from __future__ import annotations from mteb.abstasks.AbsTaskClassification import AbsTaskClassification from mteb.abstasks.TaskMetadata import TaskMetadata N_SAMPLES = 2048 class IndonesianIdClickbaitClassification(AbsTaskClassification): metadata = TaskMetadata( name="IndonesianIdClickbaitClassification", dataset={ "path": "manandey/id_clickbait", "revision": "9fa4d0824015fe537ae2c8166781f5c79873da2c", }, description="The CLICK-ID dataset is a collection of Indonesian news headlines that was collected from 12 local online news publishers.", reference="http://www.sciencedirect.com/science/article/pii/S2352340920311252", type="Classification", category="s2s", eval_splits=["train"], eval_langs=["ind-Latn"], main_score="f1", date=("2020-10-01", "2020-10-01"), form=["written"], domains=["News"], dialect=[], task_subtypes=["Claim verification"], license="cc-by-4.0", socioeconomic_status="medium", annotations_creators="expert-annotated", text_creation="found", bibtex_citation=""" @article{WILLIAM2020106231, title = "CLICK-ID: A novel dataset for Indonesian clickbait headlines", journal = "Data in Brief", volume = "32", pages = "106231", year = "2020", issn = "2352-3409", doi = "https://doi.org/10.1016/j.dib.2020.106231", url = "http://www.sciencedirect.com/science/article/pii/S2352340920311252", author = "Andika William and Yunita Sari", keywords = "Indonesian, Natural Language Processing, News articles, Clickbait, Text-classification", abstract = "News analysis is a popular task in Natural Language Processing (NLP). In particular, the problem of clickbait in news analysis has gained attention in recent years [1, 2]. However, the majority of the tasks has been focused on English news, in which there is already a rich representative resource. For other languages, such as Indonesian, there is still a lack of resource for clickbait tasks. Therefore, we introduce the CLICK-ID dataset of Indonesian news headlines extracted from 12 Indonesian online news publishers. It is comprised of 15,000 annotated headlines with clickbait and non-clickbait labels. Using the CLICK-ID dataset, we then developed an Indonesian clickbait classification model achieving favourable performance. We believe that this corpus will be useful for replicable experiments in clickbait detection or other experiments in NLP areas." } """, n_samples={"train": N_SAMPLES}, avg_character_length={"train": 64.28}, ) def dataset_transform(self): self.dataset = self.dataset.remove_columns(["label"]).rename_columns( {"title": "text", "label_score": "label"} ) self.dataset = self.stratified_subsampling( self.dataset, seed=self.seed, splits=["train"] )