Fast and well-tested implementations of edit distance/string similarity metrics:
- Levenshtein,
- Damerau-Levenshtein,
- Hamming,
- Jaro,
- Jaro-Winkler.
See API reference.
Add this to your Cargo.toml
:
[dependencies]
eddie = "0.4"
Levenshtein:
use eddie::Levenshtein;
let lev = Levenshtein::new();
let dist = lev.distance("martha", "marhta");
assert_eq!(dist, 2);
Damerau-Levenshtein:
use eddie::DamerauLevenshtein;
let damlev = DamerauLevenshtein::new();
let dist = damlev.distance("martha", "marhta");
assert_eq!(dist, 1);
Hamming:
use eddie::Hamming;
let hamming = Hamming::new();
let dist = hamming.distance("martha", "marhta");
assert_eq!(dist, Some(2));
Jaro:
use eddie::Jaro;
let jaro = Jaro::new();
let sim = jaro.similarity("martha", "marhta");
assert!((sim - 0.94).abs() < 0.01);
Jaro-Winkler:
use eddie::JaroWinkler;
let jarwin = JaroWinkler::new();
let sim = jarwin.similarity("martha", "marhta");
assert!((sim - 0.96).abs() < 0.01);
The crate exposes two modules containing two sets of implementations:
eddie::str
for comparing UTF-8 encoded&str
and&String
values. Implementations are reexported in the root module.eddie::slice
for comparing generic slices&[T]
. Implementations in this module are significantly faster than those fromeddie::str
, but will produce incorrect results for UTF-8 and other variable width character encodings.
Usage example:
use eddie::slice::Levenshtein;
let lev = Levenshtein::new();
let dist = lev.distance(&[1, 2, 3], &[1, 3]);
assert_eq!(dist, 1);
The main metric methods are complemented with inverted and/or relative versions. The naming convention across the crate is following:
distance
— a number of edits required to transform one string to the other;rel_dist
— a distance between two strings, relative to string length (inversion of similarity);similarity
— similarity between two strings (inversion of relative distance).
At the moment Eddie has the fastest implementations among the alternatives from crates.io that have Unicode support.
For example, when comparing common english words you can expect at least 1.5-2x speedup for any given algorithm except Hamming.
For the detailed measurements tables see Benchmarks page.