SMOL: Professionally translated parallel data for 115 under-represented languages

Caswell, Isaac, Nielsen, Elizabeth, Luo, Jiaming, Cherry, Colin, Kovacs, Geza, Shemtov, Hadar, Talukdar, Partha, Tewari, Dinesh, Diane, Baba Mamadi, Doumbouya, Koulako Moussa, Diane, Djibrila, Cissé, Solo Farabado

arXiv.org Artificial Intelligence 

We open-source SMOL (Set of Maximal Overall Leverage), a suite of training data to unlock translation for low-resource languages (LRLs). SMOL has been translated into 115 under-resourced languages, including many for which there exist no previous public resources, for a total of 6.1M translated tokens. SMOL comprises two sub-datasets, each carefully chosen for maximum impact given its size: SMOL-Sent, a set of sentences chosen for broad unique token coverage, and SMOL-Doc, a document-level source focusing on a broad topic coverage. They join the already released GATITOS for a trifecta of paragraph, sentence, and token-level content. We demonstrate that using SMOL to prompt or fine-tune Large Language Models yields robust ChrF improvements. In addition to translation, we provide factuality ratings and rationales for all documents in SMOL-Doc, yielding the first factuality datasets for most of these languages.