# coding=utf-8 # Copyright 2020 The TensorFlow Datasets Authors and the HuggingFace Datasets Authors. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # Lint as: python3 """Rotten tomatoes movie reviews dataset.""" import datasets from datasets.tasks import TextClassification _DESCRIPTION = """\ Movie Review Dataset. This is a dataset of containing 5,331 positive and 5,331 negative processed sentences from Rotten Tomatoes movie reviews. This data was first used in Bo Pang and Lillian Lee, ``Seeing stars: Exploiting class relationships for sentiment categorization with respect to rating scales.'', Proceedings of the ACL, 2005. """ _CITATION = """\ @InProceedings{Pang+Lee:05a, author = {Bo Pang and Lillian Lee}, title = {Seeing stars: Exploiting class relationships for sentiment categorization with respect to rating scales}, booktitle = {Proceedings of the ACL}, year = 2005 } """ _DOWNLOAD_URL = "https://storage.googleapis.com/seldon-datasets/sentence_polarity_v1/rt-polaritydata.tar.gz" class RottenTomatoesMovieReview(datasets.GeneratorBasedBuilder): """Cornell Rotten Tomatoes movie reviews dataset.""" VERSION = datasets.Version("1.0.0") def _info(self): return datasets.DatasetInfo( description=_DESCRIPTION, features=datasets.Features( {"text": datasets.Value("string"), "label": datasets.features.ClassLabel(names=["neg", "pos"])} ), supervised_keys=[""], homepage="http://www.cs.cornell.edu/people/pabo/movie-review-data/", citation=_CITATION, task_templates=[TextClassification(text_column="text", label_column="label")], ) def _split_generators(self, dl_manager): """Downloads Rotten Tomatoes sentences.""" archive = dl_manager.download(_DOWNLOAD_URL) return [ datasets.SplitGenerator( name=datasets.Split.TRAIN, gen_kwargs={"split_key": "train", "files": dl_manager.iter_archive(archive)}, ), datasets.SplitGenerator( name=datasets.Split.VALIDATION, gen_kwargs={"split_key": "validation", "files": dl_manager.iter_archive(archive)}, ), datasets.SplitGenerator( name=datasets.Split.TEST, gen_kwargs={"split_key": "test", "files": dl_manager.iter_archive(archive)}, ), ] def _get_examples_from_split(self, split_key, files): """Reads Rotten Tomatoes sentences and splits into 80% train, 10% validation, and 10% test, as is the practice set out in Jinfeng Li, ``TEXTBUGGER: Generating Adversarial Text Against Real-world Applications.'' """ data_dir = "rt-polaritydata/" pos_samples, neg_samples = None, None for path, f in files: if path == data_dir + "rt-polarity.pos": pos_samples = [line.decode("latin-1").strip() for line in f] elif path == data_dir + "rt-polarity.neg": neg_samples = [line.decode("latin-1").strip() for line in f] if pos_samples is not None and neg_samples is not None: break # 80/10/10 split i1 = int(len(pos_samples) * 0.8 + 0.5) i2 = int(len(pos_samples) * 0.9 + 0.5) train_samples = pos_samples[:i1] + neg_samples[:i1] train_labels = (["pos"] * i1) + (["neg"] * i1) validation_samples = pos_samples[i1:i2] + neg_samples[i1:i2] validation_labels = (["pos"] * (i2 - i1)) + (["neg"] * (i2 - i1)) test_samples = pos_samples[i2:] + neg_samples[i2:] test_labels = (["pos"] * (len(pos_samples) - i2)) + (["neg"] * (len(pos_samples) - i2)) if split_key == "train": return (train_samples, train_labels) if split_key == "validation": return (validation_samples, validation_labels) if split_key == "test": return (test_samples, test_labels) else: raise ValueError(f"Invalid split key {split_key}") def _generate_examples(self, split_key, files): """Yields examples for a given split of MR.""" split_text, split_labels = self._get_examples_from_split(split_key, files) for text, label in zip(split_text, split_labels): data_key = split_key + "_" + text feature_dict = {"text": text, "label": label} yield data_key, feature_dict