Find errors in data given a set of validation rules. The errorlocate
helps to identify obvious errors in raw datasets.
It works in tandem with the package validate
. With validate
you
formulate data validation rules to which the data must comply.
For example:
- “age cannot be negative”:
age >= 0
. - “if a person is married, he must be older then 16 years”:
if (married ==TRUE) age > 16
. - “Profit is turnover minus cost”:
profit == turnover - cost
.
While validate
can check if a record is valid or not, it does not
identify which of the variables are responsible for the invalidation.
This may seem a simple task, but is actually quite tricky: a set of
validation rules forms a web of dependent variables: changing the value
of an invalid record to repair for rule 1, may invalidate the record for
rule 2.
errorlocate
provides a small framework for record based error
detection and implements the Felligi Holt algorithm. This algorithm
assumes there is no other information available then the values of a
record and a set of validation rules. The algorithm minimizes the
(weighted) number of values that need to be adjusted to remove the
invalidation.
errorlocate
can be installed from CRAN:
install.packages("errorlocate")
Beta versions can be installed with drat
:
drat::addRepo("data-cleaning")
install.packages("errorlocate")
The latest development version of errorlocate
can be installed from
github with devtools
:
devtools::install_github("data-cleaning/errorlocate")
library(errorlocate)
#> Loading required package: validate
rules <- validator( profit == turnover - cost
, cost >= 0.6 * turnover
, turnover >= 0
, cost >= 0 # is implied
)
data <- data.frame(profit=750, cost=125, turnover=200)
data_no_error <- replace_errors(data, rules)
# faulty data was replaced with NA
print(data_no_error)
#> profit cost turnover
#> 1 NA 125 200
er <- errors_removed(data_no_error)
print(er)
#> call: locate_errors(data, x, ref, ..., cl = cl)
#> located 1 error(s).
#> located 0 missing value(s).
#> Use 'summary', 'values', '$errors' or '$weight', to explore and retrieve the errors.
summary(er)
#> Variable:
#> name errors missing
#> 1 profit 1 0
#> 2 cost 0 0
#> 3 turnover 0 0
#> Errors per record:
#> errors records
#> 1 1 1
er$errors
#> profit cost turnover
#> [1,] TRUE FALSE FALSE