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472 lines (410 loc) · 17.8 KB
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import ast
import itertools
import os
import pickle
import re
import requests
import spacy
from nltk.tokenize import sent_tokenize
from tqdm import tqdm
def get_node_id(amr):
lines = amr.split('\n')
node_alignments = dict()
surface_form_nodes = []
surface_form_indices = [-1, -1]
for line in lines:
if line.startswith('# ::tok '):
line = line.replace('# ::tok ', '')
tokens = line.split(' ')
if line.startswith('# ::node'):
splits = line.split()
if len(splits) < 4:
continue
elif len(splits) == 4:
node_id = splits[2]
node_label = splits[3]
surface_form = node_label
node_alignments[node_id] = [node_label, surface_form]
else:
span_splits = splits[4].split('-')
node_id = splits[2]
node_label = splits[3]
if int(span_splits[0]) >= surface_form_indices[0] \
and int(span_splits[1]) <= surface_form_indices[1]:
surface_form_nodes.append((node_id, node_label))
surface_form = \
' '.join(tokens[int(span_splits[0]):int(span_splits[1])])
node_alignments[node_id] = [node_label, surface_form]
if line.startswith('# ::short'):
splits = line.split('\t')
align_amr_node_id = ast.literal_eval(splits[1])
return node_alignments, align_amr_node_id
def get_verbnet_preds_from_obslist(obslist,
amr_server_ip='localhost',
amr_server_port=None,
mincount=0, verbose=False,
sem_parser_mode='both'):
rest_amr = AMRSemParser(amr_server_ip=amr_server_ip,
amr_server_port=amr_server_port)
all_preds = []
verbnet_facts_logs = {}
for obs_text in tqdm(obslist):
verbnet_facts, arity = \
rest_amr.obs2facts(obs_text,
verbose=verbose,
mode=sem_parser_mode,
force_single_arity=False)
verbnet_facts_logs[obs_text] = verbnet_facts
all_preds += list(verbnet_facts.keys())
rest_amr.save_cache()
all_preds_set = list(set(all_preds))
pred_count_dict = {k: all_preds.count(k) for k in all_preds_set}
all_preds = [k for k, v in pred_count_dict.items() if v > mincount]
if verbose:
print('Found {} verbnet preds'.format(len(all_preds)))
print('Predicates are: ', all_preds)
return all_preds, pred_count_dict, verbnet_facts_logs
def get_formatted_obs_text(infos):
obs = infos['description']
sent_part1 = infos['inventory'].split(':\n')[0]
sent_part2 = ', '.join(infos['inventory'].split(':\n')[1:])[2:]
sent = obs.replace('\n', ' ') + ' ' + sent_part1 + ' ' + sent_part2
return sent
def remove_nextline_space(in_text):
return re.sub(' +', ' ', in_text)
def detect_joined_noun_phrases(sent, join_token='of', self_assign=False):
words = sent.split()
token_dict = {}
for k, token in enumerate(words):
if k >= 1 and k < len(words) - 1 and token == join_token:
full_ent = ' '.join(words[k - 1:k + 2])
token_dict[words[k - 1]] = full_ent
token_dict[words[k + 1]] = full_ent
if self_assign:
token_dict[full_ent] = full_ent
return token_dict
def remove_article(s):
article_list = ['a', 'an', 'the']
ws = [x for x in s.split() if x not in article_list]
return ' '.join(ws)
class AMRSemParser:
def __init__(self,
amr_server_ip='localhost',
amr_server_port=None,
use_amr_cal_str=False,
cache_folder='./cache/'):
self.use_amr_cal_str = use_amr_cal_str
if amr_server_port == 0 or amr_server_port is None:
print('AMR is cache only mode')
self.endpoint = None
else:
self.endpoint = \
'http://%s:%d/verbnet_semantics' % \
(amr_server_ip, amr_server_port)
if not os.path.exists(cache_folder):
os.mkdir(cache_folder)
self.cache_file = cache_folder + 'amr_cache.pkl'
self.json_key = 'amr_parse'
self.nlp = spacy.load('en_core_web_sm')
self.cache = {}
self.load_cache()
def text2amr(self, text, force_server=False):
full_ret = {self.json_key: []}
for sent in sent_tokenize(text):
if not force_server and sent in self.cache:
ret = self.cache[sent]
full_ret[self.json_key].append(ret)
else:
if self.endpoint is None:
raise Exception('Need the AMR server for "' + sent + '"')
r = requests.get(self.endpoint,
params={'text': sent, 'use_coreference': 0})
ret = r.json()
self.cache[sent] = ret[self.json_key][0]
full_ret[self.json_key].append(ret[self.json_key][0])
return full_ret
def load_cache(self):
if os.path.exists(self.cache_file):
with open(self.cache_file, 'rb') as fp:
self.cache = pickle.load(fp)
print('Loaded cache from', self.cache_file, 'len:', len(self.cache))
else:
self.cache = {}
def save_cache(self):
with open(self.cache_file, 'wb') as fp:
pickle.dump(self.cache, fp)
print('Saved cache from', self.cache_file, 'len:', len(self.cache))
def propbank_facts(self, ret,
no_use_zero_arg=True,
force_single_arity=True,
verbose=True, cnt=None):
amr_text = ret[self.json_key][cnt]['amr']
if verbose:
print('Text:')
print(ret[self.json_key][cnt]['text'])
amr_cal_text = ret[self.json_key][cnt]['amr_cal']
node_alignments, align_amr_node_id = get_node_id(amr_text)
# filter None cases in the keys
align_amr_node_id = {k: v for k, v in align_amr_node_id.items()
if k is not None}
node_alignments_temp = {int(k): v[1].lower()
for k, v in node_alignments.items()
if k != 'None'}
# Disambiguate between different objects
values = list(node_alignments_temp.values())
ent_idx = {}
node_alignments = {}
for k, v in node_alignments_temp.items():
count_v = values.count(v)
if count_v > 1:
if v in ent_idx:
ent_idx[v] -= 1
else:
ent_idx[v] = count_v
node_alignments[k] = v + '_count_' + str(ent_idx[v])
else:
node_alignments[k] = v
node2surface_mapping = {v: node_alignments[k] for k, v in
align_amr_node_id.items()}
if verbose:
print('AMR Cal Text:')
for k, v in ret[self.json_key][cnt].items():
print(k, ':', v)
pred_values = {}
for item in amr_cal_text:
pred_name = item['predicate']
if '-' in pred_name and 'arg' in pred_name:
verbnet_frame = \
'-'.join(pred_name.split('.')[0].split('-')[:-1])
is_neg = item['is_negative']
if is_neg:
verbnet_frame = 'not_' + verbnet_frame
arg_name = node2surface_mapping[item['arguments'][1]]
arg_no = int(pred_name.split('.')[-1].split('arg')[-1])
if (arg_no == 0 and no_use_zero_arg) \
or verbnet_frame == 'have-mod':
continue
if verbnet_frame not in pred_values:
pred_values[verbnet_frame] = dict()
if item['arguments'][0] not in pred_values[verbnet_frame]:
pred_values[verbnet_frame][item['arguments'][0]] = dict()
if verbose:
if arg_no \
in pred_values[verbnet_frame][item['arguments'][0]]:
print('override (%s, %s, %d): %s -> %s' %
(verbnet_frame, item['arguments'][0], arg_no,
pred_values[verbnet_frame]
[item['arguments'][0]][arg_no], arg_name))
pred_values[verbnet_frame][item['arguments'][0]][arg_no] = \
arg_name
facts = {}
arity = {}
for verb, pred_value in pred_values.items():
for _, value in pred_value.items():
pred_values_list = \
[v[1] for v in sorted(value.items(), key=lambda i: i[0])]
if len(pred_values_list) == 1 or \
(len(pred_values_list) > 1 and not force_single_arity):
if verb not in facts:
facts[verb] = []
facts[verb].append(pred_values_list)
if verb in arity and arity[verb] != len(pred_values_list):
arity[verb] = max(arity[verb], len(pred_values_list))
else:
arity[verb] = len(pred_values_list)
return facts, arity
def verbnet_facts(self, ret,
no_use_zero_arg=True,
force_single_arity=True,
verbose=True, cnt=None):
facts = {}
res = ret[self.json_key][cnt]
amr_text = res['amr']
node_alignments, align_amr_node_id = get_node_id(amr_text)
# filter None cases in the keys
node_alignments_temp = {int(k): v[1].lower() for k, v in
node_alignments.items() if k != 'None'}
# Disambiguate between different objects
values = list(node_alignments_temp.values())
ent_idx = {}
node_alignments = {}
for k, v in node_alignments_temp.items():
count_v = values.count(v)
if count_v > 1:
if v in ent_idx:
ent_idx[v] -= 1
else:
ent_idx[v] = count_v
node_alignments[k] = v + '_count_' + str(ent_idx[v])
else:
node_alignments[k] = v
node2surface_mapping = {v: node_alignments[k] for k, v in
align_amr_node_id.items()}
if verbose:
print('##' * 30)
print('Grounded smt: ', res['grounded_stmt'])
print('sem_cal_str: ', res['sem_cal_str'])
for k, v in res['grounded_stmt'].items():
verb = k.split('.')[0]
key_desired = [k_in for k_in in v if verb in k_in]
if len(key_desired) > 0:
key_desired = key_desired[0]
else:
continue
for item in v[key_desired][0]:
pred = item['predicate']
try:
val_facts = tuple([node2surface_mapping[x] for x in
item['arguments'][1:]])
if pred in facts:
facts[pred].append(val_facts)
else:
facts[pred] = [val_facts]
except BaseException:
pass
arity = {}
for k, v in facts.items():
v_tuple = []
arity[k] = []
for item in v:
arity[k].append(len(item))
if len(item) > 1:
if force_single_arity:
v_tuple += item
else:
v_tuple.append(tuple(item))
else:
v_tuple.append(item[0])
arity[k] = list(set(arity[k]))
v = list(set(v_tuple))
facts[k] = v
return facts, arity
def get_all_possible_adj_nouns(self, phrase):
list_out = []
phrase_split = phrase.split()
for k in range(0, len(phrase_split)):
list_out.append(' '.join(phrase_split[k:]))
return list_out
def get_entity_mappings(self, text, filter_quantifiers, quantifer_words,
add_self_mapping=False,
add_joined_words=True):
doc = self.nlp(text)
list_nps = []
for nphrase in doc.noun_chunks:
list_nps.append(remove_article(nphrase.text.lower()))
list_nps = list(set(list_nps))
list_nps_dict = {}
list_root_noun = []
for x in list_nps:
if filter_quantifiers:
x = ' '.join([item for item in x.split()
if item not in quantifer_words])
list_root_noun.append(x.split()[-1])
ent_idx = {}
for v in list_nps:
root_noun = v.split()[-1]
count_v = list_root_noun.count(root_noun)
if count_v > 1:
if root_noun in ent_idx:
ent_idx[root_noun] -= 1
else:
ent_idx[root_noun] = count_v
key = root_noun + '_count_' + str(ent_idx[root_noun])
else:
key = root_noun
list_nps_dict[key] = v
if add_self_mapping:
list_nps_dict[v] = v
if add_joined_words:
joined_words_dict = detect_joined_noun_phrases(text)
list_nps_dict = {**list_nps_dict, **joined_words_dict}
return list_nps_dict
def obs2facts(self, text, no_use_zero_arg=True, force_single_arity=True,
mode='both',
verbose=False, filter_nps=True, filter_quantifiers=True):
text = remove_nextline_space(' and '.join(text.split('\n')))
ret = self.text2amr(text)
final_facts = {}
final_arity = {}
quantifer_words = ['some ', 'many ', 'lot ', 'few ']
full_list_nps_dict = self.get_entity_mappings(text, filter_quantifiers,
quantifer_words)
for cnt in range(len(ret[self.json_key])):
if mode == 'both':
propbank_facts, propbank_arity_facts = \
self.propbank_facts(ret,
no_use_zero_arg=no_use_zero_arg,
cnt=cnt,
force_single_arity=force_single_arity,
verbose=verbose)
verbnet_facts, verbnet_arity_facts = \
self.verbnet_facts(ret,
no_use_zero_arg=no_use_zero_arg,
cnt=cnt,
force_single_arity=force_single_arity,
verbose=verbose)
facts = {**verbnet_facts, **propbank_facts}
arity = {**verbnet_arity_facts, **propbank_arity_facts}
elif mode == 'verbnet':
verbnet_facts, verbnet_arity_facts = \
self.verbnet_facts(ret,
no_use_zero_arg=no_use_zero_arg,
cnt=cnt,
force_single_arity=force_single_arity,
verbose=verbose)
facts = verbnet_facts
arity = verbnet_arity_facts
elif mode == 'propbank':
propbank_facts, propbank_arity_facts =\
self.propbank_facts(
ret,
no_use_zero_arg=no_use_zero_arg,
cnt=cnt,
force_single_arity=force_single_arity,
verbose=verbose)
facts = propbank_facts
arity = propbank_arity_facts
elif mode == 'none':
facts = {}
arity = {}
else:
print('Invalid mode. exitting...')
return None
# Add handicap in NER based entity linking
text_sub = ret[self.json_key][cnt]['text']
if filter_nps:
list_nps_dict = self.get_entity_mappings(text_sub,
filter_quantifiers,
quantifer_words)
facts_filtered = {}
for kk, vv in facts.items():
for v in vv:
v_filtered = [list_nps_dict[item] for item in v
if item in list_nps_dict]
if len(v_filtered) == 0:
v_filtered = [full_list_nps_dict[item]
for item in v
if item in full_list_nps_dict]
if len(v_filtered) > 0:
if kk not in facts_filtered:
facts_filtered[kk] = list()
facts_filtered[kk].append(v_filtered)
else:
facts_filtered = facts
if verbose:
print('Text: ', text_sub)
print('AMR Sem Cal: \n',
ret[self.json_key][cnt]['amr_cal_str'])
print('Facts: \n', facts_filtered)
print('#' * 50)
final_facts.update(facts_filtered)
final_arity.update(arity)
for k, vs in final_facts.items():
final_facts[k] = list()
for v in vs:
words = list()
for word in v:
words.append(self.get_all_possible_adj_nouns(word))
for f in itertools.product(*words):
final_facts[k].append(list(f))
return final_facts, final_arity