import numpy as np from scipy.sparse import dok_matrix from tqdm import tqdm def from_text(path): """ Reas a labelled colletion of documents. File fomart <0 or 1>\t\n :param path: path to the labelled collection :return: a list of sentences, and a list of labels """ all_sentences, all_labels = [], [] for line in tqdm(open(path, 'rt').readlines(), f'loading {path}'): line = line.strip() if line: label, sentence = line.split('\t') sentence = sentence.strip() label = int(label) if sentence: all_sentences.append(sentence) all_labels.append(label) return all_sentences, all_labels def from_sparse(path): """ Reas a labelled colletion of real-valued instances expressed in sparse format File fomart <-1 or 0 or 1>[\s col(int):val(float)]\n :param path: path to the labelled collection :return: a csr_matrix containing the instances (rows), and a ndarray containing the labels """ def split_col_val(col_val): col, val = col_val.split(':') col, val = int(col) - 1, float(val) return col, val all_documents, all_labels = [], [] max_col = 0 for line in tqdm(open(path, 'rt').readlines(), f'loading {path}'): parts = line.strip().split() if parts: all_labels.append(int(parts[0])) cols, vals = zip(*[split_col_val(col_val) for col_val in parts[1:]]) cols, vals = np.asarray(cols), np.asarray(vals) max_col = max(max_col, cols.max()) all_documents.append((cols, vals)) n_docs = len(all_labels) X = dok_matrix((n_docs, max_col + 1), dtype=float) for i, (cols, vals) in tqdm(enumerate(all_documents), total=len(all_documents), desc=f'\-- filling matrix of shape {X.shape}'): X[i, cols] = vals X = X.tocsr() y = np.asarray(all_labels) + 1 return X, y def from_csv(path): """ Reas a csv file in which columns are separated by ','. File fomart