from argparse import ArgumentParser from typing import List import regex as re from fun_text_processing.text_normalization.data_loader_utils import ( EOS_TYPE, Instance, load_files, training_data_to_sentences, ) """ This file is for evaluation purposes. filter_loaded_data() cleans data (list of instances) for inverse text normalization. Filters and cleaners can be specified for each semiotic class individually. For example, normalized text should only include characters and whitespace characters but no punctuation. Cardinal unnormalized instances should contain at least one integer and all other characters are removed. """ class Filter: """ Filter class Args: class_type: semiotic class used in dataset process_func: function to transform text filter_func: function to filter text """ def __init__(self, class_type: str, process_func: object, filter_func: object): self.class_type = class_type self.process_func = process_func self.filter_func = filter_func def filter(self, instance: Instance) -> bool: """ filter function Args: filters given instance with filter function Returns: True if given instance fulfills criteria or does not belong to class type """ if instance.token_type != self.class_type: return True return self.filter_func(instance) def process(self, instance: Instance) -> Instance: """ process function Args: processes given instance with process function Returns: processed instance if instance belongs to expected class type or original instance """ if instance.token_type != self.class_type: return instance return self.process_func(instance) def filter_cardinal_1(instance: Instance) -> bool: ok = re.search(r"[0-9]", instance.un_normalized) return ok def process_cardinal_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized un_normalized = re.sub(r"[^0-9]", "", un_normalized) normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_ordinal_1(instance: Instance) -> bool: ok = re.search(r"(st|nd|rd|th)\s*$", instance.un_normalized) return ok def process_ordinal_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized un_normalized = re.sub(r"[,\s]", "", un_normalized) normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_decimal_1(instance: Instance) -> bool: ok = re.search(r"[0-9]", instance.un_normalized) return ok def process_decimal_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized un_normalized = re.sub(r",", "", un_normalized) normalized = instance.normalized normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_measure_1(instance: Instance) -> bool: ok = True return ok def process_measure_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized un_normalized = re.sub(r",", "", un_normalized) un_normalized = re.sub(r"m2", "m²", un_normalized) un_normalized = re.sub(r"(\d)([^\d.\s])", r"\1 \2", un_normalized) normalized = re.sub(r"[^a-z\s]", "", normalized) normalized = re.sub(r"per ([a-z\s]*)s$", r"per \1", normalized) normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_money_1(instance: Instance) -> bool: ok = re.search(r"[0-9]", instance.un_normalized) return ok def process_money_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized un_normalized = re.sub(r",", "", un_normalized) un_normalized = re.sub(r"a\$", r"$", un_normalized) un_normalized = re.sub(r"us\$", r"$", un_normalized) un_normalized = re.sub(r"(\d)m\s*$", r"\1 million", un_normalized) un_normalized = re.sub(r"(\d)bn?\s*$", r"\1 billion", un_normalized) normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_time_1(instance: Instance) -> bool: ok = re.search(r"[0-9]", instance.un_normalized) return ok def process_time_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized un_normalized = re.sub(r": ", ":", un_normalized) un_normalized = re.sub(r"(\d)\s?a\s?m\s?", r"\1 a.m.", un_normalized) un_normalized = re.sub(r"(\d)\s?p\s?m\s?", r"\1 p.m.", un_normalized) normalized = instance.normalized normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_plain_1(instance: Instance) -> bool: ok = True return ok def process_plain_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_punct_1(instance: Instance) -> bool: ok = True return ok def process_punct_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_date_1(instance: Instance) -> bool: ok = True return ok def process_date_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized un_normalized = re.sub(r",", "", un_normalized) normalized = instance.normalized normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_letters_1(instance: Instance) -> bool: ok = True return ok def process_letters_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_verbatim_1(instance: Instance) -> bool: ok = True return ok def process_verbatim_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_digit_1(instance: Instance) -> bool: ok = re.search(r"[0-9]", instance.un_normalized) return ok def process_digit_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_telephone_1(instance: Instance) -> bool: ok = re.search(r"[0-9]", instance.un_normalized) return ok def process_telephone_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_electronic_1(instance: Instance) -> bool: ok = re.search(r"[0-9]", instance.un_normalized) return ok def process_electronic_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_fraction_1(instance: Instance) -> bool: ok = re.search(r"[0-9]", instance.un_normalized) return ok def process_fraction_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) def filter_address_1(instance: Instance) -> bool: ok = True return ok def process_address_1(instance: Instance) -> Instance: un_normalized = instance.un_normalized normalized = instance.normalized normalized = re.sub(r"[^a-z ]", "", normalized) return Instance( token_type=instance.token_type, un_normalized=un_normalized, normalized=normalized ) filters = [] filters.append( Filter(class_type="CARDINAL", process_func=process_cardinal_1, filter_func=filter_cardinal_1) ) filters.append( Filter(class_type="ORDINAL", process_func=process_ordinal_1, filter_func=filter_ordinal_1) ) filters.append( Filter(class_type="DECIMAL", process_func=process_decimal_1, filter_func=filter_decimal_1) ) filters.append( Filter(class_type="MEASURE", process_func=process_measure_1, filter_func=filter_measure_1) ) filters.append(Filter(class_type="MONEY", process_func=process_money_1, filter_func=filter_money_1)) filters.append(Filter(class_type="TIME", process_func=process_time_1, filter_func=filter_time_1)) filters.append(Filter(class_type="DATE", process_func=process_date_1, filter_func=filter_date_1)) filters.append(Filter(class_type="PLAIN", process_func=process_plain_1, filter_func=filter_plain_1)) filters.append(Filter(class_type="PUNCT", process_func=process_punct_1, filter_func=filter_punct_1)) filters.append( Filter(class_type="LETTERS", process_func=process_letters_1, filter_func=filter_letters_1) ) filters.append( Filter(class_type="VERBATIM", process_func=process_verbatim_1, filter_func=filter_verbatim_1) ) filters.append(Filter(class_type="DIGIT", process_func=process_digit_1, filter_func=filter_digit_1)) filters.append( Filter(class_type="TELEPHONE", process_func=process_telephone_1, filter_func=filter_telephone_1) ) filters.append( Filter( class_type="ELECTRONIC", process_func=process_electronic_1, filter_func=filter_electronic_1 ) ) filters.append( Filter(class_type="FRACTION", process_func=process_fraction_1, filter_func=filter_fraction_1) ) filters.append( Filter(class_type="ADDRESS", process_func=process_address_1, filter_func=filter_address_1) ) filters.append(Filter(class_type=EOS_TYPE, process_func=lambda x: x, filter_func=lambda x: True)) def filter_loaded_data(data: List[Instance], verbose: bool = False) -> List[Instance]: """ Filters list of instances Args: data: list of instances Returns: filtered and transformed list of instances """ updates_instances = [] for instance in data: updated_instance = False for fil in filters: if fil.class_type == instance.token_type and fil.filter(instance): instance = fil.process(instance) updated_instance = True if updated_instance: if verbose: print(instance) updates_instances.append(instance) return updates_instances def parse_args(): parser = ArgumentParser() parser.add_argument( "--input", help="input file path", type=str, default="./en_with_types/output-00001-of-00100" ) parser.add_argument("--verbose", help="print filtered instances", action="store_true") return parser.parse_args() if __name__ == "__main__": args = parse_args() file_path = args.input print("Loading training data: " + file_path) instance_list = load_files([file_path]) # List of instances filtered_instance_list = filter_loaded_data(instance_list, args.verbose) training_data_to_sentences(filtered_instance_list)