import re import string import numpy as np import torch from nltk.corpus import stopwords stop_words = set(stopwords.words('english')) def data_preprocessing(text: str) -> str: """preprocessing string: lowercase, removing html-tags, punctuation and stopwords Args: text (str): input string for preprocessing Returns: str: preprocessed string """ text = text.lower() text = re.sub('<.*?>', '', text) # Remove html tags text = re.sub(r'@\w+', " ", text) # Remove usernames text = re.sub(r'#\w+', " ", text) #Remove hash tags text = re.sub(r'\d+', " ", text) #Remove digits text = ''.join([c for c in text if c not in string.punctuation])# Remove punctuation text = [word for word in text.split() if word not in stop_words] text = ' '.join(text) return text def get_words_by_freq(sorted_words: list, n: int = 10) -> list: return list(filter(lambda x: x[1] > n, sorted_words)) def padding(review_int: list, seq_len: int) -> np.array: """Make left-sided padding for input list of tokens Args: review_int (list): input list of tokens seq_len (int): max length of sequence, it len(review_int[i]) > seq_len it will be trimmed, else it will be padded by zeros Returns: np.array: padded sequences """ features = np.zeros((len(review_int), seq_len), dtype = int) for i, review in enumerate(review_int): if len(review) <= seq_len: zeros = list(np.zeros(seq_len - len(review))) new = zeros + review else: new = review[: seq_len] features[i, :] = np.array(new) return features def preprocess_single_string( input_string: str, seq_len: int, vocab_to_int: dict, ) -> torch.tensor: """Function for all preprocessing steps on a single string Args: input_string (str): input single string for preprocessing seq_len (int): max length of sequence, it len(review_int[i]) > seq_len it will be trimmed, else it will be padded by zeros vocab_to_int (dict, optional): word corpus {'word' : int index}. Defaults to vocab_to_int. Returns: list: preprocessed string """ preprocessed_string = data_preprocessing(input_string) result_list = [] for word in preprocessed_string.split(): try: result_list.append(vocab_to_int[word]) except KeyError as e: print(f'{e}: not in dictionary!') result_padded = padding([result_list], seq_len)[0] return torch.tensor(result_padded)