[![Build Status](https://travis-ci.org/matthieugomez/StringDistances.jl.svg?branch=master)](https://travis-ci.org/matthieugomez/StringDistances.jl) [![Coverage Status](https://coveralls.io/repos/matthieugomez/StringDistances.jl/badge.svg?branch=master)](https://coveralls.io/r/matthieugomez/StringDistances.jl?branch=master) ## Installation The package is registered in the [`General`](https://github.com/JuliaRegistries/General) registry and so can be installed at the REPL with `] add StringDistances`. ## Supported Distances The available distances are: - Edit Distances - [Jaro Distance](https://en.wikipedia.org/wiki/Jaro%E2%80%93Winkler_distance) `Jaro()` - [Levenshtein Distance](https://en.wikipedia.org/wiki/Levenshtein_distance) `Levenshtein()` - [Damerau-Levenshtein Distance](https://en.wikipedia.org/wiki/Damerau%E2%80%93Levenshtein_distance) `DamerauLevenshtein()` - [RatcliffObershelp Distance](https://xlinux.nist.gov/dads/HTML/ratcliffObershelp.html) `RatcliffObershelp()` - Q-gram distances compare the set of all substrings of length `q` in each string. - QGram Distance `Qgram(q::Int)` - [Cosine Distance](https://en.wikipedia.org/wiki/Cosine_similarity) `Cosine(q::Int)` - [Jaccard Distance](https://en.wikipedia.org/wiki/Jaccard_index) `Jaccard(q::Int)` - [Overlap Distance](https://en.wikipedia.org/wiki/Overlap_coefficient) `Overlap(q::Int)` - [Sorensen-Dice Distance](https://en.wikipedia.org/wiki/S%C3%B8rensen%E2%80%93Dice_coefficient) `SorensenDice(q::Int)` - Distance "modifiers" that can be applied to any distance: - [Winkler](https://en.wikipedia.org/wiki/Jaro%E2%80%93Winkler_distance) diminishes the distance of strings with common prefixes. The Winkler adjustment was originally defined for the Jaro similarity score but it can be defined for any string distance. - [Partial](http://chairnerd.seatgeek.com/fuzzywuzzy-fuzzy-string-matching-in-python/) returns the minimum distance between the shorter string and substrings of the longer string. - [TokenSort](http://chairnerd.seatgeek.com/fuzzywuzzy-fuzzy-string-matching-in-python/) adjusts for differences in word orders by reording words alphabetically. - [TokenSet](http://chairnerd.seatgeek.com/fuzzywuzzy-fuzzy-string-matching-in-python/) adjusts for differences in word orders and word numbers by comparing the intersection of two strings with each string. - [TokenMax](http://chairnerd.seatgeek.com/fuzzywuzzy-fuzzy-string-matching-in-python/) combines scores using the base distance, the `Partial`, `TokenSort` and `TokenSet` modifiers, with penalty terms depending on string lengths. This is a good distance to match strings composed of multiple words, like addresses. `TokenMax(Levenshtein())` corresponds to the distance defined in [fuzzywuzzy](http://chairnerd.seatgeek.com/fuzzywuzzy-fuzzy-string-matching-in-python/) ## Basic Use ### Evaluate You can always compute a certain distance between two strings using the following syntax: ```julia evaluate(dist, s1, s2) dist(s1, s2) ``` For instance, with the `Levenshtein` distance, ```julia evaluate(Levenshtein(), "martha", "marhta") Levenshtein()("martha", "marhta") ``` You can also compute a distance between two iterators: ```julia evaluate(Levenshtein(), [1, 5, 6], [1, 6, 5]) 2 ``` ### Compare The function `compare` is defined as 1 minus the normalized distance between two strings. It always returns a `Float64` between 0 and 1: a value of 0 means completely different and a value of 1 means completely similar. ```julia evaluate(Levenshtein(), "martha", "martha") #> 0 compare("martha", "martha", Levenshtein()) #> 1.0 ``` ### Find - `findmax` returns the value and index of the element in `itr` with the highest similarity score with `s`. Its syntax is: ```julia findmax(s, itr, dist::StringDistance; min_score = 0.0) ``` - `findall` returns the indices of all elements in `itr` with a similarity score with `s` higher than a minimum value (default to 0.8). Its syntax is: ```julia findall(s, itr, dist::StringDistance; min_score = 0.8) ``` The functions `findmax` and `findall` are particularly optimized for `Levenshtein` and `DamerauLevenshtein` distances (as well as their modifications via `Partial`, `TokenSort`, `TokenSet`, or `TokenMax`). ## References - [The stringdist Package for Approximate String Matching](https://journal.r-project.org/archive/2014-1/loo.pdf) Mark P.J. van der Loo - [fuzzywuzzy](http://chairnerd.seatgeek.com/fuzzywuzzy-fuzzy-string-matching-in-python/)