from __future__ import annotations from mteb.abstasks import AbsTaskClassification from mteb.abstasks.TaskMetadata import TaskMetadata class EstonianValenceClassification(AbsTaskClassification): metadata = TaskMetadata( name="EstonianValenceClassification", dataset={ "path": "kardosdrur/estonian-valence", "revision": "9157397f05a127b3ac93b93dd88abf1bdf710c22", }, description="Dataset containing annotated Estonian news data from the Postimees and Õhtuleht newspapers.", reference="https://figshare.com/articles/dataset/Estonian_Valence_Corpus_Eesti_valentsikorpus/24517054", type="Classification", category="s2s", eval_splits=["test"], eval_langs=["est-Latn"], main_score="accuracy", date=( "1857-01-01", # Inception of Postimees "2023-11-08", # dataset publication ), form=["written"], domains=["News"], task_subtypes=["Sentiment/Hate speech"], dialect=[], license="CC BY 4.0", socioeconomic_status="high", annotations_creators="human-annotated", text_creation="found", bibtex_citation=""" @article{Pajupuu2023, author = "Hille Pajupuu and Jaan Pajupuu and Rene Altrov and Kairi Tamuri", title = "{Estonian Valence Corpus / Eesti valentsikorpus}", year = "2023", month = "11", url = "https://figshare.com/articles/dataset/Estonian_Valence_Corpus_Eesti_valentsikorpus/24517054", doi = "10.6084/m9.figshare.24517054.v1" }""", n_samples={"train": 3270, "test": 818}, avg_character_length={"train": 226.70642201834863, "test": 231.5085574572127}, ) def dataset_transform(self): self.dataset = self.dataset.rename_column("paragraph", "text").rename_column( "valence", "label" ) # convert label to a numbers labels = self.dataset["train"]["label"] # type: ignore lab2idx = {lab: idx for idx, lab in enumerate(set(labels))} self.dataset = self.dataset.map( lambda x: {"label": lab2idx[x["label"]]}, remove_columns=["label"] ) @property def metadata_dict(self) -> dict[str, str]: metadata_dict = dict(self.metadata) metadata_dict["n_experiments"] = 10 metadata_dict["samples_per_label"] = 16 return metadata_dict