def create_nltk_tree(sentence): tree_with_entities = Tree('S', []) raw_sentence = [token[0] for token in sentence] pos_tagged_sentence = ner_pipeline.part_of_speech_tagging(raw_sentence) current_sub_tree = None length = len(sentence) index = 0 while index < length: ne_tag = sentence[index][1] pos_tuple = pos_tagged_sentence[index] index += 1 if ne_tag[0] == 'O': if current_sub_tree: tree_with_entities.append(current_sub_tree) current_sub_tree = None tree_with_entities.extend([pos_tuple]) else: if current_sub_tree: current_sub_tree.append(pos_tuple) else: current_sub_tree = Tree(ne_tag[2:], [pos_tuple]) # print('RESULT') # pp(sentence) # pp(tree_with_entities) return tree_with_entities
def _muc_read_text(s, top_node): # The tokenizer sometimes splits within coref tags. def __fix_tokenization(sents): for index in range(len(sents)): next = 1 while sents[index].count('<COREF') != sents[index].count('</COREF>'): sents[index] += ' ' sents[index] += sents[index + next] sents[index + next] = '' next += 1 sents = filter(None, sents) return sents if s: tree = Tree(top_node, []) if _MUC6_PARA_RE.match(s): for para in _MUC6_PARA_RE.findall(s): if para and para[0] and para[0].strip(): tree.append(Tree('P', [])) for sent in _MUC6_SENT_RE.findall(para[0]): words = _MUC6_SENT_RE.match(sent[0]).group('sent').strip() # There are empty sentences <s></s> in the MUC6 corpus. if words: tree[-1].append(_muc_read_words(words, 'S')) elif _MUC7_PARA_RE.match(s): for para in _MUC7_PARA_SPLIT_RE.split(s): if para and para.strip(): tree.append(Tree('P', [])) for sent in __fix_tokenization(_SENT_TOKENIZER.tokenize(para)): tree[-1].append(_muc_read_words(sent, 'S')) return tree
def sentences_to_tree(paragraph, tree_with_entities=Tree('S', [])): skip_count = 0 for sentence in paragraph: for index, token in enumerate(sentence): if skip_count > 0: skip_count = skip_count - 1 continue if 'annotation' in token: annotation = token['annotation'] if annotation['label'] == 'NAE': logging.info( 'nltk_tree_converter.sentences_to_tree: skipping NAE label' ) continue length = annotation['length'] sub_tree = Tree(annotation['label'], [token['term']]) if length > 1: skip_count = length - 1 for next_index in range((index + 1), (index + length)): word = sentence[next_index]['term'] sub_tree.append(word) tree_with_entities.append(sub_tree) else: tree_with_entities.extend([token['term']]) return tree_with_entities
def _muc_read_text(s, top_node): # The tokenizer sometimes splits within coref tags. def __fix_tokenization(sents): for index in range(len(sents)): next = 1 while sents[index].count('<COREF') != sents[index].count( '</COREF>'): sents[index] += ' ' sents[index] += sents[index + next] sents[index + next] = '' next += 1 sents = filter(None, sents) return sents if s: tree = Tree(top_node, []) if _MUC6_PARA_RE.match(s): for para in _MUC6_PARA_RE.findall(s): if para and para[0] and para[0].strip(): tree.append(Tree('P', [])) for sent in _MUC6_SENT_RE.findall(para[0]): words = _MUC6_SENT_RE.match( sent[0]).group('sent').strip() # There are empty sentences <s></s> in the MUC6 corpus. if words: tree[-1].append(_muc_read_words(words, 'S')) elif _MUC7_PARA_RE.match(s): for para in _MUC7_PARA_SPLIT_RE.split(s): if para and para.strip(): tree.append(Tree('P', [])) for sent in __fix_tokenization( _SENT_TOKENIZER.tokenize(para)): tree[-1].append(_muc_read_words(sent, 'S')) return tree
def pas_to_tree(x): if isinstance(x, tuple): # has children node = Tree(x[0], []) for child in x[1]: childnode = pas_to_tree(child) node.append(childnode) else: node = Tree(x, []) return node
def add_top_to_tree(treebank_file): f = open(treebank_file, "r") root_set = set([]) for sentence in f: t = Tree.fromstring(sentence, remove_empty_top_bracketing=False) top_node = Tree("TOP", []) top_node.append(t) print NewTree.flat_print(top_node) f.close()
def _construct_node_from_actions(self, current_node: Tree, remaining_actions: List[List[str]], add_var_function: bool) -> List[List[str]]: """ Given a current node in the logical form tree, and a list of actions in an action sequence, this method fills in the children of the current node from the action sequence, then returns whatever actions are left. For example, we could get a node with type ``c``, and an action sequence that begins with ``c -> [<r,c>, r]``. This method will add two children to the input node, consuming actions from the action sequence for nodes of type ``<r,c>`` (and all of its children, recursively) and ``r`` (and all of its children, recursively). This method assumes that action sequences are produced `depth-first`, so all actions for the subtree under ``<r,c>`` appear before actions for the subtree under ``r``. If there are any actions in the action sequence after the ``<r,c>`` and ``r`` subtrees have terminated in leaf nodes, they will be returned. """ if not remaining_actions: logger.error("No actions left to construct current node: %s", current_node) raise ParsingError("Incomplete action sequence") left_side, right_side = remaining_actions.pop(0) if left_side != current_node.label(): logger.error("Current node: %s", current_node) logger.error("Next action: %s -> %s", left_side, right_side) logger.error("Remaining actions were: %s", remaining_actions) raise ParsingError("Current node does not match next action") if right_side[0] == '[': # This is a non-terminal expansion, with more than one child node. for child_type in right_side[1:-1].split(', '): if child_type.startswith("'lambda"): # We need to special-case the handling of lambda here, because it's handled a # bit weirdly in the action sequence. This is stripping off the single quotes # around something like `'lambda x'`. child_type = child_type[1:-1] child_node = Tree(child_type, []) current_node.append(child_node) # you add a child to an nltk.Tree with `append` if not self.is_terminal(child_type): remaining_actions = self._construct_node_from_actions(child_node, remaining_actions, add_var_function) elif self.is_terminal(right_side): # The current node is a pre-terminal; we'll add a single terminal child. We need to # check first for whether we need to add a (var _) around the terminal node, though. if add_var_function and right_side in self._lambda_variables: right_side = f"(var {right_side})" if add_var_function and right_side == 'var': raise ParsingError('add_var_function was true, but action sequence already had var') current_node.append(Tree(right_side, [])) # you add a child to an nltk.Tree with `append` else: # The only way this can happen is if you have a unary non-terminal production rule. # That is almost certainly not what you want with this kind of grammar, so we'll crash. # If you really do want this, open a PR with a valid use case. raise ParsingError(f"Found a unary production rule: {left_side} -> {right_side}. " "Are you sure you want a unary production rule in your grammar?") return remaining_actions
def _append(self, node: nltk.Tree, children): add_to_stack = [] for child in children: if nltk.grammar.is_nonterminal(child): new_node = nltk.Tree(child, []) node.append(new_node) add_to_stack.append(new_node) else: node.append(child) if add_to_stack: self.stack.extend(add_to_stack[::-1])
def reduce_nps(sentence): """ take any occurrences of NP trees that contain only one NP tree and reduce them """ res = Tree('S',[]) for child in sentence: #print child if isinstance(child, Tree): #print len(child) if len(child) == 1: res.append(child[0]) continue res.append(child) return res
def reduce_nps(sentence): """ take any occurrences of NP trees that contain only one NP tree and reduce them """ res = Tree('S', []) for child in sentence: #print child if isinstance(child, Tree): #print len(child) if len(child) == 1: res.append(child[0]) continue res.append(child) return res
def _construct_node_from_actions( self, current_node: Tree, remaining_actions: List[List[str]]) -> List[List[str]]: """ Given a current node in the logical form tree, and a list of actions in an action sequence, this method fills in the children of the current node from the action sequence, then returns whatever actions are left. For example, we could get a node with type ``c``, and an action sequence that begins with ``c -> [<r,c>, r]``. This method will add two children to the input node, consuming actions from the action sequence for nodes of type ``<r,c>`` (and all of its children, recursively) and ``r`` (and all of its children, recursively). This method assumes that action sequences are produced `depth-first`, so all actions for the subtree under ``<r,c>`` appear before actions for the subtree under ``r``. If there are any actions in the action sequence after the ``<r,c>`` and ``r`` subtrees have terminated in leaf nodes, they will be returned. """ if not remaining_actions: logger.error("No actions left to construct current node: %s", current_node) raise ParsingError("Incomplete action sequence") left_side, right_side = remaining_actions.pop(0) if left_side != current_node.label(): logger.error("Current node: %s", current_node) logger.error("Next action: %s -> %s", left_side, right_side) logger.error("Remaining actions were: %s", remaining_actions) raise ParsingError("Current node does not match next action") if right_side[0] == '[': # This is a non-terminal expansion, with more than one child node. for child_type in right_side[1:-1].split(', '): child_node = Tree(child_type, []) current_node.append( child_node ) # you add a child to an nltk.Tree with `append` # For now, we assume that all children in a list like this are non-terminals, so we # recurse on them. I'm pretty sure that will always be true for the way our # grammar induction works. We can revisit this later if we need to. remaining_actions = self._construct_node_from_actions( child_node, remaining_actions) else: # The current node is a pre-terminal; we'll add a single terminal child. By # construction, the right-hand side of our production rules are only ever terminal # productions or lists of non-terminals. current_node.append( Tree(right_side, [])) # you add a child to an nltk.Tree with `append` return remaining_actions
def _construct_node_from_actions(self, current_node: Tree, remaining_actions: List[List[str]]) -> List[List[str]]: """ Given a current node in the logical form tree, and a list of actions in an action sequence, this method fills in the children of the current node from the action sequence, then returns whatever actions are left. For example, we could get a node with type ``c``, and an action sequence that begins with ``c -> [<r,c>, r]``. This method will add two children to the input node, consuming actions from the action sequence for nodes of type ``<r,c>`` (and all of its children, recursively) and ``r`` (and all of its children, recursively). This method assumes that action sequences are produced `depth-first`, so all actions for the subtree under ``<r,c>`` appear before actions for the subtree under ``r``. If there are any actions in the action sequence after the ``<r,c>`` and ``r`` subtrees have terminated in leaf nodes, they will be returned. """ if not remaining_actions: logger.error("No actions left to construct current node: %s", current_node) raise ParsingError("Incomplete action sequence") left_side, right_side = remaining_actions.pop(0) if left_side != current_node.label(): logger.error("Current node: %s", current_node) logger.error("Next action: %s -> %s", left_side, right_side) logger.error("Remaining actions were: %s", remaining_actions) raise ParsingError("Current node does not match next action") if right_side[0] == '[': # This is a non-terminal expansion, with more than one child node. for child_type in right_side[1:-1].split(', '): child_node = Tree(child_type, []) current_node.append(child_node) # you add a child to an nltk.Tree with `append` # For now, we assume that all children in a list like this are non-terminals, so we # recurse on them. I'm pretty sure that will always be true for the way our # grammar induction works. We can revisit this later if we need to. remaining_actions = self._construct_node_from_actions(child_node, remaining_actions) else: # The current node is a pre-terminal; we'll add a single terminal child. By # construction, the right-hand side of our production rules are only ever terminal # productions or lists of non-terminals. current_node.append(Tree(right_side, [])) # you add a child to an nltk.Tree with `append` return remaining_actions
def _construct_node_from_actions( self, current_node: Tree, remaining_actions: List[List[str]], add_var_function: bool) -> List[List[str]]: """ Given a current node in the logical form tree, and a list of actions in an action sequence, this method fills in the children of the current node from the action sequence, then returns whatever actions are left. For example, we could get a node with type ``c``, and an action sequence that begins with ``c -> [<r,c>, r]``. This method will add two children to the input node, consuming actions from the action sequence for nodes of type ``<r,c>`` (and all of its children, recursively) and ``r`` (and all of its children, recursively). This method assumes that action sequences are produced `depth-first`, so all actions for the subtree under ``<r,c>`` appear before actions for the subtree under ``r``. If there are any actions in the action sequence after the ``<r,c>`` and ``r`` subtrees have terminated in leaf nodes, they will be returned. """ if not remaining_actions: logger.error("No actions left to construct current node: %s", current_node) raise ParsingError("Incomplete action sequence") left_side, right_side = remaining_actions.pop(0) if left_side != current_node.label(): mismatch = True multi_match_mapping = { str(key): [str(value) for value in values] for key, values in self.get_multi_match_mapping().items() } current_label = current_node.label() if current_label in multi_match_mapping and left_side in multi_match_mapping[ current_label]: mismatch = False if mismatch: logger.error("Current node: %s", current_node) logger.error("Next action: %s -> %s", left_side, right_side) logger.error("Remaining actions were: %s", remaining_actions) raise ParsingError("Current node does not match next action") if right_side[0] == '[': # This is a non-terminal expansion, with more than one child node. for child_type in right_side[1:-1].split(', '): if child_type.startswith("'lambda"): # We need to special-case the handling of lambda here, because it's handled a # bit weirdly in the action sequence. This is stripping off the single quotes # around something like `'lambda x'`. child_type = child_type[1:-1] child_node = Tree(child_type, []) current_node.append( child_node ) # you add a child to an nltk.Tree with `append` if not self.is_terminal(child_type): remaining_actions = self._construct_node_from_actions( child_node, remaining_actions, add_var_function) elif self.is_terminal(right_side): # The current node is a pre-terminal; we'll add a single terminal child. We need to # check first for whether we need to add a (var _) around the terminal node, though. if add_var_function and right_side in self._lambda_variables: right_side = f"(var {right_side})" if add_var_function and right_side == 'var': raise ParsingError( 'add_var_function was true, but action sequence already had var' ) current_node.append( Tree(right_side, [])) # you add a child to an nltk.Tree with `append` else: # The only way this can happen is if you have a unary non-terminal production rule. # That is almost certainly not what you want with this kind of grammar, so we'll crash. # If you really do want this, open a PR with a valid use case. raise ParsingError( f"Found a unary production rule: {left_side} -> {right_side}. " "Are you sure you want a unary production rule in your grammar?" ) return remaining_actions
def conlltags2tree(sentence, chunk_types=('NP','PP','VP'), root_label='S', strict=False): tree = Tree(root_label, []) for (word, postag, chunktag) in sentence: #print #print word, postag, chunktag #print if chunktag is None: if strict: raise ValueError("Bad conll tag sequence") else: # Treat as O tree.append((word,postag)) elif chunktag.startswith('B-'): if isinstance(word, Tree): tree.append( Tree(chunktag[2:], [word]) ) else: tree.append(Tree(chunktag[2:], [(word,postag)])) elif chunktag.startswith('I-'): if (len(tree)==0 or not isinstance(tree[-1], Tree) or tree[-1].node != chunktag[2:]): if strict: raise ValueError("Bad conll tag sequence") else: # Treat as B-* if isinstance(word, Tree): tree.append( Tree(chunktag[2:], [word]) ) else: tree.append(Tree(chunktag[2:], [(word,postag)])) else: if isinstance(word, Tree): tree[-1].append(word) else: tree[-1].append((word,postag)) elif chunktag == 'O': if isinstance(word, Tree): print "triggered" tree.append(word) else: tree.append((word,postag)) else: raise ValueError("Bad conll tag %r" % chunktag) return tree
def _maxent_calculation(self): TAGGER_PCL = settings.ABS_PATH("maxent_tagger.pcl") print "Calculating Precision/Recall using Custom trained MaxEnt, 80/20 dataset split," " ordered by id from DB." true_pos_total = 0 false_pos_total = 0 correct_total = 0 _end = "_end_" for line, is_valid in self.Model.judged_data.iteritems(): ngram, article = line.split(",") self.article_rel_dict[article][int(is_valid)].add(ngram) def make_trie(ngrams): """ Make trie out of set of ngrams """ root = {} for ngram in ngrams: current_dict = root for word in ngram.split(): current_dict = current_dict.setdefault(word, {}) current_dict = current_dict.setdefault(_end, _end) return root def in_trie(index, sentence_tagged, trie): result = [] while True: end = False if _end in trie: end = True word = sentence_tagged[index][0] norm_word = nlp.Stemmer.stem_wordnet(word) trie = trie.get(norm_word) if trie: result.append((sentence_tagged[index])) index += 1 else: if not end: result = [] break return result # generating training file train = [] test_sentences_tagged = defaultdict(list) print "Generating training/test data..." queryset = Article.objects.filter(cluster_id=self.cluster_id).order_by("id") queryset_len = len(queryset) # train data of the form [[((word1, POS1), tag1), ((word2, POS2), tag2), ... ], sentence2, ...] for article_index, article in enumerate(queryset): # skip train generation if tagger exists if os.path.exists(TAGGER_PCL) and article_index / queryset_len <= 0.8: continue correct_ngrams_set = self.article_rel_dict[unicode(article)][1] identified_correct = set() correct_ngrams = make_trie(correct_ngrams_set) for sentence in nltk.sent_tokenize(article.text): sentence_tagged = nltk.pos_tag(nltk.regexp_tokenize(sentence, nlp.Stemmer.TOKENIZE_REGEXP)) sent_tree = Tree("S", []) # identify ngrams in the sentence i = 0 while i < len(sentence_tagged): result = in_trie(i, sentence_tagged, correct_ngrams) if result: sent_tree.append(Tree("CON", result)) identified_correct.add(nlp.Stemmer.stem_wordnet(" ".join(zip(*result)[0]))) i += len(result) else: sent_tree.append(sentence_tagged[i]) i += 1 if article_index / queryset_len <= 0.8: train.append(sent_tree) else: test_sentences_tagged[unicode(article)].append(sentence_tagged) diff = correct_ngrams_set.difference(identified_correct) if diff: # TODO: list of correct n-gram that we did not find for some reason # ideally should be empty print diff print article print print "Finished data generation" if os.path.exists(TAGGER_PCL): print "Pickled tagger exists. Reading it..." tagger = pickle.load(open(TAGGER_PCL, "r")) else: print "Training tagger on 80% of data..." tagger = NEChunkParser(train) print "Finished training tagger" print "Pickling tagger for later use..." pickle.dump(tagger, open(TAGGER_PCL, "wb")) print "Calculating precision..." for article, sentences in test_sentences_tagged.iteritems(): print article results = [tagger.parse(sentence) for sentence in sentences] ne_set = set() for result in results: for tree in result.subtrees(): if tree.node != "S" and len(tree) > 1: ne_set.add(nlp.Stemmer.stem_wordnet(" ".join(zip(*tree)[0]).lower())) correct_objects = self.article_rel_dict[unicode(article)][1] incorrect_objects = self.article_rel_dict[unicode(article)][0] true_pos = [x for x in ne_set if x in correct_objects] false_pos = [x for x in ne_set if x in incorrect_objects] true_pos_total += len(true_pos) false_pos_total += len(false_pos) correct_total += len(correct_objects) unjudged_objects = [x for x in ne_set if x not in incorrect_objects and x not in correct_objects] print "WARN: Unjudged objects:", unjudged_objects precision = true_pos_total / (true_pos_total + false_pos_total) recall = true_pos_total / correct_total print "Precision: ", precision print "Recall", recall print "F1 measure", 2 * (precision * recall) / (precision + recall)
def conlltags2tree(sentence, chunk_types=('NP', 'PP', 'VP'), root_label='S', strict=False): tree = Tree(root_label, []) for (word, postag, chunktag) in sentence: #print #print word, postag, chunktag #print if chunktag is None: if strict: raise ValueError("Bad conll tag sequence") else: # Treat as O tree.append((word, postag)) elif chunktag.startswith('B-'): if isinstance(word, Tree): tree.append(Tree(chunktag[2:], [word])) else: tree.append(Tree(chunktag[2:], [(word, postag)])) elif chunktag.startswith('I-'): if (len(tree) == 0 or not isinstance(tree[-1], Tree) or tree[-1].node != chunktag[2:]): if strict: raise ValueError("Bad conll tag sequence") else: # Treat as B-* if isinstance(word, Tree): tree.append(Tree(chunktag[2:], [word])) else: tree.append(Tree(chunktag[2:], [(word, postag)])) else: if isinstance(word, Tree): tree[-1].append(word) else: tree[-1].append((word, postag)) elif chunktag == 'O': if isinstance(word, Tree): print "triggered" tree.append(word) else: tree.append((word, postag)) else: raise ValueError("Bad conll tag %r" % chunktag) return tree