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matchmaker R package

Lifecycle: experimental CRAN status Travis build status AppVeyor build status Codecov test coverage

The goal of {matchmaker} is to provide dictionary-based cleaning for R users in a simple and intuitive manner built on the {forcats} package. Some of the features of this package include:

Installation

You can install {matchmaker} from CRAN:

install.packages("matchmaker")

Example

The matchmaker package has two user-facing functions that perform dictionary-based cleaning:

Each of these functions have four manditory options:

Mostly, users will be working with match_df() to transform values across specific columns. A typical workflow would be to:

  1. construct your dictionary in a spreadsheet program based on your data
  2. read in your data and dictionary to data frames in R
  3. match!
library("matchmaker")

# Read in data set
dat <- read.csv(matchmaker_example("coded-data.csv"),
  stringsAsFactors = FALSE
)
dat$date <- as.Date(dat$date)

# Read in dictionary
dict <- read.csv(matchmaker_example("spelling-dictionary.csv"),
  stringsAsFactors = FALSE
)

Data

This is the top of our data set, generated for example purposes

id date readmission treated facility age_group lab_result_01 lab_result_02 lab_result_03 has_symptoms followup
ef267c 2019-07-08 NA 0 C 10 unk high inc NA u
e80a37 2019-07-07 y 0 3 10 inc unk norm y oui
b72883 2019-07-07 y 1 8 30 inc norm inc oui
c9ee86 2019-07-09 n 1 4 40 inc inc unk y oui
40bc7a 2019-07-12 n 1 6 0 norm unk norm NA n
46566e 2019-07-14 y NA B 50 unk unk inc NA NA

Dictionary

The dictionary looks like this:

options values grp orders
y Yes readmission 1
n No readmission 2
u Unknown readmission 3
.missing Missing readmission 4
0 Yes treated 1
1 No treated 2
.missing Missing treated 3
1 Facility 1 facility 1
2 Facility 2 facility 2
3 Facility 3 facility 3
4 Facility 4 facility 4
5 Facility 5 facility 5
6 Facility 6 facility 6
7 Facility 7 facility 7
8 Facility 8 facility 8
9 Facility 9 facility 9
10 Facility 10 facility 10
.default Unknown facility 11
0 0-9 age_group 1
10 10-19 age_group 2
20 20-29 age_group 3
30 30-39 age_group 4
40 40-49 age_group 5
50 50+ age_group 6
high High .regex ^lab_result_ 1
norm Normal .regex ^lab_result_ 2
inc Inconclusive .regex ^lab_result_ 3
y yes .global Inf
n no .global Inf
u unknown .global Inf
unk unknown .global Inf
oui yes .global Inf
.missing missing .global Inf

Matching

# Clean spelling based on dictionary -----------------------------
cleaned <- match_df(dat,
  dictionary = dict,
  from = "options",
  to = "values",
  by = "grp"
)
head(cleaned)
#>       id       date readmission treated    facility age_group
#> 1 ef267c 2019-07-08     Missing     Yes     Unknown     10-19
#> 2 e80a37 2019-07-07         Yes     Yes Facility  3     10-19
#> 3 b72883 2019-07-07         Yes      No Facility  8     30-39
#> 4 c9ee86 2019-07-09          No      No Facility  4     40-49
#> 5 40bc7a 2019-07-12          No      No Facility  6       0-9
#> 6 46566e 2019-07-14         Yes Missing     Unknown       50+
#>   lab_result_01 lab_result_02 lab_result_03 has_symptoms followup
#> 1       unknown          High  Inconclusive      missing  unknown
#> 2  Inconclusive       unknown        Normal          yes      yes
#> 3  Inconclusive        Normal  Inconclusive      missing      yes
#> 4  Inconclusive  Inconclusive       unknown          yes      yes
#> 5        Normal       unknown        Normal      missing       no
#> 6       unknown       unknown  Inconclusive      missing  missing

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.