# 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 """The CC-News dataset is based on Common Crawl News Dataset by Sebastian Nagel""" import json import os from fnmatch import fnmatch import io import textwrap import datasets logger = datasets.logging.get_logger(__name__) ###################### #### DESCRIPTIONS #### ###################### _DESCRIPTION = """\ """ ################### #### CITATIONS #### ################### _CITATION = """\ """ ####################### #### DOWNLOAD URLs #### ####################### _DOWNLOAD_URL = { "ax": { "test": [os.path.join("data", "ax", "test.tar.gz")], }, "cola": { "train": [os.path.join("data", "cola", "train.tar.gz")], "test": [os.path.join("data", "cola", "test.tar.gz")], "validation": [os.path.join("data", "cola", "validation.tar.gz")], }, "mnli": { "train": [os.path.join("data", "mnli", "train.tar.gz")], "test_matched": [os.path.join("data", "mnli", "test_matched.tar.gz")], "validation_matched": [ os.path.join("data", "mnli", "validation_matched.tar.gz") ], "test_mismatched": [os.path.join("data", "mnli", "test_mismatched.tar.gz")], "validation_mismatched": [ os.path.join("data", "mnli", "validation_mismatched.tar.gz") ], }, "mrpc": { "train": [os.path.join("data", "mrpc", "train.tar.gz")], "test": [os.path.join("data", "mrpc", "test.tar.gz")], "validation": [os.path.join("data", "mrpc", "validation.tar.gz")], }, "qnli": { "train": [os.path.join("data", "qnli", "train.tar.gz")], "test": [os.path.join("data", "qnli", "test.tar.gz")], "validation": [os.path.join("data", "qnli", "validation.tar.gz")], }, "qqp": { "train": [os.path.join("data", "qqp", "train.tar.gz")], "test": [os.path.join("data", "qqp", "test.tar.gz")], "validation": [os.path.join("data", "qqp", "validation.tar.gz")], }, "rte": { "train": [os.path.join("data", "rte", "train.tar.gz")], "test": [os.path.join("data", "rte", "test.tar.gz")], "validation": [os.path.join("data", "rte", "validation.tar.gz")], }, "sst2": { "train": [os.path.join("data", "sst2", "train.tar.gz")], "test": [os.path.join("data", "sst2", "test.tar.gz")], "validation": [os.path.join("data", "sst2", "validation.tar.gz")], }, "stsb": { "train": [os.path.join("data", "stsb", "train.tar.gz")], "test": [os.path.join("data", "stsb", "test.tar.gz")], "validation": [os.path.join("data", "stsb", "validation.tar.gz")], }, "wnli": { "train": [os.path.join("data", "wnli", "train.tar.gz")], "test": [os.path.join("data", "wnli", "test.tar.gz")], "validation": [os.path.join("data", "wnli", "validation.tar.gz")], }, "vnrte": { "validation": [os.path.join("data", "vnrte", "validation.tar.gz")], }, "vsfc": { "train": [os.path.join("data", "vsfc", "train.tar.gz")], "test": [os.path.join("data", "vsfc", "test.tar.gz")], "validation": [os.path.join("data", "vsfc", "dev.tar.gz")], }, "vsmec": { "train": [os.path.join("data", "vsmec", "train.tar.gz")], "test": [os.path.join("data", "vsmec", "test.tar.gz")], "validation": [os.path.join("data", "vsmec", "valid.tar.gz")], }, "vtoc": { "train": [os.path.join("data", "vtoc", "train.tar.gz")], "validation": [os.path.join("data", "vtoc", "validation.tar.gz")], }, } SUBSET_KWARGS = { "ax": { "name": "ax", "text_features": ["premise", "hypothesis"], "label_classes": ["entailment", "neutral", "contradiction"], "label_column": "", "citation": "", "description": textwrap.dedent( """\ A manually-curated evaluation dataset for fine-grained analysis of system performance on a broad range of linguistic phenomena. This dataset evaluates sentence understanding through Natural Language Inference (NLI) problems. Use a model trained on MulitNLI to produce predictions for this dataset.""" ), }, "cola": { "name": "cola", "text_features": ["sentence"], "label_classes": ["unacceptable", "acceptable"], "label_column": "is_acceptable", "citation": textwrap.dedent( """\ @article{warstadt2018neural, title={Neural Network Acceptability Judgments}, author={Warstadt, Alex and Singh, Amanpreet and Bowman, Samuel R}, journal={arXiv preprint arXiv:1805.12471}, year={2018} }""" ), "description": textwrap.dedent( """\ The Corpus of Linguistic Acceptability consists of English acceptability judgments drawn from books and journal articles on linguistic theory. Each example is a sequence of words annotated with whether it is a grammatical English sentence.""" ), }, "mnli": { "name": "mnli", "text_features": ["premise", "hypothesis"], "label_classes": ["entailment", "neutral", "contradiction"], "label_column": "gold_label", "citation": textwrap.dedent( """\ @InProceedings{N18-1101, author = "Williams, Adina and Nangia, Nikita and Bowman, Samuel", title = "A Broad-Coverage Challenge Corpus for Sentence Understanding through Inference", booktitle = "Proceedings of the 2018 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies, Volume 1 (Long Papers)", year = "2018", publisher = "Association for Computational Linguistics", pages = "1112--1122", location = "New Orleans, Louisiana", url = "http://aclweb.org/anthology/N18-1101" } @article{bowman2015large, title={A large annotated corpus for learning natural language inference}, author={Bowman, Samuel R and Angeli, Gabor and Potts, Christopher and Manning, Christopher D}, journal={arXiv preprint arXiv:1508.05326}, year={2015} }""" ), "description": textwrap.dedent( """\ The Multi-Genre Natural Language Inference Corpus is a crowdsourced collection of sentence pairs with textual entailment annotations. Given a premise sentence and a hypothesis sentence, the task is to predict whether the premise entails the hypothesis (entailment), contradicts the hypothesis (contradiction), or neither (neutral). The premise sentences are gathered from ten different sources, including transcribed speech, fiction, and government reports. We use the standard test set, for which we obtained private labels from the authors, and evaluate on both the matched (in-domain) and mismatched (cross-domain) section. We also use and recommend the SNLI corpus as 550k examples of auxiliary training data.""" ), }, "mrpc": { "name": "mrpc", "text_features": ["sentence1", "sentence2"], "label_classes": ["not_equivalent", "equivalent"], "label_column": "Quality", "citation": textwrap.dedent( """\ @inproceedings{dolan2005automatically, title={Automatically constructing a corpus of sentential paraphrases}, author={Dolan, William B and Brockett, Chris}, booktitle={Proceedings of the Third International Workshop on Paraphrasing (IWP2005)}, year={2005} }""" ), "description": textwrap.dedent( """\ The Microsoft Research Paraphrase Corpus (Dolan & Brockett, 2005) is a corpus of sentence pairs automatically extracted from online news sources, with human annotations for whether the sentences in the pair are semantically equivalent.""" ), # pylint: disable=line-too-long }, "qnli": { "name": "qnli", "text_features": ["question", "sentence"], "label_classes": ["entailment", "not_entailment"], "label_column": "label", "citation": textwrap.dedent( """\ @article{rajpurkar2016squad, title={Squad: 100,000+ questions for machine comprehension of text}, author={Rajpurkar, Pranav and Zhang, Jian and Lopyrev, Konstantin and Liang, Percy}, journal={arXiv preprint arXiv:1606.05250}, year={2016} }""" ), "description": textwrap.dedent( """\ The Stanford Question Answering Dataset is a question-answering dataset consisting of question-paragraph pairs, where one of the sentences in the paragraph (drawn from Wikipedia) contains the answer to the corresponding question (written by an annotator). We convert the task into sentence pair classification by forming a pair between each question and each sentence in the corresponding context, and filtering out pairs with low lexical overlap between the question and the context sentence. The task is to determine whether the context sentence contains the answer to the question. This modified version of the original task removes the requirement that the model select the exact answer, but also removes the simplifying assumptions that the answer is always present in the input and that lexical overlap is a reliable cue.""" ), # pylint: disable=line-too-long }, "qqp": { "name": "qqp", "text_features": ["question1", "question2"], "label_classes": ["not_duplicate", "duplicate"], "label_column": "is_duplicate", "citation": textwrap.dedent( """\ @online{WinNT, author = {Iyer, Shankar and Dandekar, Nikhil and Csernai, Kornel}, title = {First Quora Dataset Release: Question Pairs}, year = {2017}, url = {https://data.quora.com/First-Quora-Dataset-Release-Question-Pairs}, urldate = {2019-04-03} }""" ), "description": textwrap.dedent( """\ The Quora Question Pairs2 dataset is a collection of question pairs from the community question-answering website Quora. The task is to determine whether a pair of questions are semantically equivalent.""" ), }, "rte": { "name": "rte", "text_features": ["sentence1", "sentence2"], "label_classes": ["entailment", "not_entailment"], "label_column": "label", "citation": textwrap.dedent( """\ @inproceedings{dagan2005pascal, title={The PASCAL recognising textual entailment challenge}, author={Dagan, Ido and Glickman, Oren and Magnini, Bernardo}, booktitle={Machine Learning Challenges Workshop}, pages={177--190}, year={2005}, organization={Springer} } @inproceedings{bar2006second, title={The second pascal recognising textual entailment challenge}, author={Bar-Haim, Roy and Dagan, Ido and Dolan, Bill and Ferro, Lisa and Giampiccolo, Danilo and Magnini, Bernardo and Szpektor, Idan}, booktitle={Proceedings of the second PASCAL challenges workshop on recognising textual entailment}, volume={6}, number={1}, pages={6--4}, year={2006}, organization={Venice} } @inproceedings{giampiccolo2007third, title={The third pascal recognizing textual entailment challenge}, author={Giampiccolo, Danilo and Magnini, Bernardo and Dagan, Ido and Dolan, Bill}, booktitle={Proceedings of the ACL-PASCAL workshop on textual entailment and paraphrasing}, pages={1--9}, year={2007}, organization={Association for Computational Linguistics} } @inproceedings{bentivogli2009fifth, title={The Fifth PASCAL Recognizing Textual Entailment Challenge.}, author={Bentivogli, Luisa and Clark, Peter and Dagan, Ido and Giampiccolo, Danilo}, booktitle={TAC}, year={2009} }""" ), "description": textwrap.dedent( """\ The Recognizing Textual Entailment (RTE) datasets come from a series of annual textual entailment challenges. We combine the data from RTE1 (Dagan et al., 2006), RTE2 (Bar Haim et al., 2006), RTE3 (Giampiccolo et al., 2007), and RTE5 (Bentivogli et al., 2009).4 Examples are constructed based on news and Wikipedia text. We convert all datasets to a two-class split, where for three-class datasets we collapse neutral and contradiction into not entailment, for consistency.""" ), # pylint: disable=line-too-long }, "sst2": { "name": "sst2", "text_features": ["sentence"], "label_classes": ["negative", "positive"], "label_column": "label", "citation": textwrap.dedent( """\ @inproceedings{socher2013recursive, title={Recursive deep models for semantic compositionality over a sentiment treebank}, author={Socher, Richard and Perelygin, Alex and Wu, Jean and Chuang, Jason and Manning, Christopher D and Ng, Andrew and Potts, Christopher}, booktitle={Proceedings of the 2013 conference on empirical methods in natural language processing}, pages={1631--1642}, year={2013} }""" ), "description": textwrap.dedent( """\ The Stanford Sentiment Treebank consists of sentences from movie reviews and human annotations of their sentiment. The task is to predict the sentiment of a given sentence. We use the two-way (positive/negative) class split, and use only sentence-level labels.""" ), }, "stsb": { "name": "stsb", "text_features": ["sentence1", "sentence2"], "label_classes": None, "label_column": "score", "citation": textwrap.dedent( """\ @inproceedings{cer2017semeval, title={Semeval-2017 task 1: Semantic textual similarity-multilingual and cross-lingual focused evaluation}, author={Cer, Daniel and Diab, Mona and Agirre, Eneko and Lopez-Gazpio, Inigo and Specia, Lucia}, booktitle={Proceedings of the 11th International Workshop on Semantic Evaluation (SemEval-2017)}, pages={1--14}, year={2017} }""" ), "description": textwrap.dedent( """\ The Semantic Textual Similarity Benchmark (Cer et al., 2017) is a collection of sentence pairs drawn from news headlines, video and image captions, and natural language inference data. Each pair is human-annotated with a similarity score from 1 to 5. We convert this to a binary classification task by labeling examples with a similarity score >= 4.5 as entailment and < 4.5 as not entailment.""" ), "process_label": lambda x: float(x), }, "wnli": { "name": "wnli", "text_features": ["sentence1", "sentence2"], "label_classes": ["not_entailment", "entailment"], "label_column": "label", "citation": textwrap.dedent( """\ @inproceedings{levesque2012winograd, title={The winograd schema challenge}, author={Levesque, Hector and Davis, Ernest and Morgenstern, Leora}, booktitle={Thirteenth International Conference on the Principles of Knowledge Representation and Reasoning}, year={2012} }""" ), "description": textwrap.dedent( """\ The Winograd Schema Challenge (Levesque et al., 2011) is a reading comprehension task in which a system must read a sentence with a pronoun and select the referent of that pronoun from a list of choices. The examples are manually constructed to foil simple statistical methods: Each one is contingent on contextual information provided by a single word or phrase in the sentence. To convert the problem into sentence pair classification, we construct sentence pairs by replacing the ambiguous pronoun with each possible referent. The task is to predict if the sentence with the pronoun substituted is entailed by the original sentence. We use a small evaluation set consisting of new examples derived from fiction books that was shared privately by the authors of the original corpus. While the included training set is balanced between two classes, the test set is imbalanced between them (65% not entailment). Also, due to a data quirk, the development set is adversarial: hypotheses are sometimes shared between training and development examples, so if a model memorizes the training examples, they will predict the wrong label on corresponding development set example. As with QNLI, each example is evaluated separately, so there is not a systematic correspondence between a model's score on this task and its score on the unconverted original task. We call converted dataset WNLI (Winograd NLI).""" ), }, "vnrte": { "name": "vnrte", "text_features": ["sentence1", "sentence2", "topic", "source"], "label_classes": ["entailment", "not_entailment"], "label_column": "label", "citation": textwrap.dedent( """\ """ ), "description": textwrap.dedent( """\ """ ), # pylint: disable=line-too-long }, "vsfc": { "name": "vsfc", "text_features": ["sentence"], "label_classes": ["negative", "neutral", "positive"], "label_column": "label", "citation": textwrap.dedent( """ @inproceedings{van2018uit, title={UIT-VSFC: Vietnamese students’ feedback corpus for sentiment analysis}, author={Van Nguyen, Kiet and Nguyen, Vu Duc and Nguyen, Phu XV and Truong, Tham TH and Nguyen, Ngan Luu-Thuy}, booktitle={2018 10th international conference on knowledge and systems engineering (KSE)}, pages={19--24}, year={2018}, organization={IEEE} }""" ), "description": textwrap.dedent( """Vietnamese Students' Feedback Corpus (UIT-VSFC), a free and high-quality corpus for research on two different tasks: sentiment-based and topic-based classifications""" ), }, "vsmec": { "name": "vsmec", "text_features": ["sentence", "raw_sentence", "emotion"], "label_classes": [ "Anger", "Disgust", "Enjoyment", "Fear", "Other", "Sadness", "Surprise", ], "label_column": "label", "citation": textwrap.dedent( """@inproceedings{ho2020emotion, title={Emotion recognition for vietnamese social media text}, author={Ho, Vong Anh and Nguyen, Duong Huynh-Cong and Nguyen, Danh Hoang and Pham, Linh Thi-Van and Nguyen, Duc-Vu and Nguyen, Kiet Van and Nguyen, Ngan Luu-Thuy}, booktitle={Computational Linguistics: 16th International Conference of the Pacific Association for Computational Linguistics, PACLING 2019, Hanoi, Vietnam, October 11--13, 2019, Revised Selected Papers 16}, pages={319--333}, year={2020}, organization={Springer} }""" ), "description": textwrap.dedent( """a standard Vietnamese Social Media Emotion Corpus (UIT-VSMEC) with exactly 6,927 emotion-annotated sentences, contributing to emotion recognition research in Vietnamese""" ), }, "vtoc": { "name": "vtoc", "text_features": ["sentence"], "label_classes": [ "Automobile", "Business", "Digital", "Education", "Entertainment", "Health", "Law", "Life", "News", "Perspective", "Relax", "Science", "Sports", "Travel", "World", ], "label_column": "label", "citation": textwrap.dedent(""""""), "description": textwrap.dedent(""""""), }, } _VERSION = datasets.Version("1.2.0", "") class VieGLUEConfig(datasets.BuilderConfig): """BuilderConfig for GLUE.""" def __init__( self, text_features, label_column="", data_url="", data_dir="", citation="", url="", label_classes=None, process_label=lambda x: x, **kwargs, ): """BuilderConfig for VieGLUE. Args: text_features: `dict[string, string]`, map from the name of the feature dict for each text field to the name of the column in the tsv file label_column: `string`, name of the column in the tsv file corresponding to the label data_url: `string`, url to download the zip file from data_dir: `string`, the path to the folder containing the tsv files in the downloaded zip citation: `string`, citation for the data set url: `string`, url for information about the data set label_classes: `list[string]`, the list of classes if the label is categorical. If not provided, then the label will be of type `datasets.Value('float32')`. process_label: `Function[string, any]`, function taking in the raw value of the label and processing it to the form required by the label feature **kwargs: keyword arguments forwarded to super. """ super(VieGLUEConfig, self).__init__( version=datasets.Version("1.0.0", ""), **kwargs ) self.text_features = text_features self.label_column = label_column self.label_classes = label_classes self.data_url = data_url self.data_dir = data_dir self.citation = citation self.url = url self.process_label = process_label class VNExpress(datasets.GeneratorBasedBuilder): """""" VERSION = _VERSION DEFAULT_CONFIG_NAME = "mnli" BUILDER_CONFIGS = [VieGLUEConfig(**config) for config in SUBSET_KWARGS.values()] def _info(self): features = {f: datasets.Value("string") for f in self.config.text_features} if self.config.label_classes: features["label"] = datasets.features.ClassLabel( names=self.config.label_classes ) else: features["label"] = datasets.Value("float32") features["idx"] = datasets.Value("int32") return datasets.DatasetInfo( description=_DESCRIPTION, features=datasets.Features(features), homepage=self.config.url, citation=self.config.citation + "\n" + _CITATION, ) def _split_generators(self, dl_manager): _SPLIT_MAPPING = { "train": datasets.Split.TRAIN, "training": datasets.Split.TRAIN, "test": datasets.Split.TEST, "testing": datasets.Split.TEST, "val": datasets.Split.VALIDATION, "validation": datasets.Split.VALIDATION, "valid": datasets.Split.VALIDATION, "dev": datasets.Split.VALIDATION, "test_matched": "test_matched", # datasets.Split.TEST, "test_mismatched": "test_mismatched", # datasets.Split.TEST, "validation_matched": "validation_matched", # datasets.Split.VALIDATION, "validation_mismatched": "validation_mismatched", # datasets.Split.VALIDATION, } name = self.config.name download_url = _DOWNLOAD_URL[name] filepath = dl_manager.download_and_extract(download_url) return_datasets = [] for split in download_url: return_datasets.append( datasets.SplitGenerator( name=_SPLIT_MAPPING[split], gen_kwargs={ "files": filepath[split], "urls": download_url[split], "stage": split, "config": self.config, }, ) ) return return_datasets def _generate_examples(self, files, urls, stage, config): id_ = 0 features = config.text_features # print(config) # print(features) if not isinstance(files, list): files = [files] for path, url in zip(files, urls): # print(f"Loading file from {url}...") for file in os.listdir(path): if file.startswith("._"): continue file_path = os.path.join(path, file) if not os.path.isfile(file_path): continue with open(file_path) as f: all_samples = json.load(f) # print(f"Loaded {len(all_samples)} samples from {file_path}") # print(f"Sample: {all_samples[0]}") for sample in all_samples: if sample["label"] is None or sample["label"] == "": sample["label"] = -1 yield id_, { "idx": id_, "label": sample["label"], **{f: sample[f] for f in features}, } id_ += 1