find_duplicates {synthesisr} | R Documentation |
Detect duplicate values
Description
Identifies duplicate bibliographic entries using different duplicate detection methods.
Usage
find_duplicates(
data,
method = "exact",
group_by,
threshold,
to_lower = FALSE,
rm_punctuation = FALSE
)
Arguments
data |
A character vector containing duplicate bibliographic entries. |
method |
A string indicating how matching should be calculated. Either |
group_by |
An optional vector, data.frame or list containing data to use as 'grouping' variables; that is, categories within which duplicates should be sought. Defaults to NULL, in which case all entries are compared against all others. Ignored if |
threshold |
Numeric: the cutoff threshold for deciding if two strings are duplcates. Sensible values depend on the |
to_lower |
Logical: Should all entries be converted to lower case before calculating string distance? Defaults to FALSE. |
rm_punctuation |
Logical: Should punctuation should be removed before calculating string distance? Defaults to FALSE. |
Value
Returns a vector of duplicate matches, with attributes
listing methods used.
See Also
string_
or fuzz_
for suitable functions to pass to methods
; extract_unique_references
and deduplicate
for higher-level functions.
Examples
my_df <- data.frame(
title = c(
"EviAtlas: a tool for visualising evidence synthesis databases",
"revtools: An R package to support article screening for evidence synthesis",
"An automated approach to identifying search terms for systematic reviews",
"Reproducible, flexible and high-throughput data extraction from primary literature",
"eviatlas:tool for visualizing evidence synthesis databases.",
"REVTOOLS a package to support article-screening for evidence synthsis"
),
year = c("2019", "2019", "2019", "2019", NA, NA),
authors = c("Haddaway et al", "Westgate",
"Grames et al", "Pick et al", NA, NA),
stringsAsFactors = FALSE
)
# run deduplication
dups <- find_duplicates(
my_df$title,
method = "string_osa",
rm_punctuation = TRUE,
to_lower = TRUE
)
extract_unique_references(my_df, matches = dups)
# or, in one line:
deduplicate(my_df, "title",
method = "string_osa",
rm_punctuation = TRUE,
to_lower = TRUE)