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# -*- coding: utf-8 -*- |
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# Copyright 2014-2019 by Christopher C. Little. |
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# This file is part of Abydos. |
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# |
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# Abydos is free software: you can redistribute it and/or modify |
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# it under the terms of the GNU General Public License as published by |
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# the Free Software Foundation, either version 3 of the License, or |
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# (at your option) any later version. |
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# |
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# Abydos is distributed in the hope that it will be useful, |
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# but WITHOUT ANY WARRANTY; without even the implied warranty of |
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# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the |
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# GNU General Public License for more details. |
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# |
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# You should have received a copy of the GNU General Public License |
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# along with Abydos. If not, see <http://www.gnu.org/licenses/>. |
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"""abydos.distance._levenshtein. |
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The distance._Levenshtein module implements string edit distance functions |
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based on Levenshtein distance, including: |
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- Levenshtein distance |
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- Optimal String Alignment distance |
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""" |
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from __future__ import ( |
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absolute_import, |
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division, |
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print_function, |
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unicode_literals, |
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) |
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from sys import float_info |
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from deprecation import deprecated |
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from numpy import float as np_float |
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from numpy import zeros as np_zeros |
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from six.moves import range |
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from ._distance import _Distance |
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from .. import __version__ |
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__all__ = ['Levenshtein', 'dist_levenshtein', 'levenshtein', 'sim_levenshtein'] |
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class Levenshtein(_Distance): |
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"""Levenshtein distance. |
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This is the standard edit distance measure. Cf. |
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:cite:`Levenshtein:1965,Levenshtein:1966`. |
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Optimal string alignment (aka restricted |
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Damerau-Levenshtein distance) :cite:`Boytsov:2011` is also supported. |
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The ordinary Levenshtein & Optimal String Alignment distance both |
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employ the Wagner-Fischer dynamic programming algorithm |
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:cite:`Wagner:1974`. |
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Levenshtein edit distance ordinarily has unit insertion, deletion, and |
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substitution costs. |
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.. versionadded:: 0.3.6 |
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.. versionchanged:: 0.4.0 |
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Added taper option |
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""" |
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def __init__( |
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self, |
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mode='lev', |
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cost=(1, 1, 1, 1), |
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normalizer=max, |
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taper=False, |
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**kwargs |
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): |
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"""Initialize Levenshtein instance. |
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Parameters |
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---------- |
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mode : str |
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Specifies a mode for computing the Levenshtein distance: |
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- ``lev`` (default) computes the ordinary Levenshtein distance, |
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in which edits may include inserts, deletes, and |
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substitutions |
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- ``osa`` computes the Optimal String Alignment distance, in |
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which edits may include inserts, deletes, substitutions, and |
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transpositions but substrings may only be edited once |
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cost : tuple |
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A 4-tuple representing the cost of the four possible edits: |
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inserts, deletes, substitutions, and transpositions, respectively |
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(by default: (1, 1, 1, 1)) |
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normalizer : function |
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A function that takes an list and computes a normalization term |
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by which the edit distance is divided (max by default). Another |
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good option is the sum function. |
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taper : bool |
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Enables cost tapering. Following :cite:`Zobel:1996`, it causes |
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edits at the start of the string to "just [exceed] twice the |
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minimum penalty for replacement or deletion at the end of the |
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string". |
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**kwargs |
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Arbitrary keyword arguments |
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.. versionadded:: 0.4.0 |
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""" |
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super(Levenshtein, self).__init__(**kwargs) |
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self._mode = mode |
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self._cost = cost |
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self._normalizer = normalizer |
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self._taper_enabled = taper |
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def _taper(self, pos, length): |
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return ( |
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round(1 + ((length - pos) / length) * (1 + float_info.epsilon), 15) |
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if self._taper_enabled |
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else 1 |
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) |
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def _alignment_matrix(self, src, tar): |
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"""Return the Levenshtein alignment matrix. |
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Parameters |
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---------- |
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src : str |
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Source string for comparison |
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tar : str |
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Target string for comparison |
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Returns |
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------- |
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numpy.ndarray |
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The alignment matrix |
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.. versionadded:: 0.4.1 |
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""" |
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ins_cost, del_cost, sub_cost, trans_cost = self._cost |
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src_len = len(src) |
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tar_len = len(tar) |
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max_len = max(src_len, tar_len) |
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d_mat = np_zeros((src_len + 1, tar_len + 1), dtype=np_float) |
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for i in range(src_len + 1): |
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d_mat[i, 0] = i * self._taper(i, max_len) * del_cost |
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for j in range(tar_len + 1): |
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d_mat[0, j] = j * self._taper(j, max_len) * ins_cost |
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for i in range(src_len): |
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for j in range(tar_len): |
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d_mat[i + 1, j + 1] = min( |
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d_mat[i + 1, j] |
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+ ins_cost * self._taper(1 + max(i, j), max_len), # ins |
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d_mat[i, j + 1] |
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+ del_cost * self._taper(1 + max(i, j), max_len), # del |
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d_mat[i, j] |
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+ ( |
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sub_cost * self._taper(1 + max(i, j), max_len) |
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if src[i] != tar[j] |
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else 0 |
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), # sub/== |
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) |
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if self._mode == 'osa': |
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1 |
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if ( |
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i + 1 > 1 |
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and j + 1 > 1 |
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and src[i] == tar[j - 1] |
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and src[i - 1] == tar[j] |
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): |
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# transposition |
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d_mat[i + 1, j + 1] = min( |
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d_mat[i + 1, j + 1], |
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d_mat[i - 1, j - 1] |
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+ trans_cost * self._taper(1 + max(i, j), max_len), |
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) |
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return d_mat |
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View Code Duplication |
def alignment(self, src, tar): |
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"""Return the Levenshtein alignment of two strings. |
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Parameters |
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---------- |
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src : str |
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Source string for comparison |
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tar : str |
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Target string for comparison |
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Returns |
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------- |
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tuple |
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A tuple containing the Levenshtein distance and the two strings, |
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aligned. |
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Examples |
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-------- |
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>>> cmp = Levenshtein() |
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>>> cmp.alignment('cat', 'hat') |
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(1.0, 'cat', 'hat') |
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>>> cmp.alignment('Niall', 'Neil') |
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(3.0, 'Niall', 'Neil-') |
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>>> cmp.alignment('aluminum', 'Catalan') |
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(7.0, '-aluminum', 'Catalan--') |
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>>> cmp.alignment('ATCG', 'TAGC') |
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(3.0, 'ATCG-', '-TAGC') |
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>>> cmp = Levenshtein(mode='osa') |
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>>> cmp.alignment('ATCG', 'TAGC') |
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(2.0, 'ATCG', 'TAGC') |
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>>> cmp.alignment('ACTG', 'TAGC') |
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(4.0, 'ACTG', 'TAGC') |
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.. versionadded:: 0.4.1 |
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""" |
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d_mat = self._alignment_matrix(src, tar) |
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src_aligned = [] |
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tar_aligned = [] |
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src_pos = len(src) |
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tar_pos = len(tar) |
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distance = d_mat[src_pos, tar_pos] |
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while src_pos and tar_pos: |
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up = d_mat[src_pos, tar_pos - 1] |
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left = d_mat[src_pos - 1, tar_pos] |
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diag = d_mat[src_pos - 1, tar_pos - 1] |
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if diag <= min(up, left): |
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src_pos -= 1 |
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tar_pos -= 1 |
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src_aligned.append(src[src_pos]) |
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tar_aligned.append(tar[tar_pos]) |
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elif up <= left: |
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tar_pos -= 1 |
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src_aligned.append('-') |
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tar_aligned.append(tar[tar_pos]) |
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else: |
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src_pos -= 1 |
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src_aligned.append(src[src_pos]) |
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tar_aligned.append('-') |
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while tar_pos: |
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tar_pos -= 1 |
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tar_aligned.append(tar[tar_pos]) |
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src_aligned.append('-') |
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while src_pos: |
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src_pos -= 1 |
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src_aligned.append(src[src_pos]) |
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tar_aligned.append('-') |
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return distance, ''.join(src_aligned[::-1]), ''.join(tar_aligned[::-1]) |
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def dist_abs(self, src, tar): |
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"""Return the Levenshtein distance between two strings. |
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Parameters |
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---------- |
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src : str |
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Source string for comparison |
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tar : str |
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Target string for comparison |
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Returns |
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------- |
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int (may return a float if cost has float values) |
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The Levenshtein distance between src & tar |
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Examples |
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-------- |
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>>> cmp = Levenshtein() |
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>>> cmp.dist_abs('cat', 'hat') |
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1 |
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>>> cmp.dist_abs('Niall', 'Neil') |
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3 |
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>>> cmp.dist_abs('aluminum', 'Catalan') |
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7 |
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>>> cmp.dist_abs('ATCG', 'TAGC') |
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3 |
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>>> cmp = Levenshtein(mode='osa') |
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>>> cmp.dist_abs('ATCG', 'TAGC') |
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2 |
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>>> cmp.dist_abs('ACTG', 'TAGC') |
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4 |
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.. versionadded:: 0.1.0 |
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.. versionchanged:: 0.3.6 |
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Encapsulated in class |
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""" |
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ins_cost, del_cost, sub_cost, trans_cost = self._cost |
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src_len = len(src) |
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tar_len = len(tar) |
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max_len = max(src_len, tar_len) |
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if src == tar: |
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return 0 |
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if not src: |
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return sum( |
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ins_cost * self._taper(pos, max_len) for pos in range(tar_len) |
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) |
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if not tar: |
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return sum( |
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del_cost * self._taper(pos, max_len) for pos in range(src_len) |
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) |
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d_mat = self._alignment_matrix(src, tar) |
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if int(d_mat[src_len, tar_len]) == d_mat[src_len, tar_len]: |
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return int(d_mat[src_len, tar_len]) |
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else: |
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return d_mat[src_len, tar_len] |
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def dist(self, src, tar): |
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"""Return the normalized Levenshtein distance between two strings. |
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The Levenshtein distance is normalized by dividing the Levenshtein |
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distance (calculated by any of the three supported methods) by the |
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greater of the number of characters in src times the cost of a delete |
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and the number of characters in tar times the cost of an insert. |
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For the case in which all operations have :math:`cost = 1`, this is |
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equivalent to the greater of the length of the two strings src & tar. |
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Parameters |
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---------- |
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src : str |
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Source string for comparison |
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tar : str |
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Target string for comparison |
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Returns |
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------- |
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float |
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The normalized Levenshtein distance between src & tar |
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Examples |
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-------- |
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>>> cmp = Levenshtein() |
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>>> round(cmp.dist('cat', 'hat'), 12) |
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0.333333333333 |
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>>> round(cmp.dist('Niall', 'Neil'), 12) |
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0.6 |
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>>> cmp.dist('aluminum', 'Catalan') |
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0.875 |
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>>> cmp.dist('ATCG', 'TAGC') |
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0.75 |
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.. versionadded:: 0.1.0 |
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.. versionchanged:: 0.3.6 |
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Encapsulated in class |
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""" |
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if src == tar: |
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return 0.0 |
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ins_cost, del_cost = self._cost[:2] |
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1 |
|
src_len = len(src) |
373
|
1 |
|
tar_len = len(tar) |
374
|
|
|
|
375
|
1 |
|
if self._taper_enabled: |
376
|
1 |
|
normalize_term = self._normalizer( |
377
|
|
|
[ |
378
|
|
|
sum( |
379
|
|
|
self._taper(pos, src_len) * del_cost |
380
|
|
|
for pos in range(src_len) |
381
|
|
|
), |
382
|
|
|
sum( |
383
|
|
|
self._taper(pos, tar_len) * ins_cost |
384
|
|
|
for pos in range(tar_len) |
385
|
|
|
), |
386
|
|
|
] |
387
|
|
|
) |
388
|
|
|
else: |
389
|
1 |
|
normalize_term = self._normalizer( |
390
|
|
|
[src_len * del_cost, tar_len * ins_cost] |
391
|
|
|
) |
392
|
|
|
|
393
|
1 |
|
return self.dist_abs(src, tar) / normalize_term |
394
|
|
|
|
395
|
|
|
|
396
|
1 |
|
@deprecated( |
397
|
|
|
deprecated_in='0.4.0', |
398
|
|
|
removed_in='0.6.0', |
399
|
|
|
current_version=__version__, |
400
|
|
|
details='Use the Levenshtein.dist_abs method instead.', |
401
|
|
|
) |
402
|
1 |
|
def levenshtein(src, tar, mode='lev', cost=(1, 1, 1, 1)): |
403
|
|
|
"""Return the Levenshtein distance between two strings. |
404
|
|
|
|
405
|
|
|
This is a wrapper of :py:meth:`Levenshtein.dist_abs`. |
406
|
|
|
|
407
|
|
|
Parameters |
408
|
|
|
---------- |
409
|
|
|
src : str |
410
|
|
|
Source string for comparison |
411
|
|
|
tar : str |
412
|
|
|
Target string for comparison |
413
|
|
|
mode : str |
414
|
|
|
Specifies a mode for computing the Levenshtein distance: |
415
|
|
|
|
416
|
|
|
- ``lev`` (default) computes the ordinary Levenshtein distance, in |
417
|
|
|
which edits may include inserts, deletes, and substitutions |
418
|
|
|
- ``osa`` computes the Optimal String Alignment distance, in which |
419
|
|
|
edits may include inserts, deletes, substitutions, and |
420
|
|
|
transpositions but substrings may only be edited once |
421
|
|
|
|
422
|
|
|
cost : tuple |
423
|
|
|
A 4-tuple representing the cost of the four possible edits: inserts, |
424
|
|
|
deletes, substitutions, and transpositions, respectively (by default: |
425
|
|
|
(1, 1, 1, 1)) |
426
|
|
|
|
427
|
|
|
Returns |
428
|
|
|
------- |
429
|
|
|
int (may return a float if cost has float values) |
430
|
|
|
The Levenshtein distance between src & tar |
431
|
|
|
|
432
|
|
|
Examples |
433
|
|
|
-------- |
434
|
|
|
>>> levenshtein('cat', 'hat') |
435
|
|
|
1 |
436
|
|
|
>>> levenshtein('Niall', 'Neil') |
437
|
|
|
3 |
438
|
|
|
>>> levenshtein('aluminum', 'Catalan') |
439
|
|
|
7 |
440
|
|
|
>>> levenshtein('ATCG', 'TAGC') |
441
|
|
|
3 |
442
|
|
|
|
443
|
|
|
>>> levenshtein('ATCG', 'TAGC', mode='osa') |
444
|
|
|
2 |
445
|
|
|
>>> levenshtein('ACTG', 'TAGC', mode='osa') |
446
|
|
|
4 |
447
|
|
|
|
448
|
|
|
.. versionadded:: 0.1.0 |
449
|
|
|
|
450
|
|
|
""" |
451
|
1 |
|
return Levenshtein(mode=mode, cost=cost).dist_abs(src, tar) |
452
|
|
|
|
453
|
|
|
|
454
|
1 |
|
@deprecated( |
455
|
|
|
deprecated_in='0.4.0', |
456
|
|
|
removed_in='0.6.0', |
457
|
|
|
current_version=__version__, |
458
|
|
|
details='Use the Levenshtein.dist method instead.', |
459
|
|
|
) |
460
|
1 |
|
def dist_levenshtein(src, tar, mode='lev', cost=(1, 1, 1, 1)): |
461
|
|
|
"""Return the normalized Levenshtein distance between two strings. |
462
|
|
|
|
463
|
|
|
This is a wrapper of :py:meth:`Levenshtein.dist`. |
464
|
|
|
|
465
|
|
|
Parameters |
466
|
|
|
---------- |
467
|
|
|
src : str |
468
|
|
|
Source string for comparison |
469
|
|
|
tar : str |
470
|
|
|
Target string for comparison |
471
|
|
|
mode : str |
472
|
|
|
Specifies a mode for computing the Levenshtein distance: |
473
|
|
|
|
474
|
|
|
- ``lev`` (default) computes the ordinary Levenshtein distance, in |
475
|
|
|
which edits may include inserts, deletes, and substitutions |
476
|
|
|
- ``osa`` computes the Optimal String Alignment distance, in which |
477
|
|
|
edits may include inserts, deletes, substitutions, and |
478
|
|
|
transpositions but substrings may only be edited once |
479
|
|
|
|
480
|
|
|
cost : tuple |
481
|
|
|
A 4-tuple representing the cost of the four possible edits: inserts, |
482
|
|
|
deletes, substitutions, and transpositions, respectively (by default: |
483
|
|
|
(1, 1, 1, 1)) |
484
|
|
|
|
485
|
|
|
Returns |
486
|
|
|
------- |
487
|
|
|
float |
488
|
|
|
The Levenshtein distance between src & tar |
489
|
|
|
|
490
|
|
|
Examples |
491
|
|
|
-------- |
492
|
|
|
>>> round(dist_levenshtein('cat', 'hat'), 12) |
493
|
|
|
0.333333333333 |
494
|
|
|
>>> round(dist_levenshtein('Niall', 'Neil'), 12) |
495
|
|
|
0.6 |
496
|
|
|
>>> dist_levenshtein('aluminum', 'Catalan') |
497
|
|
|
0.875 |
498
|
|
|
>>> dist_levenshtein('ATCG', 'TAGC') |
499
|
|
|
0.75 |
500
|
|
|
|
501
|
|
|
.. versionadded:: 0.1.0 |
502
|
|
|
|
503
|
|
|
""" |
504
|
1 |
|
return Levenshtein(mode=mode, cost=cost).dist(src, tar) |
505
|
|
|
|
506
|
|
|
|
507
|
1 |
|
@deprecated( |
508
|
|
|
deprecated_in='0.4.0', |
509
|
|
|
removed_in='0.6.0', |
510
|
|
|
current_version=__version__, |
511
|
|
|
details='Use the Levenshtein.sim method instead.', |
512
|
|
|
) |
513
|
1 |
|
def sim_levenshtein(src, tar, mode='lev', cost=(1, 1, 1, 1)): |
514
|
|
|
"""Return the Levenshtein similarity of two strings. |
515
|
|
|
|
516
|
|
|
This is a wrapper of :py:meth:`Levenshtein.sim`. |
517
|
|
|
|
518
|
|
|
Parameters |
519
|
|
|
---------- |
520
|
|
|
src : str |
521
|
|
|
Source string for comparison |
522
|
|
|
tar : str |
523
|
|
|
Target string for comparison |
524
|
|
|
mode : str |
525
|
|
|
Specifies a mode for computing the Levenshtein distance: |
526
|
|
|
|
527
|
|
|
- ``lev`` (default) computes the ordinary Levenshtein distance, in |
528
|
|
|
which edits may include inserts, deletes, and substitutions |
529
|
|
|
- ``osa`` computes the Optimal String Alignment distance, in which |
530
|
|
|
edits may include inserts, deletes, substitutions, and |
531
|
|
|
transpositions but substrings may only be edited once |
532
|
|
|
|
533
|
|
|
cost : tuple |
534
|
|
|
A 4-tuple representing the cost of the four possible edits: inserts, |
535
|
|
|
deletes, substitutions, and transpositions, respectively (by default: |
536
|
|
|
(1, 1, 1, 1)) |
537
|
|
|
|
538
|
|
|
Returns |
539
|
|
|
------- |
540
|
|
|
float |
541
|
|
|
The Levenshtein similarity between src & tar |
542
|
|
|
|
543
|
|
|
Examples |
544
|
|
|
-------- |
545
|
|
|
>>> round(sim_levenshtein('cat', 'hat'), 12) |
546
|
|
|
0.666666666667 |
547
|
|
|
>>> round(sim_levenshtein('Niall', 'Neil'), 12) |
548
|
|
|
0.4 |
549
|
|
|
>>> sim_levenshtein('aluminum', 'Catalan') |
550
|
|
|
0.125 |
551
|
|
|
>>> sim_levenshtein('ATCG', 'TAGC') |
552
|
|
|
0.25 |
553
|
|
|
|
554
|
|
|
.. versionadded:: 0.1.0 |
555
|
|
|
|
556
|
|
|
""" |
557
|
1 |
|
return Levenshtein(mode=mode, cost=cost).sim(src, tar) |
558
|
|
|
|
559
|
|
|
|
560
|
|
|
if __name__ == '__main__': |
561
|
|
|
import doctest |
562
|
|
|
|
563
|
|
|
doctest.testmod() |
564
|
|
|
|