Skip to main content

Compute distance between the two texts.

Project description

TextDistance

TextDistance logo

Build Status PyPI version Status License

TextDistance -- python library for comparing distance between two or more sequences by many algorithms.

Features:

  • 30+ algorithms
  • Pure python implementation
  • Simple usage
  • More than two sequences comparing
  • Some algorithms have more than one implementation in one class.
  • Optional numpy usage for maximum speed.

Algorithms

Edit based

Algorithm Class Functions
Hamming Hamming hamming
MLIPNS Mlipns mlipns
Levenshtein Levenshtein levenshtein
Damerau-Levenshtein DamerauLevenshtein damerau_levenshtein
Jaro-Winkler JaroWinkler jaro_winkler, jaro
Strcmp95 StrCmp95 strcmp95
Needleman-Wunsch NeedlemanWunsch needleman_wunsch
Gotoh Gotoh gotoh
Smith-Waterman SmithWaterman smith_waterman

Token based

Algorithm Class Functions
Jaccard index Jaccard jaccard
Sørensen–Dice coefficient Sorensen sorensen, sorensen_dice, dice
Tversky index Tversky tversky
Overlap coefficient Overlap overlap
Tanimoto distance Tanimoto tanimoto
Cosine similarity Cosine cosine
Monge-Elkan MongeElkan monge_elkan
Bag distance Bag bag

Sequence based

Algorithm Class Functions
longest common subsequence similarity LCSSeq lcsseq
longest common substring similarity LCSStr lcsstr
Ratcliff-Obershelp similarity RatcliffObershelp ratcliff_obershelp

Compression based

Normalized compression distance with different compression algorithms.

Classic compression algorithms:

Algorithm Class Function
Arithmetic coding ArithNCD arith_ncd
RLE RLENCD rle_ncd
BWT RLE BWTRLENCD bwtrle_ncd

Normal compression algorithms:

Algorithm Class Function
Square Root SqrtNCD sqrt_ncd
Entropy EntropyNCD entropy_ncd

Work in progress algorithms that compare two strings as array of bits:

Algorithm Class Function
BZ2 BZ2NCD bz2_ncd
LZMA LZMANCD lzma_ncd
ZLib ZLIBNCD zlib_ncd

See blog post for more details about NCD.

Phonetic

Algorithm Class Functions
MRA MRA mra
Editex Editex editex

Simple

Algorithm Class Functions
Prefix similarity Prefix prefix
Postfix similarity Postfix postfix
Length distance Length length
Identity similarity Identity identity
Matrix similarity Matrix matrix

Installation

Stable

Only pure python implementation:

pip install textdistance

With extra libraries for maximum speed:

pip install "textdistance[extras]"

With all libraries (required for benchmarking and testing):

pip install "textdistance[benchmark]"

With algorithm specific extras:

pip install "textdistance[Hamming]"

Algorithms with available extras: DamerauLevenshtein, Hamming, Jaro, JaroWinkler, Levenshtein.

Dev

Via pip:

pip install -e git+https://github.com/life4/textdistance.git#egg=textdistance

Or clone repo and install with some extras:

git clone https://github.com/life4/textdistance.git
pip install -e ".[benchmark]"

Usage

All algorithms have 2 interfaces:

  1. Class with algorithm-specific params for customizing.
  2. Class instance with default params for quick and simple usage.

All algorithms have some common methods:

  1. .distance(*sequences) -- calculate distance between sequences.
  2. .similarity(*sequences) -- calculate similarity for sequences.
  3. .maximum(*sequences) -- maximum possible value for distance and similarity. For any sequence: distance + similarity == maximum.
  4. .normalized_distance(*sequences) -- normalized distance between sequences. The return value is a float between 0 and 1, where 0 means equal, and 1 totally different.
  5. .normalized_similarity(*sequences) -- normalized similarity for sequences. The return value is a float between 0 and 1, where 0 means totally different, and 1 equal.

Most common init arguments:

  1. qval -- q-value for split sequences into q-grams. Possible values:
    • 1 (default) -- compare sequences by chars.
    • 2 or more -- transform sequences to q-grams.
    • None -- split sequences by words.
  2. as_set -- for token-based algorithms:
    • True -- t and ttt is equal.
    • False (default) -- t and ttt is different.

Examples

For example, Hamming distance:

import textdistance

textdistance.hamming('test', 'text')
# 1

textdistance.hamming.distance('test', 'text')
# 1

textdistance.hamming.similarity('test', 'text')
# 3

textdistance.hamming.normalized_distance('test', 'text')
# 0.25

textdistance.hamming.normalized_similarity('test', 'text')
# 0.75

textdistance.Hamming(qval=2).distance('test', 'text')
# 2

Any other algorithms have same interface.

Articles

A few articles with examples how to use textdistance in the real world:

Extra libraries

For main algorithms textdistance try to call known external libraries (fastest first) if available (installed in your system) and possible (this implementation can compare this type of sequences). Install textdistance with extras for this feature.

You can disable this by passing external=False argument on init:

import textdistance
hamming = textdistance.Hamming(external=False)
hamming('text', 'testit')
# 3

Supported libraries:

  1. abydos
  2. Distance
  3. jellyfish
  4. py_stringmatching
  5. pylev
  6. python-Levenshtein
  7. pyxDamerauLevenshtein

Algorithms:

  1. DamerauLevenshtein
  2. Hamming
  3. Jaro
  4. JaroWinkler
  5. Levenshtein

Benchmarks

Without extras installation:

algorithm library function time
DamerauLevenshtein jellyfish damerau_levenshtein_distance 0.00965294
DamerauLevenshtein pyxdameraulevenshtein damerau_levenshtein_distance 0.151378
DamerauLevenshtein pylev damerau_levenshtein 0.766461
DamerauLevenshtein textdistance DamerauLevenshtein 4.13463
DamerauLevenshtein abydos damerau_levenshtein 4.3831
Hamming Levenshtein hamming 0.0014428
Hamming jellyfish hamming_distance 0.00240262
Hamming distance hamming 0.036253
Hamming abydos hamming 0.0383933
Hamming textdistance Hamming 0.176781
Jaro Levenshtein jaro 0.00313561
Jaro jellyfish jaro_distance 0.0051885
Jaro py_stringmatching jaro 0.180628
Jaro textdistance Jaro 0.278917
JaroWinkler Levenshtein jaro_winkler 0.00319735
JaroWinkler jellyfish jaro_winkler 0.00540443
JaroWinkler textdistance JaroWinkler 0.289626
Levenshtein Levenshtein distance 0.00414404
Levenshtein jellyfish levenshtein_distance 0.00601647
Levenshtein py_stringmatching levenshtein 0.252901
Levenshtein pylev levenshtein 0.569182
Levenshtein distance levenshtein 1.15726
Levenshtein abydos levenshtein 3.68451
Levenshtein textdistance Levenshtein 8.63674

Total: 24 libs.

Yeah, so slow. Use TextDistance on production only with extras.

Textdistance use benchmark's results for algorithm's optimization and try to call fastest external lib first (if possible).

You can run benchmark manually on your system:

pip install textdistance[benchmark]
python3 -m textdistance.benchmark

TextDistance show benchmarks results table for your system and save libraries priorities into libraries.json file in TextDistance's folder. This file will be used by textdistance for calling fastest algorithm implementation. Default libraries.json already included in package.

Running tests

You can run tests via dephell:

curl -L dephell.org/install | python3
dephell venv create --env=pytest-external
dephell deps install --env=pytest-external
dephell venv run --env=pytest-external

Contributing

PRs are welcome!

  • Found a bug? Fix it!
  • Want to add more algorithms? Sure! Just make it with the same interface as other algorithms in the lib and add some tests.
  • Can make something faster? Great! Just avoid external dependencies and remember that everything should work not only with strings.
  • Something else that do you think is good? Do it! Just make sure that CI passes and everything from the README is still applicable (interface, features, and so on).
  • Have no time to code? Tell your friends and subscribers about textdistance. More users, more contributions, more amazing features.

Thank you :heart:

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

textdistance-4.2.1.tar.gz (28.9 kB view details)

Uploaded Source

Built Distribution

textdistance-4.2.1-py3-none-any.whl (29.0 kB view details)

Uploaded Python 3

File details

Details for the file textdistance-4.2.1.tar.gz.

File metadata

  • Download URL: textdistance-4.2.1.tar.gz
  • Upload date:
  • Size: 28.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/3.3.0 pkginfo/1.7.0 requests/2.25.1 setuptools/52.0.0 requests-toolbelt/0.9.1 tqdm/4.56.0 CPython/3.7.9

File hashes

Hashes for textdistance-4.2.1.tar.gz
Algorithm Hash digest
SHA256 46f8df3b26c7f319ab500b417047f61b85c2dd221781cb02f6c9136e5f1c9284
MD5 4ea3f16a9657f88f594ac0e5dcf483ca
BLAKE2b-256 9839bdaa561d1e1398d29d81992b61fed76b271dc325d947afcf3cd4aca1b652

See more details on using hashes here.

File details

Details for the file textdistance-4.2.1-py3-none-any.whl.

File metadata

  • Download URL: textdistance-4.2.1-py3-none-any.whl
  • Upload date:
  • Size: 29.0 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/3.3.0 pkginfo/1.7.0 requests/2.25.1 setuptools/52.0.0 requests-toolbelt/0.9.1 tqdm/4.56.0 CPython/3.7.9

File hashes

Hashes for textdistance-4.2.1-py3-none-any.whl
Algorithm Hash digest
SHA256 870c436b2923e0b491fa7bfe9cc45014fc328f90448a9d721baf042f9c209704
MD5 848e6b7656e375c777bee32aa4393d82
BLAKE2b-256 2d6da04e0ec4b82a2a554b44deb01cc5dcfa56502784a7af356b47f83906af91

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page