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recodeflow
recodes variables from multiple data sets into harmonized variables.
recodeflow
has basic functions and templates required to define, recode, and harmonize variables for any dataset.
Recoding and cleaning your data is typically the most time consuming step of your project. Existing functions such as sjmisc::rec()
and dplyr:recode()
work well but they are limited to recoding one variable at a time.
The recodeflow
package takes data cleaning and recoding one step further. recodeflow
allows you to recode multiple variables at the same time, and harmonize variables across similar databases even when the variables and variables' categories change.
recodeflow
also helps to reduce errors, document the recode process, and ensures your new variables have labels and other metadata.
Even if your project has few variables,recodeflow
can save you time.
Use the worksheets variables
and variable_details
to list your variables and state how to recode the each variable.
Once your variables are defined, use recodeflow
functions to clean and recode your data. The main recodeflow
function is rec_with_table
which recodes variables within you dataset(s) based on how you've defined the variable in the worksheets variables
and variable_details
.
The recodeflow
package includes:
-
functions required to clean and recode variables.
-
worksheets:
variables
a list of variables to recode andvariable_details
mapping of variables across datasets and a list of instructions for recoding variables.
We've also created the following documentation to help you understand recodeflow
:
- how to guides examples of how to use
recodeflow
and adaptrecodeflow
for your dataset, - articles that describe package elements (e.g., variables) in detail,
- references that describe all
recodeflow
functions, and - example data to demonstrate
recodeflow
functions and templates.
Currently recodeflow
is used in packages that harmonize health surveys and health administrative databases.
-
cchsflow
is a package that harmonizes variables across cycles of the Canadian Community Health Survey (CCHS). cchsflow is published. -
raiflow
is a package that will harmonize variables within the Resident Assessments Instruments (RAI) from various sources: Canada's Continuing Care Reporting System (CCRS) and Ontario's Resident Assessment Instrutment for Home Care (RAI-HC).raiflow
is currently underdevelopment.
Projects on the roadmap are at the Github repository recodeflow under the projects tab.
Please follow the recodeflow contribution guide if you would like to contribute to the recodeflow
package.