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Afri-MCQA: Multimodal Cultural Question Answering for African Languages

Overview

Afri-MCQA is the first multilingual cultural question-answering benchmark covering 8k Q&A pairs across 16 African languages from 13 countries. The benchmark offers parallel English-African language Q&A pairs across text and speech modalities, entirely created by native speakers.

Supported Tasks

  • Visual Question Answering (VQA): Multiple-choice and open-ended QA grounded in culturally relevant images
  • Visual Audio Question Answering: Speech-based QA grounded in culturally relevant images in native African languages and African-accented English
  • Language Identification (LID): Identifying which of the 15 languages is spoken
  • Automatic Speech Recognition (ASR): Transcribing spoken African language audio

Languages

Language - Country Language Family Region
Akan/Twi - Ghana Niger-Congo / Volta-Niger West
Amharic - Ethiopia Afro-Asiatic / Ethio-Semitic East
Chichewa - Malawi Niger-Congo / Bantu South & East
Hausa - Nigeria Afro-Asiatic / Chadic West
Igbo - Nigeria Niger-Congo / Volta-Niger West
Kikuyu - Kenya Niger-Congo / Bantu East
Kinyarwanda - Rwanda Niger-Congo / Bantu East
Lingala - DRC Niger–Congo/ Bantu Central Africa
Luganda - Uganda Niger-Congo / Bantu East
Oromo - Ethiopia Afro-Asiatic / Cushitic East
Setswana - Botswana Niger-Congo / Bantu South
Somali - Somalia Afro-Asiatic / Cushitic East
Tigrinya - Eritrea Afro-Asiatic / Ethio-Semitic East
Yoruba - Nigeria Niger-Congo / Volta-Niger West
Sesotho - Lesotho Niger-Congo / Bantu South
Zulu - South Africa Niger-Congo / Bantu South

Total speaker population: ~412.6 million

Dataset Structure

Each sample includes:

  • image: Culturally relevant image
  • question_english / question_native: Question in both languages
  • options_english / options_native: Four multiple-choice options
  • answer: Correct answer
  • audio_question_english / audio_question_native: Audio recordings
  • category: One of 10 cultural categories
  • country / language: Origin metadata

Cultural Categories

🏛️ Geography & Landmarks | 👤 Public Figures & Pop Culture | 🍲 Cooking & Food | 👕 Objects & Clothing | 🎭 Traditions & History | 🏢 Brands & Companies | 🌿 Plants & Animals | 👨‍👩‍👧 People & Everyday Life | 🚗 Vehicles & Transportation | ⚽ Sports & Recreation

Licensing

This dataset is released under CC-BY-NC-4.0.

Usage

from datasets import load_dataset

# Load the dataset
dataset = load_dataset("Atnafu/Afri-MCQA")

# Access a sample
sample = dataset['test'][0]
print(f"Question (English): {sample['question_english']}")
print(f"Question (Native): {sample['question_native']}")
print(f"Options: {sample['options_english']}")
print(f"Answer: {sample['answer']}")

Citation

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