from __future__ import annotations from mteb.abstasks import AbsTaskClassification from mteb.abstasks.TaskMetadata import TaskMetadata N_SAMPLES = 2048 class RomanianReviewsSentiment(AbsTaskClassification): metadata = TaskMetadata( name="RomanianReviewsSentiment", description="LaRoSeDa (A Large Romanian Sentiment Data Set) contains 15,000 reviews written in Romanian", reference="https://arxiv.org/abs/2101.04197", dataset={ "path": "universityofbucharest/laroseda", "revision": "358bcc95aeddd5d07a4524ee416f03d993099b23", }, type="Classification", category="s2s", date=("2020-01-01", "2021-01-11"), eval_splits=["test"], eval_langs=["ron-Latn"], main_score="accuracy", form=["written"], domains=["Reviews"], task_subtypes=["Sentiment/Hate speech"], license="CC-BY-4.0", socioeconomic_status="mixed", annotations_creators="derived", dialect=[], text_creation="found", bibtex_citation=""" @article{ tache2101clustering, title={Clustering Word Embeddings with Self-Organizing Maps. Application on LaRoSeDa -- A Large Romanian Sentiment Data Set}, author={Anca Maria Tache and Mihaela Gaman and Radu Tudor Ionescu}, journal={ArXiv}, year = {2021} } """, n_samples={"test": N_SAMPLES}, avg_character_length={"test": 588.6}, ) def dataset_transform(self): self.dataset = self.dataset.rename_columns( {"content": "text", "starRating": "label"} ) self.dataset = self.stratified_subsampling( self.dataset, seed=self.seed, splits=["test"] )