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create_symbolic.py
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create_symbolic.py
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import json
import argparse
def read_dataset(file_path):
SoftDataset = list()
HardDataset = list()
with open(file_path, 'r') as json_file:
json_list = list(json_file)
json_file.close()
for json_line in json_list:
data = json.loads(json_line)
context = data['context']
context_logical_form = data['context_logical_form']
questions = data['questions']
for question in questions:
SoftDataset.append({'context' : ' '.join([f"{prepare_soft_symbolic_form(sentence[:-1])}." for sentence in context]),
'question' : prepare_soft_symbolic_form(question['text']),
'label' : question['label']})
HardDataset.append({'context' : ' '.join([prepare_hard_symbolic_form(dl) for dl in context_logical_form]),
'question' : prepare_hard_symbolic_form(question['meta']['DL']),
'label' : question['label']})
return SoftDataset, HardDataset
def write_symbolic_datasets(soft_dataset, hard_dataset, soft_output_file, hard_output_file):
with open(soft_output_file, 'w') as file:
for data in soft_dataset:
json_line = json.dumps(data)
file.write(json_line + '\n')
with open(hard_output_file, 'w') as file:
for data in hard_dataset:
json_line = json.dumps(data)
file.write(json_line + '\n')
individual_names = {
'ioanna': 'a1',
'dimitrios': 'a2',
'eleni': 'a3',
'maria': 'a4',
'manolis': 'a5',
'angelos': 'a6',
'panos': 'a7',
'anne': 'a8',
'bob': 'a9',
'charlie': 'a10',
'dave': 'a11',
'erin': 'a12',
'fiona': 'a13',
'gary': 'a14',
'harry': 'a15'
}
concept_names = {
'ambitious': 'C1',
'confident': 'C2',
'creative': 'C3',
'determined': 'C4',
'enthusiastic': 'C5',
'innovative': 'C6',
'logical': 'C7',
'persevering': 'C8',
'red': 'C9',
'blue': 'C10',
'green': 'C11',
'kind': 'C12',
'nice': 'C13',
'big': 'C14',
'cold': 'C15',
'young': 'C16',
'round': 'C17',
'rough': 'C18',
'orange': 'C19',
'smart': 'C20',
'quiet': 'C21',
'furry': 'C22',
}
role_names = {
'admires': 'R1',
'admire': 'R1',
'consults': 'R2',
'consult': 'R2',
'guides': 'R3',
'guide': 'R3',
'instructs': 'R4',
'instruct': 'R4',
'leads': 'R5',
'lead': 'R5',
'mentors': 'R6',
'mentor': 'R6',
'supervises': 'R7',
'supervise': 'R7',
'supports': 'R8',
'support': 'R8',
'likes': 'R9',
'like': 'R9',
'loves': 'R10',
'love': 'R10',
'eats': 'R11',
'eat': 'R11',
'chases': 'R12',
'chase': 'R12',
}
# Merge all dictionaries
all_mappings = {**individual_names, **concept_names, **role_names}
def prepare_soft_symbolic_form(text):
# Replace words in the text
words = text.split()
replaced_text = ' '.join([all_mappings.get(word.lower(), word) for word in words])
replaced_text = ""
for word in words:
if word[-1] == ',' and (word[:-1] in all_mappings):
replaced_text += f"{all_mappings.get(word[:-1].lower(), word)},"
else:
replaced_text += all_mappings.get(word.lower(), word)
replaced_text += " "
return replaced_text[:-1]
def prepare_hard_symbolic_form(text):
text = text.replace('\u2203', 'exists')
text = text.replace('\u2200', 'only')
text = text.replace('\u00ac', 'not')
text = text.replace('+', '')
text = text.replace(' ', ' ')
text = text.replace('\u22a4', 'top')
text = text.replace('\u22a5', 'bottom')
text = text.replace('\u2293', 'and')
text = text.replace('\u2294', 'or')
text = text.replace('\u2291', 'is subsumed by')
# Replace words in the text
words = text.split()
replaced_text = ' '.join([all_mappings.get(word.lower(), word) for word in words])
return replaced_text
def main(args):
soft_dataset, hard_dataset = read_dataset(args.file_path)
write_symbolic_datasets(soft_dataset, hard_dataset, args.soft_output_file, args.hard_output_file)
print(f"SoftSymbolic dataset written to {args.soft_output_file}.")
print(f"HardSymbolic dataset written to {args.hard_output_file}.")
if __name__ == '__main__':
parser = argparse.ArgumentParser(description='Read a DELTA dataset and transform it into SoftSymbolic form.')
parser.add_argument('--file-path', type=str, help='path to DELTA dataset to transform.')
parser.add_argument('--soft-output-file', type=str, help='path to store the SoftSymbolic dataset.')
parser.add_argument('--hard-output-file', type=str, help='path to store the HardSymbolic dataset.')
args = parser.parse_args()
main(args)