# Copyright 2020 The HuggingFace Datasets Authors and the current dataset script contributor. # # 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. import os import io import datasets import DiscoEvalConstants import pickle import logging _CITATION = """\ @InProceedings{mchen-discoeval-19, title = {Evaluation Benchmarks and Learning Criteria for Discourse-Aware Sentence Representations}, author = {Mingda Chen and Zewei Chu and Kevin Gimpel}, booktitle = {Proc. of {EMNLP}}, year={2019} } """ _DESCRIPTION = """\ This dataset contains all tasks of the DiscoEval benchmark for sentence representation learning. """ _HOMEPAGE = "https://github.com/ZeweiChu/DiscoEval" class DiscoEvalSentence(datasets.GeneratorBasedBuilder): """DiscoEval Benchmark""" VERSION = datasets.Version("1.1.0") BUILDER_CONFIGS = [ datasets.BuilderConfig( name=DiscoEvalConstants.SPARXIV, version=VERSION, description="Sentence positioning dataset from arXiv", ), datasets.BuilderConfig( name=DiscoEvalConstants.SPROCSTORY, version=VERSION, description="Sentence positioning dataset from ROCStory", ), datasets.BuilderConfig( name=DiscoEvalConstants.SPWIKI, version=VERSION, description="Sentence positioning dataset from Wikipedia", ), datasets.BuilderConfig( name=DiscoEvalConstants.DCCHAT, version=VERSION, description="Discourse Coherence dataset from chat", ), datasets.BuilderConfig( name=DiscoEvalConstants.DCWIKI, version=VERSION, description="Discourse Coherence dataset from Wikipedia", ), datasets.BuilderConfig( name=DiscoEvalConstants.RST, version=VERSION, description="The RST Discourse Treebank dataset ", ), datasets.BuilderConfig( name=DiscoEvalConstants.PDTB_E, version=VERSION, description="The Penn Discourse Treebank - Explicit dataset.", ), datasets.BuilderConfig( name=DiscoEvalConstants.PDTB_I, version=VERSION, description="The Penn Discourse Treebank - Implicit dataset.", ), datasets.BuilderConfig( name=DiscoEvalConstants.SSPABS, version=VERSION, description="The SSP dataset.", ), datasets.BuilderConfig( name=DiscoEvalConstants.BSOARXIV, version=VERSION, description="The BSO Task with the arxiv dataset.", ), datasets.BuilderConfig( name=DiscoEvalConstants.BSOWIKI, version=VERSION, description="The BSO Task with the wiki dataset.", ), datasets.BuilderConfig( name=DiscoEvalConstants.BSOROCSTORY, version=VERSION, description="The BSO Task with the rocstory dataset.", ), ] def _info(self): if self.config.name in [DiscoEvalConstants.SPARXIV, DiscoEvalConstants.SPROCSTORY, DiscoEvalConstants.SPWIKI]: features_dict = { DiscoEvalConstants.TEXT_COLUMN_NAME[i]: datasets.Value('string') for i in range(DiscoEvalConstants.SP_TEXT_COLUMNS) } features_dict[DiscoEvalConstants.LABEL_NAME] = datasets.ClassLabel(names=DiscoEvalConstants.SP_LABELS) features = datasets.Features(features_dict) elif self.config.name in [DiscoEvalConstants.BSOARXIV, DiscoEvalConstants.BSOWIKI, DiscoEvalConstants.BSOROCSTORY]: features_dict = { DiscoEvalConstants.TEXT_COLUMN_NAME[i]: datasets.Value('string') for i in range(DiscoEvalConstants.BSO_TEXT_COLUMNS) } features_dict[DiscoEvalConstants.LABEL_NAME] = datasets.ClassLabel(names=DiscoEvalConstants.BSO_LABELS) features = datasets.Features(features_dict) elif self.config.name in [DiscoEvalConstants.DCCHAT, DiscoEvalConstants.DCWIKI]: features_dict = { DiscoEvalConstants.TEXT_COLUMN_NAME[i]: datasets.Value('string') for i in range(DiscoEvalConstants.DC_TEXT_COLUMNS) } features_dict[DiscoEvalConstants.LABEL_NAME] = datasets.ClassLabel(names=DiscoEvalConstants.DC_LABELS) features = datasets.Features(features_dict) elif self.config.name in [DiscoEvalConstants.RST]: features_dict = { DiscoEvalConstants.TEXT_COLUMN_NAME[i]: [datasets.Value('string')] for i in range(DiscoEvalConstants.RST_TEXT_COLUMNS) } features_dict[DiscoEvalConstants.LABEL_NAME] = datasets.ClassLabel(names=DiscoEvalConstants.RST_LABELS) features = datasets.Features(features_dict) elif self.config.name in [DiscoEvalConstants.PDTB_E]: features_dict = { DiscoEvalConstants.TEXT_COLUMN_NAME[i]: datasets.Value('string') for i in range(DiscoEvalConstants.PDTB_E_TEXT_COLUMNS) } features_dict[DiscoEvalConstants.LABEL_NAME] = datasets.ClassLabel(names=DiscoEvalConstants.PDTB_E_LABELS) features = datasets.Features(features_dict) elif self.config.name in [DiscoEvalConstants.PDTB_I]: features_dict = { DiscoEvalConstants.TEXT_COLUMN_NAME[i]: datasets.Value('string') for i in range(DiscoEvalConstants.PDTB_I_TEXT_COLUMNS) } features_dict[DiscoEvalConstants.LABEL_NAME] = datasets.ClassLabel(names=DiscoEvalConstants.PDTB_I_LABELS) features = datasets.Features(features_dict) elif self.config.name in [DiscoEvalConstants.SSPABS]: features_dict = { DiscoEvalConstants.TEXT_COLUMN_NAME[i]: datasets.Value('string') for i in range(DiscoEvalConstants.SSPABS_TEXT_COLUMNS) } features_dict[DiscoEvalConstants.LABEL_NAME] = datasets.ClassLabel(names=DiscoEvalConstants.SSPABS_LABELS) features = datasets.Features(features_dict) return datasets.DatasetInfo( description=_DESCRIPTION, features=features, homepage=_HOMEPAGE, citation=_CITATION, ) def _split_generators(self, dl_manager): if self.config.name in [DiscoEvalConstants.SPARXIV, DiscoEvalConstants.SPROCSTORY, DiscoEvalConstants.SPWIKI]: data_dir = DiscoEvalConstants.SP_DATA_DIR + "/" + DiscoEvalConstants.SP_DIRS[self.config.name] train_name = DiscoEvalConstants.SP_TRAIN_NAME valid_name = DiscoEvalConstants.SP_VALID_NAME test_name = DiscoEvalConstants.SP_TEST_NAME elif self.config.name in [DiscoEvalConstants.BSOARXIV, DiscoEvalConstants.BSOWIKI, DiscoEvalConstants.BSOROCSTORY]: data_dir = DiscoEvalConstants.BSO_DATA_DIR + "/" + DiscoEvalConstants.BSO_DIRS[self.config.name] train_name = DiscoEvalConstants.BSO_TRAIN_NAME valid_name = DiscoEvalConstants.BSO_VALID_NAME test_name = DiscoEvalConstants.BSO_TEST_NAME elif self.config.name in [DiscoEvalConstants.DCCHAT, DiscoEvalConstants.DCWIKI]: data_dir = DiscoEvalConstants.DC_DATA_DIR + "/" + DiscoEvalConstants.DC_DIRS[self.config.name] train_name = DiscoEvalConstants.DC_TRAIN_NAME valid_name = DiscoEvalConstants.DC_VALID_NAME test_name = DiscoEvalConstants.DC_TEST_NAME elif self.config.name in [DiscoEvalConstants.RST]: data_dir = DiscoEvalConstants.RST_DATA_DIR train_name = DiscoEvalConstants.RST_TRAIN_NAME valid_name = DiscoEvalConstants.RST_VALID_NAME test_name = DiscoEvalConstants.RST_TEST_NAME elif self.config.name in [DiscoEvalConstants.PDTB_E, DiscoEvalConstants.PDTB_I]: data_dir = os.path.join(DiscoEvalConstants.PDTB_DATA_DIR, DiscoEvalConstants.PDTB_DIRS[self.config.name]) train_name = DiscoEvalConstants.PDTB_TRAIN_NAME valid_name = DiscoEvalConstants.PDTB_VALID_NAME test_name = DiscoEvalConstants.PDTB_TEST_NAME elif self.config.name in [DiscoEvalConstants.SSPABS]: data_dir = DiscoEvalConstants.SSPABS_DATA_DIR train_name = DiscoEvalConstants.SSPABS_TRAIN_NAME valid_name = DiscoEvalConstants.SSPABS_VALID_NAME test_name = DiscoEvalConstants.SSPABS_TEST_NAME urls_to_download = { "train": data_dir + "/" + train_name, "valid": data_dir + "/" + valid_name, "test": data_dir + "/" + test_name, } logger = logging.getLogger(__name__) data_dirs = dl_manager.download_and_extract(urls_to_download) logger.info(f"Data directories: {data_dirs}") downloaded_files = dl_manager.download_and_extract(data_dirs) logger.info(f"Downloading Completed") return [ datasets.SplitGenerator( name=datasets.Split.TRAIN, gen_kwargs={ "filepath": downloaded_files['train'], "split": "train", }, ), datasets.SplitGenerator( name=datasets.Split.VALIDATION, gen_kwargs={ "filepath": downloaded_files['valid'], "split": "dev", }, ), datasets.SplitGenerator( name=datasets.Split.TEST, gen_kwargs={ "filepath": downloaded_files['test'], "split": "test" }, ), ] def _generate_examples(self, filepath, split): logger = logging.getLogger(__name__) logger.info(f"Current working dir: {os.getcwd()}") logger.info("generating examples from = %s", filepath) if self.config.name == DiscoEvalConstants.RST: data = pickle.load(open(filepath, "rb")) for key, line in enumerate(data): example = {DiscoEvalConstants.TEXT_COLUMN_NAME[i]: sent for i, sent in enumerate(line[1:])} example[DiscoEvalConstants.LABEL_NAME] = line[0] yield key, example else: with io.open(filepath, mode='r', encoding='utf-8') as f: for key, line in enumerate(f): line = line.strip().split("\t") example = {DiscoEvalConstants.TEXT_COLUMN_NAME[i]: sent for i, sent in enumerate(line[1:])} example[DiscoEvalConstants.LABEL_NAME] = line[0] yield key, example