6 releases (3 breaking)

Uses old Rust 2015

0.5.0 Feb 13, 2020
0.4.0 Feb 13, 2020
0.3.0 Aug 16, 2017
0.2.2 Jul 17, 2017
0.2.1 Mar 7, 2017

#404 in Algorithms

Download history 12/week @ 2023-11-23 3/week @ 2023-11-30 10/week @ 2023-12-14 12/week @ 2023-12-21 1/week @ 2023-12-28 7/week @ 2024-01-04 19/week @ 2024-01-11 5/week @ 2024-01-18 1/week @ 2024-01-25 2/week @ 2024-02-01 8/week @ 2024-02-08 26/week @ 2024-02-15 57/week @ 2024-02-22 120/week @ 2024-02-29 55/week @ 2024-03-07

260 downloads per month
Used in 8 crates (4 directly)

MIT license

125KB
365 lines

rs-natural

Build Status

Natural language processing library written in Rust. Still very much a work in progress. Basically an experiment, but hey maybe something cool will come out of it.

Currently working:

  • Jaro-Winkler Distance
  • Levenshtein Distance
  • Tokenizing
  • NGrams (with and without padding)
  • Phonetics (Soundex)
  • Naive-Bayes classification
    • Serialization via Serde
  • Term Frequency-Inverse Document Frequency(tf-idf)
    • Serialization via Serde

Near-sight goals:

  • Logistic regression classification
  • Optimize naive-bayes (currently pretty slow)
  • Plural/Singular inflector

How to use

Use at your own risk. Some functionality is missing, some other functionality is slow as molasses because it isn't optomized yet. I'm targeting master, and don't offer backward compatibility.

Setup

It's a crate with a cargo.toml. Add this to your cargo.toml:

[dependencies]
natural = "0.3.0"

# Or enable Serde support
natural = { version = "0.4.0", features = ["serde_support"]}
serde = "1.0"

Distance

extern crate natural;
use natural::distance::jaro_winkler_distance;
use natural::distance::levenshtein_distance;

assert_eq!(levenshtein_distance("kitten", "sitting"), 3);
assert_eq!(jaro_winkler_distance("dixon", "dicksonx"), 0.767); 

Note, don't actually assert_eq! on JWD since it returns an f64. To test, I actually use:

fn f64_eq(a: f32, b: f32) {
  assert!((a - b).abs() < 0.01);
}

Phonetics

There are two ways to gain access to the SoundEx algorithm in this library, either through a simple soundex function that accepts two &str parameters and returns a boolean, or through the SoundexWord struct. I will show both here.

use natural::phonetics::soundex;
use natural::phonetics::SoundexWord;

assert!(soundex("rupert", "robert"));


let s1 = SoundexWord::new("rupert");
let s2 = SoundexWord::new("robert");
assert!(s1.sounds_like(s2));
assert!(s1.sounds_like_str("robert"));

Tokenization

extern crate natural;
use natural::tokenize::tokenize;

assert_eq!(tokenize("hello, world!"), vec!["hello", "world"]);
assert_eq!(tokenize("My dog has fleas."), vec!["My", "dog", "has", "fleas"]);

NGrams

You can create an ngram with and without padding, e.g.:

extern crate natural;

use natural::ngram::get_ngram;
use natural::ngram::get_ngram_with_padding;

assert_eq!(get_ngram("hello my darling", 2), vec![vec!["hello", "my"], vec!["my", "darling"]]);

assert_eq!(get_ngram_with_padding("my fleas", 2, "----"), vec![
  vec!["----", "my"], vec!["my", "fleas"], vec!["fleas", "----"]]);

Classification

extern crate natural;
use natural::classifier::NaiveBayesClassifier;

let mut nbc = NaiveBayesClassifier::new();

nbc.train(STRING_TO_TRAIN, LABEL);
nbc.train(STRING_TO_TRAIN, LABEL);
nbc.train(STRING_TO_TRAIN, LABEL);
nbc.train(STRING_TO_TRAIN, LABEL);

nbc.guess(STRING_TO_GUESS); //returns a label with the highest probability

Tf-Idf

extern crate natural;
use natural::tf_idf::TfIdf;

tf_idf.add("this document is about rust.");
tf_idf.add("this document is about erlang.");
tf_idf.add("this document is about erlang and rust.");
tf_idf.add("this document is about rust. it has rust examples");

println!(tf_idf.get("rust")); //0.2993708f32
println!(tf_idf.get("erlang")); //0.13782766f32

//average of multiple terms
println!(tf_idf.get("rust erlang"); //0.21859923

Dependencies

~3.5MB
~42K SLoC