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551 lines
20 KiB
Python
551 lines
20 KiB
Python
# -*- coding: utf-8 -*-
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# Natural Language Toolkit: IBM Model Core
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#
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# Copyright (C) 2001-2020 NLTK Project
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# Author: Tah Wei Hoon <hoon.tw@gmail.com>
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# URL: <http://nltk.org/>
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# For license information, see LICENSE.TXT
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"""
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Common methods and classes for all IBM models. See ``IBMModel1``,
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``IBMModel2``, ``IBMModel3``, ``IBMModel4``, and ``IBMModel5``
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for specific implementations.
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The IBM models are a series of generative models that learn lexical
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translation probabilities, p(target language word|source language word),
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given a sentence-aligned parallel corpus.
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The models increase in sophistication from model 1 to 5. Typically, the
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output of lower models is used to seed the higher models. All models
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use the Expectation-Maximization (EM) algorithm to learn various
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probability tables.
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Words in a sentence are one-indexed. The first word of a sentence has
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position 1, not 0. Index 0 is reserved in the source sentence for the
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NULL token. The concept of position does not apply to NULL, but it is
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indexed at 0 by convention.
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Each target word is aligned to exactly one source word or the NULL
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token.
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References:
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Philipp Koehn. 2010. Statistical Machine Translation.
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Cambridge University Press, New York.
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Peter E Brown, Stephen A. Della Pietra, Vincent J. Della Pietra, and
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Robert L. Mercer. 1993. The Mathematics of Statistical Machine
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Translation: Parameter Estimation. Computational Linguistics, 19 (2),
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263-311.
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"""
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from bisect import insort_left
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from collections import defaultdict
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from copy import deepcopy
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from math import ceil
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def longest_target_sentence_length(sentence_aligned_corpus):
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"""
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:param sentence_aligned_corpus: Parallel corpus under consideration
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:type sentence_aligned_corpus: list(AlignedSent)
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:return: Number of words in the longest target language sentence
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of ``sentence_aligned_corpus``
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"""
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max_m = 0
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for aligned_sentence in sentence_aligned_corpus:
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m = len(aligned_sentence.words)
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max_m = max(m, max_m)
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return max_m
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class IBMModel(object):
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"""
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Abstract base class for all IBM models
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"""
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# Avoid division by zero and precision errors by imposing a minimum
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# value for probabilities. Note that this approach is theoretically
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# incorrect, since it may create probabilities that sum to more
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# than 1. In practice, the contribution of probabilities with MIN_PROB
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# is tiny enough that the value of MIN_PROB can be treated as zero.
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MIN_PROB = 1.0e-12 # GIZA++ is more liberal and uses 1.0e-7
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def __init__(self, sentence_aligned_corpus):
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self.init_vocab(sentence_aligned_corpus)
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self.reset_probabilities()
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def reset_probabilities(self):
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self.translation_table = defaultdict(
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lambda: defaultdict(lambda: IBMModel.MIN_PROB)
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)
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"""
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dict[str][str]: float. Probability(target word | source word).
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Values accessed as ``translation_table[target_word][source_word]``.
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"""
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self.alignment_table = defaultdict(
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lambda: defaultdict(
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lambda: defaultdict(lambda: defaultdict(lambda: IBMModel.MIN_PROB))
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)
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)
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"""
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dict[int][int][int][int]: float. Probability(i | j,l,m).
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Values accessed as ``alignment_table[i][j][l][m]``.
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Used in model 2 and hill climbing in models 3 and above
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"""
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self.fertility_table = defaultdict(lambda: defaultdict(lambda: self.MIN_PROB))
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"""
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dict[int][str]: float. Probability(fertility | source word).
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Values accessed as ``fertility_table[fertility][source_word]``.
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Used in model 3 and higher.
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"""
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self.p1 = 0.5
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"""
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Probability that a generated word requires another target word
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that is aligned to NULL.
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Used in model 3 and higher.
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"""
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def set_uniform_probabilities(self, sentence_aligned_corpus):
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"""
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Initialize probability tables to a uniform distribution
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Derived classes should implement this accordingly.
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"""
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pass
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def init_vocab(self, sentence_aligned_corpus):
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src_vocab = set()
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trg_vocab = set()
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for aligned_sentence in sentence_aligned_corpus:
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trg_vocab.update(aligned_sentence.words)
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src_vocab.update(aligned_sentence.mots)
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# Add the NULL token
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src_vocab.add(None)
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self.src_vocab = src_vocab
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"""
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set(str): All source language words used in training
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"""
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self.trg_vocab = trg_vocab
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"""
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set(str): All target language words used in training
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"""
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def sample(self, sentence_pair):
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"""
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Sample the most probable alignments from the entire alignment
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space
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First, determine the best alignment according to IBM Model 2.
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With this initial alignment, use hill climbing to determine the
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best alignment according to a higher IBM Model. Add this
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alignment and its neighbors to the sample set. Repeat this
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process with other initial alignments obtained by pegging an
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alignment point.
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Hill climbing may be stuck in a local maxima, hence the pegging
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and trying out of different alignments.
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:param sentence_pair: Source and target language sentence pair
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to generate a sample of alignments from
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:type sentence_pair: AlignedSent
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:return: A set of best alignments represented by their ``AlignmentInfo``
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and the best alignment of the set for convenience
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:rtype: set(AlignmentInfo), AlignmentInfo
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"""
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sampled_alignments = set()
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l = len(sentence_pair.mots)
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m = len(sentence_pair.words)
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# Start from the best model 2 alignment
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initial_alignment = self.best_model2_alignment(sentence_pair)
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potential_alignment = self.hillclimb(initial_alignment)
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sampled_alignments.update(self.neighboring(potential_alignment))
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best_alignment = potential_alignment
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# Start from other model 2 alignments,
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# with the constraint that j is aligned (pegged) to i
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for j in range(1, m + 1):
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for i in range(0, l + 1):
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initial_alignment = self.best_model2_alignment(sentence_pair, j, i)
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potential_alignment = self.hillclimb(initial_alignment, j)
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neighbors = self.neighboring(potential_alignment, j)
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sampled_alignments.update(neighbors)
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if potential_alignment.score > best_alignment.score:
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best_alignment = potential_alignment
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return sampled_alignments, best_alignment
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def best_model2_alignment(self, sentence_pair, j_pegged=None, i_pegged=0):
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"""
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Finds the best alignment according to IBM Model 2
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Used as a starting point for hill climbing in Models 3 and
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above, because it is easier to compute than the best alignments
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in higher models
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:param sentence_pair: Source and target language sentence pair
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to be word-aligned
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:type sentence_pair: AlignedSent
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:param j_pegged: If specified, the alignment point of j_pegged
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will be fixed to i_pegged
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:type j_pegged: int
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:param i_pegged: Alignment point to j_pegged
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:type i_pegged: int
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"""
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src_sentence = [None] + sentence_pair.mots
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trg_sentence = ["UNUSED"] + sentence_pair.words # 1-indexed
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l = len(src_sentence) - 1 # exclude NULL
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m = len(trg_sentence) - 1
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alignment = [0] * (m + 1) # init all alignments to NULL
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cepts = [[] for i in range((l + 1))] # init all cepts to empty list
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for j in range(1, m + 1):
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if j == j_pegged:
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# use the pegged alignment instead of searching for best one
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best_i = i_pegged
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else:
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best_i = 0
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max_alignment_prob = IBMModel.MIN_PROB
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t = trg_sentence[j]
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for i in range(0, l + 1):
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s = src_sentence[i]
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alignment_prob = (
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self.translation_table[t][s] * self.alignment_table[i][j][l][m]
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)
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if alignment_prob >= max_alignment_prob:
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max_alignment_prob = alignment_prob
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best_i = i
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alignment[j] = best_i
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cepts[best_i].append(j)
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return AlignmentInfo(
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tuple(alignment), tuple(src_sentence), tuple(trg_sentence), cepts
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)
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def hillclimb(self, alignment_info, j_pegged=None):
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"""
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Starting from the alignment in ``alignment_info``, look at
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neighboring alignments iteratively for the best one
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There is no guarantee that the best alignment in the alignment
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space will be found, because the algorithm might be stuck in a
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local maximum.
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:param j_pegged: If specified, the search will be constrained to
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alignments where ``j_pegged`` remains unchanged
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:type j_pegged: int
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:return: The best alignment found from hill climbing
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:rtype: AlignmentInfo
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"""
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alignment = alignment_info # alias with shorter name
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max_probability = self.prob_t_a_given_s(alignment)
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while True:
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old_alignment = alignment
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for neighbor_alignment in self.neighboring(alignment, j_pegged):
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neighbor_probability = self.prob_t_a_given_s(neighbor_alignment)
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if neighbor_probability > max_probability:
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alignment = neighbor_alignment
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max_probability = neighbor_probability
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if alignment == old_alignment:
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# Until there are no better alignments
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break
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alignment.score = max_probability
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return alignment
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def neighboring(self, alignment_info, j_pegged=None):
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"""
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Determine the neighbors of ``alignment_info``, obtained by
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moving or swapping one alignment point
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:param j_pegged: If specified, neighbors that have a different
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alignment point from j_pegged will not be considered
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:type j_pegged: int
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:return: A set neighboring alignments represented by their
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``AlignmentInfo``
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:rtype: set(AlignmentInfo)
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"""
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neighbors = set()
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l = len(alignment_info.src_sentence) - 1 # exclude NULL
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m = len(alignment_info.trg_sentence) - 1
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original_alignment = alignment_info.alignment
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original_cepts = alignment_info.cepts
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for j in range(1, m + 1):
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if j != j_pegged:
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# Add alignments that differ by one alignment point
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for i in range(0, l + 1):
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new_alignment = list(original_alignment)
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new_cepts = deepcopy(original_cepts)
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old_i = original_alignment[j]
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# update alignment
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new_alignment[j] = i
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# update cepts
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insort_left(new_cepts[i], j)
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new_cepts[old_i].remove(j)
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new_alignment_info = AlignmentInfo(
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tuple(new_alignment),
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alignment_info.src_sentence,
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alignment_info.trg_sentence,
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new_cepts,
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)
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neighbors.add(new_alignment_info)
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for j in range(1, m + 1):
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if j != j_pegged:
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# Add alignments that have two alignment points swapped
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for other_j in range(1, m + 1):
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if other_j != j_pegged and other_j != j:
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new_alignment = list(original_alignment)
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new_cepts = deepcopy(original_cepts)
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other_i = original_alignment[other_j]
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i = original_alignment[j]
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# update alignments
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new_alignment[j] = other_i
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new_alignment[other_j] = i
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# update cepts
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new_cepts[other_i].remove(other_j)
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insort_left(new_cepts[other_i], j)
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new_cepts[i].remove(j)
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insort_left(new_cepts[i], other_j)
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new_alignment_info = AlignmentInfo(
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tuple(new_alignment),
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alignment_info.src_sentence,
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alignment_info.trg_sentence,
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new_cepts,
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)
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neighbors.add(new_alignment_info)
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return neighbors
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def maximize_lexical_translation_probabilities(self, counts):
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for t, src_words in counts.t_given_s.items():
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for s in src_words:
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estimate = counts.t_given_s[t][s] / counts.any_t_given_s[s]
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self.translation_table[t][s] = max(estimate, IBMModel.MIN_PROB)
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def maximize_fertility_probabilities(self, counts):
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for phi, src_words in counts.fertility.items():
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for s in src_words:
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estimate = counts.fertility[phi][s] / counts.fertility_for_any_phi[s]
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self.fertility_table[phi][s] = max(estimate, IBMModel.MIN_PROB)
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def maximize_null_generation_probabilities(self, counts):
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p1_estimate = counts.p1 / (counts.p1 + counts.p0)
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p1_estimate = max(p1_estimate, IBMModel.MIN_PROB)
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# Clip p1 if it is too large, because p0 = 1 - p1 should not be
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# smaller than MIN_PROB
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self.p1 = min(p1_estimate, 1 - IBMModel.MIN_PROB)
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def prob_of_alignments(self, alignments):
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probability = 0
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for alignment_info in alignments:
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probability += self.prob_t_a_given_s(alignment_info)
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return probability
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def prob_t_a_given_s(self, alignment_info):
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"""
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Probability of target sentence and an alignment given the
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source sentence
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All required information is assumed to be in ``alignment_info``
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and self.
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Derived classes should override this method
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"""
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return 0.0
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class AlignmentInfo(object):
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"""
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Helper data object for training IBM Models 3 and up
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Read-only. For a source sentence and its counterpart in the target
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language, this class holds information about the sentence pair's
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alignment, cepts, and fertility.
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Warning: Alignments are one-indexed here, in contrast to
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nltk.translate.Alignment and AlignedSent, which are zero-indexed
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This class is not meant to be used outside of IBM models.
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"""
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def __init__(self, alignment, src_sentence, trg_sentence, cepts):
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if not isinstance(alignment, tuple):
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raise TypeError(
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"The alignment must be a tuple because it is used "
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"to uniquely identify AlignmentInfo objects."
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)
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self.alignment = alignment
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"""
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tuple(int): Alignment function. ``alignment[j]`` is the position
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in the source sentence that is aligned to the position j in the
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target sentence.
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"""
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self.src_sentence = src_sentence
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"""
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tuple(str): Source sentence referred to by this object.
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Should include NULL token (None) in index 0.
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"""
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self.trg_sentence = trg_sentence
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"""
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tuple(str): Target sentence referred to by this object.
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Should have a dummy element in index 0 so that the first word
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starts from index 1.
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"""
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self.cepts = cepts
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"""
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list(list(int)): The positions of the target words, in
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ascending order, aligned to a source word position. For example,
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cepts[4] = (2, 3, 7) means that words in positions 2, 3 and 7
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of the target sentence are aligned to the word in position 4 of
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the source sentence
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"""
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self.score = None
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"""
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float: Optional. Probability of alignment, as defined by the
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IBM model that assesses this alignment
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"""
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def fertility_of_i(self, i):
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"""
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Fertility of word in position ``i`` of the source sentence
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"""
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return len(self.cepts[i])
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def is_head_word(self, j):
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"""
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:return: Whether the word in position ``j`` of the target
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sentence is a head word
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"""
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i = self.alignment[j]
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return self.cepts[i][0] == j
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def center_of_cept(self, i):
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"""
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:return: The ceiling of the average positions of the words in
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the tablet of cept ``i``, or 0 if ``i`` is None
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"""
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if i is None:
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return 0
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average_position = sum(self.cepts[i]) / len(self.cepts[i])
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return int(ceil(average_position))
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def previous_cept(self, j):
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"""
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:return: The previous cept of ``j``, or None if ``j`` belongs to
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the first cept
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"""
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i = self.alignment[j]
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if i == 0:
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raise ValueError(
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"Words aligned to NULL cannot have a previous "
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"cept because NULL has no position"
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)
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previous_cept = i - 1
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while previous_cept > 0 and self.fertility_of_i(previous_cept) == 0:
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previous_cept -= 1
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if previous_cept <= 0:
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previous_cept = None
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return previous_cept
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def previous_in_tablet(self, j):
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"""
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:return: The position of the previous word that is in the same
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tablet as ``j``, or None if ``j`` is the first word of the
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tablet
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"""
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i = self.alignment[j]
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tablet_position = self.cepts[i].index(j)
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if tablet_position == 0:
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return None
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return self.cepts[i][tablet_position - 1]
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def zero_indexed_alignment(self):
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"""
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:return: Zero-indexed alignment, suitable for use in external
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``nltk.translate`` modules like ``nltk.translate.Alignment``
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:rtype: list(tuple)
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"""
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zero_indexed_alignment = []
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for j in range(1, len(self.trg_sentence)):
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i = self.alignment[j] - 1
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if i < 0:
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i = None # alignment to NULL token
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zero_indexed_alignment.append((j - 1, i))
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return zero_indexed_alignment
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def __eq__(self, other):
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return self.alignment == other.alignment
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def __ne__(self, other):
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return not self == other
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def __hash__(self):
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return hash(self.alignment)
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class Counts(object):
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"""
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Data object to store counts of various parameters during training
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"""
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def __init__(self):
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self.t_given_s = defaultdict(lambda: defaultdict(lambda: 0.0))
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self.any_t_given_s = defaultdict(lambda: 0.0)
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self.p0 = 0.0
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self.p1 = 0.0
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self.fertility = defaultdict(lambda: defaultdict(lambda: 0.0))
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self.fertility_for_any_phi = defaultdict(lambda: 0.0)
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def update_lexical_translation(self, count, alignment_info, j):
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i = alignment_info.alignment[j]
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t = alignment_info.trg_sentence[j]
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s = alignment_info.src_sentence[i]
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self.t_given_s[t][s] += count
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self.any_t_given_s[s] += count
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def update_null_generation(self, count, alignment_info):
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m = len(alignment_info.trg_sentence) - 1
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fertility_of_null = alignment_info.fertility_of_i(0)
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self.p1 += fertility_of_null * count
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self.p0 += (m - 2 * fertility_of_null) * count
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|
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def update_fertility(self, count, alignment_info):
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for i in range(0, len(alignment_info.src_sentence)):
|
|
s = alignment_info.src_sentence[i]
|
|
phi = alignment_info.fertility_of_i(i)
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|
self.fertility[phi][s] += count
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self.fertility_for_any_phi[s] += count
|