from __future__ import annotations from mteb.abstasks.TaskMetadata import TaskMetadata from ....abstasks import AbsTaskClassification, MultilingualTask _LANGUAGES = { "amh": ["amh-Ethi"], "eng": ["eng-Latn"], "fra": ["fra-Latn"], "hau": ["hau-Latn"], "ibo": ["ibo-Latn"], "lin": ["lin-Latn"], "lug": ["lug-Latn"], "orm": ["orm-Ethi"], "pcm": ["pcm-Latn"], "run": ["run-Latn"], "sna": ["sna-Latn"], "som": ["som-Latn"], "swa": ["swa-Latn"], "tir": ["tir-Ethi"], "xho": ["xho-Latn"], "yor": ["yor-Latn"], } class MasakhaNEWSClassification(AbsTaskClassification, MultilingualTask): metadata = TaskMetadata( name="MasakhaNEWSClassification", dataset={ "path": "mteb/masakhanews", "revision": "18193f187b92da67168c655c9973a165ed9593dd", }, description="MasakhaNEWS is the largest publicly available dataset for news topic classification in 16 languages widely spoken in Africa. The train/validation/test sets are available for all the 16 languages.", reference="https://arxiv.org/abs/2304.09972", category="s2s", type="Classification", eval_splits=["test"], eval_langs=_LANGUAGES, main_score="accuracy", date=None, form=None, domains=None, task_subtypes=None, license=None, socioeconomic_status=None, annotations_creators=None, dialect=None, text_creation=None, bibtex_citation=None, n_samples={"test": 422}, avg_character_length={"test": 5116.6}, ) def dataset_transform(self): for lang in self.dataset.keys(): self.dataset[lang] = self.dataset[lang].rename_columns( {"category": "label"} )