Neo Putini


2025

pdf bib
AFRIDOC-MT: Document-level MT Corpus for African Languages
Jesujoba Oluwadara Alabi | Israel Abebe Azime | Miaoran Zhang | Cristina España-Bonet | Rachel Bawden | Dawei Zhu | David Ifeoluwa Adelani | Clement Oyeleke Odoje | Idris Akinade | Iffat Maab | Davis David | Shamsuddeen Hassan Muhammad | Neo Putini | David O. Ademuyiwa | Andrew Caines | Dietrich Klakow
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing

This paper introduces AFRIDOC-MT, a document-level multi-parallel translation dataset covering English and five African languages: Amharic, Hausa, Swahili, Yorùbá, and Zulu. The dataset comprises 334 health and 271 information technology news documents, all human-translated from English to these languages. We conduct document-level translation benchmark experiments by evaluating the ability of neural machine translation (NMT) models and large language models (LLMs) to translate between English and these languages, at both the sentence and pseudo-document levels, the outputs being realigned to form complete documents for evaluation. Our results indicate that NLLB-200 achieves the best average performance among the standard NMT models, while GPT-4o outperforms general-purpose LLMs. Fine-tuning selected models leads to substantial performance gains, but models trained on sentences struggle to generalize effectively to longer documents. Furthermore, our analysis reveals that some LLMs exhibit issues such as under-generation, over-generation, repetition of words and phrases, and off-target translations, specifically for translation into African languages.

2024

pdf bib
Correcting FLORES Evaluation Dataset for Four African Languages
Idris Abdulmumin | Sthembiso Mkhwanazi | Mahlatse Mbooi | Shamsuddeen Hassan Muhammad | Ibrahim Said Ahmad | Neo Putini | Miehleketo Mathebula | Matimba Shingange | Tajuddeen Gwadabe | Vukosi Marivate
Proceedings of the Ninth Conference on Machine Translation

This paper describes the corrections made to the FLORES evaluation (dev and devtest) dataset for four African languages, namely Hausa, Northern Sotho (Sepedi), Xitsonga, and isiZulu. The original dataset, though groundbreaking in its coverage of low-resource languages, exhibited various inconsistencies and inaccuracies in the reviewed languages that could potentially hinder the integrity of the evaluation of downstream tasks in natural language processing (NLP), especially machine translation. Through a meticulous review process by native speakers, several corrections were identified and implemented, improving the dataset’s overall quality and reliability. For each language, we provide a concise summary of the errors encountered and corrected and also present some statistical analysis that measures the difference between the existing and corrected datasets. We believe that our corrections enhance the linguistic accuracy and reliability of the data and, thereby, contribute to a more effective evaluation of NLP tasks involving the four African languages. Finally, we recommend that future translation efforts, particularly in low-resource languages, prioritize the active involvement of native speakers at every stage of the process to ensure linguistic accuracy and cultural relevance.

2023

pdf bib
AfriQA: Cross-lingual Open-Retrieval Question Answering for African Languages
Odunayo Ogundepo | Tajuddeen R. Gwadabe | Clara E. Rivera | Jonathan H. Clark | Sebastian Ruder | David Ifeoluwa Adelani | Bonaventure F. P. Dossou | Abdou Aziz Diop | Claytone Sikasote | Gilles Hacheme | Happy Buzaaba | Ignatius Ezeani | Rooweither Mabuya | Salomey Osei | Chris Emezue | Albert Njoroge Kahira | Shamsuddeen Hassan Muhammad | Akintunde Oladipo | Abraham Toluwase Owodunni | Atnafu Lambebo Tonja | Iyanuoluwa Shode | Akari Asai | Tunde Oluwaseyi Ajayi | Clemencia Siro | Steven Arthur | Mofetoluwa Adeyemi | Orevaoghene Ahia | Anuoluwapo Aremu | Oyinkansola Awosan | Chiamaka Chukwuneke | Bernard Opoku | Awokoya Ayodele | Verrah Otiende | Christine Mwase | Boyd Sinkala | Andre Niyongabo Rubungo | Daniel A. Ajisafe | Emeka Felix Onwuegbuzia | Habib Mbow | Emile Niyomutabazi | Eunice Mukonde | Falalu Ibrahim Lawan | Ibrahim Said Ahmad | Jesujoba O. Alabi | Martin Namukombo | Mbonu Chinedu | Mofya Phiri | Neo Putini | Ndumiso Mngoma | Priscilla A. Amouk | Ruqayya Nasir Iro | Sonia Adhiambo
Findings of the Association for Computational Linguistics: EMNLP 2023

African languages have far less in-language content available digitally, making it challenging for question answering systems to satisfy the information needs of users. Cross-lingual open-retrieval question answering (XOR QA) systems – those that retrieve answer content from other languages while serving people in their native language—offer a means of filling this gap. To this end, we create Our Dataset, the first cross-lingual QA dataset with a focus on African languages. Our Dataset includes 12,000+ XOR QA examples across 10 African languages. While previous datasets have focused primarily on languages where cross-lingual QA augments coverage from the target language, Our Dataset focuses on languages where cross-lingual answer content is the only high-coverage source of answer content. Because of this, we argue that African languages are one of the most important and realistic use cases for XOR QA. Our experiments demonstrate the poor performance of automatic translation and multilingual retrieval methods. Overall, Our Dataset proves challenging for state-of-the-art QA models. We hope that the dataset enables the development of more equitable QA technology.