unifying Names

A frequent problem in name matching is that some sources include full middle names, some include only the first letter and some ignore them altogether. If two sources use different approaches, then it could increases error. The function unify_names() solves this by checking the naming convention for the two possible matches and makes them consistent. See an example produced by ChatGPT below.

   name_from_dataset1  name_from_dataset2    new_name_1    new_name_2
1:   John Michael Doe          John M Doe    John M Doe    John M Doe
2:         Jane M Doe   Jane Michaela Doe    Jane M Doe    Jane M Doe
3:       Robert Smith   Robert Alan Smith  Robert Smith  Robert Smith
4:      Ann B Johnson Ann Bethany Johnson Ann B Johnson Ann B Johnson
5:     Chris G W Bush          Chris Bush    Chris Bush    Chris Bush

Set unify_middlenames = TRUE in Hismatch$new() do activate this functionality.

About

R package to link historical individual-level data.

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MIT
LICENSE.md

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