# 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 Russian SuperGLUE Benchmark""" import json import os from typing import List, Union import datasets _RUSSIAN_SUPER_GLUE_CITATION = """\ @article{shavrina2020russiansuperglue, title={RussianSuperGLUE: A Russian Language Understanding Evaluation Benchmark}, author={Shavrina, Tatiana and Fenogenova, Alena and Emelyanov, Anton and Shevelev, Denis and Artemova, Ekaterina and Malykh, Valentin and Mikhailov, Vladislav and Tikhonova, Maria and Chertok, Andrey and Evlampiev, Andrey}, journal={arXiv preprint arXiv:2010.15925}, year={2020} } """ _MUSERC_CITATION = """\ @inproceedings{fenogenova-etal-2020-read, title = "Read and Reason with {M}u{S}e{RC} and {R}u{C}o{S}: Datasets for Machine Reading Comprehension for {R}ussian", author = "Fenogenova, Alena and Mikhailov, Vladislav and Shevelev, Denis", booktitle = "Proceedings of the 28th International Conference on Computational Linguistics", month = dec, year = "2020", address = "Barcelona, Spain (Online)", publisher = "International Committee on Computational Linguistics", url = "https://aclanthology.org/2020.coling-main.570", doi = "10.18653/v1/2020.coling-main.570", pages = "6481--6497", abstract = "The paper introduces two Russian machine reading comprehension (MRC) datasets, called MuSeRC and RuCoS, which require reasoning over multiple sentences and commonsense knowledge to infer the answer. The former follows the design of MultiRC, while the latter is a counterpart of the ReCoRD dataset. The datasets are included in RussianSuperGLUE, the Russian general language understanding benchmark. We provide a comparative analysis and demonstrate that the proposed tasks are relatively more complex as compared to the original ones for English. Besides, performance results of human solvers and BERT-based models show that MuSeRC and RuCoS represent a challenge for recent advanced neural models. We thus hope to facilitate research in the field of MRC for Russian and prompt the study of multi-hop reasoning in a cross-lingual scenario.", } """ _RUSSE_CITATION = """\ @inproceedings{RUSSE2018, author = {Panchenko, Alexander and Lopukhina, Anastasia and Ustalov, Dmitry and Lopukhin, Konstantin and Arefyev, Nikolay and Leontyev, Alexey and Loukachevitch, Natalia}, title = {{RUSSE'2018: A Shared Task on Word Sense Induction for the Russian Language}}, booktitle = {Computational Linguistics and Intellectual Technologies: Papers from the Annual International Conference ``Dialogue''}, year = {2018}, pages = {547--564}, url = {http://www.dialog-21.ru/media/4539/panchenkoaplusetal.pdf}, address = {Moscow, Russia}, publisher = {RSUH}, issn = {2221-7932}, language = {english}, } """ _DANETQA_CITATION = """\ @InProceedings{10.1007/978-3-030-72610-2_4, author="Glushkova, Taisia and Machnev, Alexey and Fenogenova, Alena and Shavrina, Tatiana and Artemova, Ekaterina and Ignatov, Dmitry I.", editor="van der Aalst, Wil M. P. and Batagelj, Vladimir and Ignatov, Dmitry I. and Khachay, Michael and Koltsova, Olessia and Kutuzov, Andrey and Kuznetsov, Sergei O. and Lomazova, Irina A. and Loukachevitch, Natalia and Napoli, Amedeo and Panchenko, Alexander and Pardalos, Panos M. and Pelillo, Marcello and Savchenko, Andrey V. and Tutubalina, Elena", title="DaNetQA: A Yes/No Question Answering Dataset for the Russian Language", booktitle="Analysis of Images, Social Networks and Texts", year="2021", publisher="Springer International Publishing", address="Cham", pages="57--68", abstract="DaNetQA, a new question-answering corpus, follows BoolQ [2] design: it comprises natural yes/no questions. Each question is paired with a paragraph from Wikipedia and an answer, derived from the paragraph. The task is to take both the question and a paragraph as input and come up with a yes/no answer, i.e. to produce a binary output. In this paper, we present a reproducible approach to DaNetQA creation and investigate transfer learning methods for task and language transferring. For task transferring we leverage three similar sentence modelling tasks: 1) a corpus of paraphrases, Paraphraser, 2) an NLI task, for which we use the Russian part of XNLI, 3) another question answering task, SberQUAD. For language transferring we use English to Russian translation together with multilingual language fine-tuning.", isbn="978-3-030-72610-2" } """ _RUCOS_CITATION = _MUSERC_CITATION _RUSSIAN_SUPER_GLUE_DESCRIPTION = """\ Recent advances in the field of universal language models and transformers require the development of a methodology for their broad diagnostics and testing for general intellectual skills - detection of natural language inference, commonsense reasoning, ability to perform simple logical operations regardless of text subject or lexicon. For the first time, a benchmark of nine tasks, collected and organized analogically to the SuperGLUE methodology, was developed from scratch for the Russian language. We provide baselines, human level evaluation, an open-source framework for evaluating models and an overall leaderboard of transformer models for the Russian language. """ _HOMEPAGE = "https://russiansuperglue.com/" _LICENSE = "MIT License" _LIDIRUS_DESCRIPTION = """"\ LiDiRus (Linguistic Diagnostic for Russian) is a diagnostic dataset that covers a large volume of linguistic phenomena, while allowing you to evaluate information systems on a simple test of textual entailment recognition. See more details diagnostics. """ _RCB_DESCRIPTION = """\ The Russian Commitment Bank is a corpus of naturally occurring discourses whose final sentence contains a clause-embedding predicate under an entailment canceling operator (question, modal, negation, antecedent of conditional). """ _PARUS_DESCRIPTION = """\ Choice of Plausible Alternatives for Russian language Choice of Plausible Alternatives for Russian language (PARus) evaluation provides researchers with a tool for assessing progress in open-domain commonsense causal reasoning. Each question in PARus is composed of a premise and two alternatives, where the task is to select the alternative that more plausibly has a causal relation with the premise. The correct alternative is randomized so that the expected performance of randomly guessing is 50%. """ _MUSERC_DESCRIPTION = """\ We present a reading comprehension challenge in which questions can only be answered by taking into account information from multiple sentences. The dataset is the first to study multi-sentence inference at scale, with an open-ended set of question types that requires reasoning skills. """ _TERRA_DESCRIPTION = """\ Textual Entailment Recognition has been proposed recently as a generic task that captures major semantic inference needs across many NLP applications, such as Question Answering, Information Retrieval, Information Extraction, and Text Summarization. This task requires to recognize, given two text fragments, whether the meaning of one text is entailed (can be inferred) from the other text. """ _RUSSE_DESCRIPTION = """\ WiC: The Word-in-Context Dataset A reliable benchmark for the evaluation of context-sensitive word embeddings. Depending on its context, an ambiguous word can refer to multiple, potentially unrelated, meanings. Mainstream static word embeddings, such as Word2vec and GloVe, are unable to reflect this dynamic semantic nature. Contextualised word embeddings are an attempt at addressing this limitation by computing dynamic representations for words which can adapt based on context. Russian SuperGLUE task borrows original data from the Russe project, Word Sense Induction and Disambiguation shared task (2018) """ _RWSD_DESCRIPTION = """\ A Winograd schema is a pair of sentences that differ in only one or two words and that contain an ambiguity that is resolved in opposite ways in the two sentences and requires the use of world knowledge and reasoning for its resolution. The schema takes its name from a well-known example by Terry Winograd. The set would then be presented as a challenge for AI programs, along the lines of the Turing test. The strengths of the challenge are that it is clear-cut, in that the answer to each schema is a binary choice; vivid, in that it is obvious to non-experts that a program that fails to get the right answers clearly has serious gaps in its understanding; and difficult, in that it is far beyond the current state of the art. """ _DANETQA_DESCRIPTION = """\ DaNetQA is a question answering dataset for yes/no questions. These questions are naturally occurring -- they are generated in unprompted and unconstrained settings. Each example is a triplet of (question, passage, answer), with the title of the page as optional additional context. The text-pair classification setup is similar to existing natural language inference tasks. By sampling questions from a distribution of information-seeking queries (rather than prompting annotators for text pairs), we observe significantly more challenging examples compared to existing NLI datasets. """ _RUCOS_DESCRIPTION = """\ Russian reading comprehension with Commonsense reasoning (RuCoS) is a large-scale reading comprehension dataset which requires commonsense reasoning. RuCoS consists of queries automatically generated from CNN/Daily Mail news articles; the answer to each query is a text span from a summarizing passage of the corresponding news. The goal of RuCoS is to evaluate a machine`s ability of commonsense reasoning in reading comprehension. """ class RussianSuperGlueConfig(datasets.BuilderConfig): """BuilderConfig for the Russian SuperGLUE.""" VERSION = datasets.Version("0.0.1") def __init__( self, features: List[str], data_url: str, citation: str, url: str, label_classes: List[str] = ("False", "True"), **kwargs, ): """BuilderConfig for the Russian SuperGLUE. Args: features: `list[string]`, list of the features that will appear in the feature dict. Should not include "label". data_url: `string`, url to download the zip file from. citation: `string`, citation for the data set. url: `string`, url for information about the data set. label_classes: `list[string]`, the list of classes for the label if the label is present as a string. Non-string labels will be cast to either 'False' or 'True'. **kwargs: keyword arguments forwarded to super. """ # 0.0.1: Initial version. super(RussianSuperGlueConfig, self).__init__(version=self.VERSION, **kwargs) self.features = features self.label_classes = label_classes self.data_url = data_url self.citation = citation self.url = url class RussianSuperGlue(datasets.GeneratorBasedBuilder): BUILDER_CONFIGS = [ RussianSuperGlueConfig( name="lidirus", description=_LIDIRUS_DESCRIPTION, features=[ "sentence1", "sentence2", "knowledge", "lexical-semantics", "logic", "predicate-argument-structure", ], label_classes=["entailment", "not_entailment"], data_url="data/LiDiRus", citation="", url="https://russiansuperglue.com/tasks/task_info/LiDiRus", ), RussianSuperGlueConfig( name="rcb", description=_RCB_DESCRIPTION, features=["premise", "hypothesis", "verb", "negation"], label_classes=["entailment", "contradiction", "neutral"], data_url="data/RCB", citation="", url="https://russiansuperglue.com/tasks/task_info/RCB", ), RussianSuperGlueConfig( name="parus", description=_PARUS_DESCRIPTION, label_classes=["choice1", "choice2"], features=["premise", "choice1", "choice2", "question"], data_url="data/PARus", citation="", url="https://russiansuperglue.com/tasks/task_info/PARus", ), RussianSuperGlueConfig( name="muserc", description=_MUSERC_DESCRIPTION, features=["paragraph", "question", "answer"], data_url="data/MuSeRC", citation=_MUSERC_CITATION, label_classes=["False", "True"], url="https://russiansuperglue.com/tasks/task_info/MuSeRC", ), RussianSuperGlueConfig( name="terra", description=_TERRA_DESCRIPTION, features=["premise", "hypothesis"], label_classes=["entailment", "not_entailment"], data_url="data/TERRa", citation="", url="https://russiansuperglue.com/tasks/task_info/TERRa", ), RussianSuperGlueConfig( name="russe", description=_RUSSE_DESCRIPTION, features=[ "word", "sentence1", "sentence2", "start1", "start2", "end1", "end2", "gold_sense1", "gold_sense2", ], data_url="data/RUSSE", citation=_RUSSE_CITATION, label_classes=["False", "True"], url="https://russiansuperglue.com/tasks/task_info/RUSSE", ), RussianSuperGlueConfig( name="rwsd", description=_RWSD_DESCRIPTION, features=["text", "span1_index", "span2_index", "span1_text", "span2_text"], data_url="data/RWSD", citation="", label_classes=["False", "True"], url="https://russiansuperglue.com/tasks/task_info/RWSD", ), RussianSuperGlueConfig( name="danetqa", description=_DANETQA_DESCRIPTION, features=["question", "passage"], data_url="data/DaNetQA", citation=_DANETQA_CITATION, label_classes=["False", "True"], url="https://russiansuperglue.com/tasks/task_info/DaNetQA", ), RussianSuperGlueConfig( name="rucos", description=_RUCOS_DESCRIPTION, features=["passage", "query", "entities", "answers"], data_url="data/RuCoS", citation=_RUCOS_CITATION, url="https://russiansuperglue.com/tasks/task_info/RuCoS", ), ] def _info(self): if self.config.name == "russe": features = {feature: datasets.Value("string") for feature in ("word", "sentence1", "sentence2")} features["start1"] = datasets.Value("int32") features["start2"] = datasets.Value("int32") features["end1"] = datasets.Value("int32") features["end2"] = datasets.Value("int32") features["gold_sense1"] = datasets.Value("int32") features["gold_sense2"] = datasets.Value("int32") else: features = {feature: datasets.Value("string") for feature in self.config.features} if self.config.name == "rwsd": features["span1_index"] = datasets.Value("int32") features["span2_index"] = datasets.Value("int32") if self.config.name == "muserc": features["idx"] = dict( { "paragraph": datasets.Value("int32"), "question": datasets.Value("int32"), "answer": datasets.Value("int32"), } ) elif self.config.name == "rucos": features["idx"] = dict( { "passage": datasets.Value("int32"), "query": datasets.Value("int32"), } ) else: features["idx"] = datasets.Value("int32") if self.config.name == "rucos": # Entities are the set of possible choices for the placeholder. features["entities"] = datasets.features.Sequence(datasets.Value("string")) # Answers are the subset of entities that are correct. features["answers"] = datasets.features.Sequence(datasets.Value("string")) else: features["label"] = datasets.features.ClassLabel(names=self.config.label_classes) return datasets.DatasetInfo( description=_RUSSIAN_SUPER_GLUE_DESCRIPTION + self.config.description, features=datasets.Features(features), homepage=self.config.url, citation=self.config.citation + "\n" + _RUSSIAN_SUPER_GLUE_CITATION, ) def _split_generators(self, dl_manager: datasets.DownloadManager): dl_dir = dl_manager.download_and_extract(self.config.data_url) or "" task_name = _get_task_name_from_data_url(self.config.data_url) dl_dir = os.path.join(dl_dir, task_name) if self.config.name == "lidirus": return [ datasets.SplitGenerator( name=datasets.Split.TEST, gen_kwargs={ "data_file": os.path.join(dl_dir, f"{task_name}.jsonl"), "split": datasets.Split.TEST, }, ), ] else: return [ datasets.SplitGenerator( name=datasets.Split.TRAIN, gen_kwargs={ "data_file": os.path.join(dl_dir, "train.jsonl"), "split": datasets.Split.TRAIN, }, ), datasets.SplitGenerator( name=datasets.Split.VALIDATION, gen_kwargs={ "data_file": os.path.join(dl_dir, "val.jsonl"), "split": datasets.Split.VALIDATION, }, ), datasets.SplitGenerator( name=datasets.Split.TEST, gen_kwargs={ "data_file": os.path.join(dl_dir, "test.jsonl"), "split": datasets.Split.TEST, }, ), ] def _generate_examples(self, data_file: str, split: datasets.Split): with open(data_file, encoding="utf-8") as file: for line in file: row = json.loads(line) if self.config.name == "muserc": paragraph = row["passage"] for question in paragraph["questions"]: for answer in question["answers"]: label = answer.get("label") key = "%s_%s_%s" % (row["idx"], question["idx"], answer["idx"]) yield key, { "paragraph": paragraph["text"], "question": question["question"], "answer": answer["text"], "label": -1 if label is None else _cast_label(bool(label)), "idx": {"paragraph": row["idx"], "question": question["idx"], "answer": answer["idx"]}, } elif self.config.name == "rucos": passage = row["passage"] for qa in row["qas"]: yield qa["idx"], { "passage": passage["text"], "query": qa["query"], "entities": _get_rucos_entities(passage), "answers": _get_rucos_answers(qa), "idx": {"passage": row["idx"], "query": qa["idx"]}, } else: if self.config.name in ("lidirus", "rcb"): # features may be missing example = {feature: row.get(feature, "") for feature in self.config.features} elif self.config.name == "russe" and split == datasets.Split.TEST: # gold senses are not available in `test` split example = { feature: row[feature] for feature in self.config.features if feature not in ("gold_sense1", "gold_sense2") } example["gold_sense1"] = -1 example["gold_sense2"] = -1 else: if self.config.name == "rwsd": row.update(row["target"]) example = {feature: row[feature] for feature in self.config.features} example["idx"] = row["idx"] if "label" in row: if self.config.name == "parus": example["label"] = "choice2" if row["label"] else "choice1" else: example["label"] = _cast_label(row["label"]) else: assert split == datasets.Split.TEST, row example["label"] = -1 yield example["idx"], example def _get_task_name_from_data_url(data_url: str) -> str: return data_url.split("/")[-1] def _cast_label(label: Union[str, bool, int]) -> str: """Converts the label into the appropriate string version.""" if isinstance(label, str): return label elif isinstance(label, bool): return "True" if label else "False" elif isinstance(label, int): assert label in (0, 1) return str(label) else: raise ValueError("Invalid label format.") def _get_rucos_entities(passage: dict) -> List[str]: """Returns the unique set of entities.""" text = passage["text"] entities = set() for entity in passage["entities"]: entities.add(text[entity["start"] : entity["end"] + 1]) return sorted(entities) def _get_rucos_answers(qa: dict) -> List[str]: """Returns the unique set of answers.""" if "answers" not in qa: return [] answers = set() for answer in qa["answers"]: answers.add(answer["text"]) return sorted(answers)