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# -*- coding: utf-8 -*-
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# Natural Language Toolkit: Stack decoder
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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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A decoder that uses stacks to implement phrase-based translation.
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In phrase-based translation, the source sentence is segmented into
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phrases of one or more words, and translations for those phrases are
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used to build the target sentence.
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Hypothesis data structures are used to keep track of the source words
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translated so far and the partial output. A hypothesis can be expanded
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by selecting an untranslated phrase, looking up its translation in a
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phrase table, and appending that translation to the partial output.
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Translation is complete when a hypothesis covers all source words.
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The search space is huge because the source sentence can be segmented
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in different ways, the source phrases can be selected in any order,
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and there could be multiple translations for the same source phrase in
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the phrase table. To make decoding tractable, stacks are used to limit
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the number of candidate hypotheses by doing histogram and/or threshold
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pruning.
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Hypotheses with the same number of words translated are placed in the
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same stack. In histogram pruning, each stack has a size limit, and
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the hypothesis with the lowest score is removed when the stack is full.
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In threshold pruning, hypotheses that score below a certain threshold
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of the best hypothesis in that stack are removed.
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Hypothesis scoring can include various factors such as phrase
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translation probability, language model probability, length of
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translation, cost of remaining words to be translated, and so on.
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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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"""
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import warnings
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from collections import defaultdict
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from math import log
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class StackDecoder(object):
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"""
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Phrase-based stack decoder for machine translation
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>>> from nltk.translate import PhraseTable
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>>> phrase_table = PhraseTable()
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>>> phrase_table.add(('niemand',), ('nobody',), log(0.8))
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>>> phrase_table.add(('niemand',), ('no', 'one'), log(0.2))
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>>> phrase_table.add(('erwartet',), ('expects',), log(0.8))
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>>> phrase_table.add(('erwartet',), ('expecting',), log(0.2))
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>>> phrase_table.add(('niemand', 'erwartet'), ('one', 'does', 'not', 'expect'), log(0.1))
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>>> phrase_table.add(('die', 'spanische', 'inquisition'), ('the', 'spanish', 'inquisition'), log(0.8))
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>>> phrase_table.add(('!',), ('!',), log(0.8))
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>>> # nltk.model should be used here once it is implemented
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>>> from collections import defaultdict
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>>> language_prob = defaultdict(lambda: -999.0)
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>>> language_prob[('nobody',)] = log(0.5)
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>>> language_prob[('expects',)] = log(0.4)
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>>> language_prob[('the', 'spanish', 'inquisition')] = log(0.2)
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>>> language_prob[('!',)] = log(0.1)
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>>> language_model = type('',(object,),{'probability_change': lambda self, context, phrase: language_prob[phrase], 'probability': lambda self, phrase: language_prob[phrase]})()
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>>> stack_decoder = StackDecoder(phrase_table, language_model)
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>>> stack_decoder.translate(['niemand', 'erwartet', 'die', 'spanische', 'inquisition', '!'])
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['nobody', 'expects', 'the', 'spanish', 'inquisition', '!']
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"""
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def __init__(self, phrase_table, language_model):
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"""
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:param phrase_table: Table of translations for source language
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phrases and the log probabilities for those translations.
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:type phrase_table: PhraseTable
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:param language_model: Target language model. Must define a
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``probability_change`` method that calculates the change in
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log probability of a sentence, if a given string is appended
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to it.
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This interface is experimental and will likely be replaced
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with nltk.model once it is implemented.
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:type language_model: object
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"""
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self.phrase_table = phrase_table
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self.language_model = language_model
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self.word_penalty = 0.0
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"""
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float: Influences the translation length exponentially.
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If positive, shorter translations are preferred.
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If negative, longer translations are preferred.
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If zero, no penalty is applied.
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"""
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self.beam_threshold = 0.0
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"""
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float: Hypotheses that score below this factor of the best
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hypothesis in a stack are dropped from consideration.
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Value between 0.0 and 1.0.
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"""
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self.stack_size = 100
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"""
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int: Maximum number of hypotheses to consider in a stack.
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Higher values increase the likelihood of a good translation,
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but increases processing time.
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"""
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self.__distortion_factor = 0.5
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self.__compute_log_distortion()
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@property
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def distortion_factor(self):
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"""
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float: Amount of reordering of source phrases.
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Lower values favour monotone translation, suitable when
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word order is similar for both source and target languages.
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Value between 0.0 and 1.0. Default 0.5.
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"""
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return self.__distortion_factor
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@distortion_factor.setter
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def distortion_factor(self, d):
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self.__distortion_factor = d
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self.__compute_log_distortion()
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def __compute_log_distortion(self):
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# cache log(distortion_factor) so we don't have to recompute it
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# when scoring hypotheses
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if self.__distortion_factor == 0.0:
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self.__log_distortion_factor = log(1e-9) # 1e-9 is almost zero
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else:
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self.__log_distortion_factor = log(self.__distortion_factor)
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def translate(self, src_sentence):
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"""
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:param src_sentence: Sentence to be translated
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:type src_sentence: list(str)
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:return: Translated sentence
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:rtype: list(str)
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"""
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sentence = tuple(src_sentence) # prevent accidental modification
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sentence_length = len(sentence)
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stacks = [
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_Stack(self.stack_size, self.beam_threshold)
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for _ in range(0, sentence_length + 1)
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]
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empty_hypothesis = _Hypothesis()
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stacks[0].push(empty_hypothesis)
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all_phrases = self.find_all_src_phrases(sentence)
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future_score_table = self.compute_future_scores(sentence)
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for stack in stacks:
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for hypothesis in stack:
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possible_expansions = StackDecoder.valid_phrases(
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all_phrases, hypothesis
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)
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for src_phrase_span in possible_expansions:
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src_phrase = sentence[src_phrase_span[0] : src_phrase_span[1]]
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for translation_option in self.phrase_table.translations_for(
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src_phrase
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):
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raw_score = self.expansion_score(
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hypothesis, translation_option, src_phrase_span
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)
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new_hypothesis = _Hypothesis(
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raw_score=raw_score,
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src_phrase_span=src_phrase_span,
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trg_phrase=translation_option.trg_phrase,
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previous=hypothesis,
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)
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new_hypothesis.future_score = self.future_score(
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new_hypothesis, future_score_table, sentence_length
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)
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total_words = new_hypothesis.total_translated_words()
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stacks[total_words].push(new_hypothesis)
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if not stacks[sentence_length]:
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warnings.warn(
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"Unable to translate all words. "
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"The source sentence contains words not in "
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"the phrase table"
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)
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# Instead of returning empty output, perhaps a partial
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# translation could be returned
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return []
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best_hypothesis = stacks[sentence_length].best()
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return best_hypothesis.translation_so_far()
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def find_all_src_phrases(self, src_sentence):
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"""
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Finds all subsequences in src_sentence that have a phrase
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translation in the translation table
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:type src_sentence: tuple(str)
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:return: Subsequences that have a phrase translation,
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represented as a table of lists of end positions.
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For example, if result[2] is [5, 6, 9], then there are
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three phrases starting from position 2 in ``src_sentence``,
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ending at positions 5, 6, and 9 exclusive. The list of
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ending positions are in ascending order.
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:rtype: list(list(int))
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"""
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sentence_length = len(src_sentence)
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phrase_indices = [[] for _ in src_sentence]
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for start in range(0, sentence_length):
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for end in range(start + 1, sentence_length + 1):
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potential_phrase = src_sentence[start:end]
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if potential_phrase in self.phrase_table:
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phrase_indices[start].append(end)
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return phrase_indices
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def compute_future_scores(self, src_sentence):
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"""
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Determines the approximate scores for translating every
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subsequence in ``src_sentence``
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Future scores can be used a look-ahead to determine the
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difficulty of translating the remaining parts of a src_sentence.
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:type src_sentence: tuple(str)
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:return: Scores of subsequences referenced by their start and
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end positions. For example, result[2][5] is the score of the
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subsequence covering positions 2, 3, and 4.
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:rtype: dict(int: (dict(int): float))
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"""
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scores = defaultdict(lambda: defaultdict(lambda: float("-inf")))
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for seq_length in range(1, len(src_sentence) + 1):
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for start in range(0, len(src_sentence) - seq_length + 1):
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end = start + seq_length
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phrase = src_sentence[start:end]
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if phrase in self.phrase_table:
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score = self.phrase_table.translations_for(phrase)[
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0
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].log_prob # pick best (first) translation
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# Warning: API of language_model is subject to change
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score += self.language_model.probability(phrase)
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scores[start][end] = score
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# check if a better score can be obtained by combining
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# two child subsequences
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for mid in range(start + 1, end):
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combined_score = scores[start][mid] + scores[mid][end]
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if combined_score > scores[start][end]:
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scores[start][end] = combined_score
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return scores
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def future_score(self, hypothesis, future_score_table, sentence_length):
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"""
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Determines the approximate score for translating the
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untranslated words in ``hypothesis``
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"""
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score = 0.0
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for span in hypothesis.untranslated_spans(sentence_length):
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score += future_score_table[span[0]][span[1]]
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return score
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def expansion_score(self, hypothesis, translation_option, src_phrase_span):
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"""
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Calculate the score of expanding ``hypothesis`` with
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``translation_option``
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:param hypothesis: Hypothesis being expanded
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:type hypothesis: _Hypothesis
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:param translation_option: Information about the proposed expansion
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:type translation_option: PhraseTableEntry
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:param src_phrase_span: Word position span of the source phrase
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:type src_phrase_span: tuple(int, int)
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"""
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score = hypothesis.raw_score
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score += translation_option.log_prob
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# The API of language_model is subject to change; it could accept
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# a string, a list of words, and/or some other type
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score += self.language_model.probability_change(
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hypothesis, translation_option.trg_phrase
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)
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score += self.distortion_score(hypothesis, src_phrase_span)
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score -= self.word_penalty * len(translation_option.trg_phrase)
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return score
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def distortion_score(self, hypothesis, next_src_phrase_span):
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if not hypothesis.src_phrase_span:
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return 0.0
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next_src_phrase_start = next_src_phrase_span[0]
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prev_src_phrase_end = hypothesis.src_phrase_span[1]
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distortion_distance = next_src_phrase_start - prev_src_phrase_end
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return abs(distortion_distance) * self.__log_distortion_factor
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@staticmethod
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def valid_phrases(all_phrases_from, hypothesis):
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"""
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Extract phrases from ``all_phrases_from`` that contains words
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that have not been translated by ``hypothesis``
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:param all_phrases_from: Phrases represented by their spans, in
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the same format as the return value of
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``find_all_src_phrases``
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:type all_phrases_from: list(list(int))
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:type hypothesis: _Hypothesis
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:return: A list of phrases, represented by their spans, that
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cover untranslated positions.
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:rtype: list(tuple(int, int))
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"""
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untranslated_spans = hypothesis.untranslated_spans(len(all_phrases_from))
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valid_phrases = []
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for available_span in untranslated_spans:
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start = available_span[0]
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available_end = available_span[1]
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while start < available_end:
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for phrase_end in all_phrases_from[start]:
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if phrase_end > available_end:
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# Subsequent elements in all_phrases_from[start]
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# will also be > available_end, since the
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# elements are in ascending order
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break
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valid_phrases.append((start, phrase_end))
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start += 1
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return valid_phrases
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class _Hypothesis(object):
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"""
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Partial solution to a translation.
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Records the word positions of the phrase being translated, its
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translation, raw score, and the cost of the untranslated parts of
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the sentence. When the next phrase is selected to build upon the
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partial solution, a new _Hypothesis object is created, with a back
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pointer to the previous hypothesis.
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To find out which words have been translated so far, look at the
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``src_phrase_span`` in the hypothesis chain. Similarly, the
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translation output can be found by traversing up the chain.
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"""
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def __init__(
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self,
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raw_score=0.0,
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src_phrase_span=(),
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trg_phrase=(),
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previous=None,
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future_score=0.0,
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):
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"""
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:param raw_score: Likelihood of hypothesis so far.
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Higher is better. Does not account for untranslated words.
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:type raw_score: float
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:param src_phrase_span: Span of word positions covered by the
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source phrase in this hypothesis expansion. For example,
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(2, 5) means that the phrase is from the second word up to,
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but not including the fifth word in the source sentence.
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:type src_phrase_span: tuple(int)
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:param trg_phrase: Translation of the source phrase in this
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hypothesis expansion
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:type trg_phrase: tuple(str)
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:param previous: Previous hypothesis before expansion to this one
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:type previous: _Hypothesis
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:param future_score: Approximate score for translating the
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remaining words not covered by this hypothesis. Higher means
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that the remaining words are easier to translate.
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:type future_score: float
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"""
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self.raw_score = raw_score
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self.src_phrase_span = src_phrase_span
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self.trg_phrase = trg_phrase
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self.previous = previous
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self.future_score = future_score
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def score(self):
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"""
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Overall score of hypothesis after accounting for local and
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global features
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"""
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return self.raw_score + self.future_score
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def untranslated_spans(self, sentence_length):
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"""
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Starting from each untranslated word, find the longest
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continuous span of untranslated positions
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:param sentence_length: Length of source sentence being
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translated by the hypothesis
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:type sentence_length: int
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:rtype: list(tuple(int, int))
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"""
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translated_positions = self.translated_positions()
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translated_positions.sort()
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translated_positions.append(sentence_length) # add sentinel position
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untranslated_spans = []
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start = 0
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# each untranslated span must end in one of the translated_positions
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for end in translated_positions:
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if start < end:
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untranslated_spans.append((start, end))
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start = end + 1
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return untranslated_spans
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def translated_positions(self):
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"""
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List of positions in the source sentence of words already
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translated. The list is not sorted.
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:rtype: list(int)
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"""
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translated_positions = []
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current_hypothesis = self
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while current_hypothesis.previous is not None:
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translated_span = current_hypothesis.src_phrase_span
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translated_positions.extend(range(translated_span[0], translated_span[1]))
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current_hypothesis = current_hypothesis.previous
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return translated_positions
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def total_translated_words(self):
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return len(self.translated_positions())
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def translation_so_far(self):
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translation = []
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self.__build_translation(self, translation)
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return translation
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def __build_translation(self, hypothesis, output):
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if hypothesis.previous is None:
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return
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self.__build_translation(hypothesis.previous, output)
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|
output.extend(hypothesis.trg_phrase)
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class _Stack(object):
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"""
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|
Collection of _Hypothesis objects
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"""
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def __init__(self, max_size=100, beam_threshold=0.0):
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"""
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:param beam_threshold: Hypotheses that score less than this
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|
factor of the best hypothesis are discarded from the stack.
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|
Value must be between 0.0 and 1.0.
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:type beam_threshold: float
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|
"""
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|
self.max_size = max_size
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self.items = []
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|
if beam_threshold == 0.0:
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|
self.__log_beam_threshold = float("-inf")
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|
else:
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|
self.__log_beam_threshold = log(beam_threshold)
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|
def push(self, hypothesis):
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|
"""
|
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|
Add ``hypothesis`` to the stack.
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|
Removes lowest scoring hypothesis if the stack is full.
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|
After insertion, hypotheses that score less than
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|
|
``beam_threshold`` times the score of the best hypothesis
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|
|
are removed.
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|
|
"""
|
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|
|
self.items.append(hypothesis)
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|
self.items.sort(key=lambda h: h.score(), reverse=True)
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|
|
while len(self.items) > self.max_size:
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|
self.items.pop()
|
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|
|
self.threshold_prune()
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|
|
|
|
|
def threshold_prune(self):
|
|
|
|
if not self.items:
|
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|
|
return
|
|
|
|
# log(score * beam_threshold) = log(score) + log(beam_threshold)
|
|
|
|
threshold = self.items[0].score() + self.__log_beam_threshold
|
|
|
|
for hypothesis in reversed(self.items):
|
|
|
|
if hypothesis.score() < threshold:
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|
|
self.items.pop()
|
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|
|
else:
|
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|
|
break
|
|
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|
|
|
def best(self):
|
|
|
|
"""
|
|
|
|
:return: Hypothesis with the highest score in the stack
|
|
|
|
:rtype: _Hypothesis
|
|
|
|
"""
|
|
|
|
if self.items:
|
|
|
|
return self.items[0]
|
|
|
|
return None
|
|
|
|
|
|
|
|
def __iter__(self):
|
|
|
|
return iter(self.items)
|
|
|
|
|
|
|
|
def __contains__(self, hypothesis):
|
|
|
|
return hypothesis in self.items
|
|
|
|
|
|
|
|
def __bool__(self):
|
|
|
|
return len(self.items) != 0
|
|
|
|
|
|
|
|
__nonzero__ = __bool__
|