Award Winners are announced!
Damith Dola Mullage Premasiri, Tharindu Ranasinghe, Wajdi Zaghouani and Ruslan Mitkov. DTW at Qur’an QA 2022: Utilising Transfer Learning with Transformers for Question Answering in a Low-resource Domain.
Esha Aftab and Muhammad Kamran Malik. eRock at Qur’an QA 2022: Contemporary Deep Neural Networks for Qur’an based Reading Comprehension Question Answers.
Ali Mostafa and Omar Mohamed. GOF at Qur'an QA 2022: Towards an Efficient Question Answering For The Holy Qu'ran In The Arabic Language Using Deep Learning-Based Approach.
Youssef MELLAH, Ibtissam Touahri, Zakaria Kaddari, Zakaria Haja, Jamal Berrich and Toumi Bouchentouf. LARSA22 at Qur’an QA 2022: Text-to-Text Transformer for Finding Answers to Questions from Qur’an.
Abdullah Alsaleh, Saud Althabiti, Ibtisam K. Alshammari, Sarah Alnefaie, Sanaa Alowaidi, Alaa Fahad Alsaqer, Eric Atwell, Abdulrahman Altahhan and Mohammad Ammar Alsalka. LK2022 at Qur'an QA 2022: Simple Transformers Model for Finding Answers to Questions from Qur'an.
Nikhil Singh. niksss at Qur'an QA 2022: A Heavily Optimized BERT Based Model for Answering Questions from the Holy Qu'ran.
Basem H.A. Ahmed, Motaz Saad and Eshrag A. Refaee. QQATeam at Qur’an QA 2022: Fine-Tunning Arabic QA Models for Qur’an QA Task.
Amr Keleg and Walid Magdy. SMASH at Qur’an QA 2022: Creating Better Faithful Data Splits for Low-resourced Question Answering Scenarios.
Ahmed Wasfey Sleem, Eman Mohammed lotfy Elrefai, Marwa Mohammed Matar and Haq Nawaz. Stars at Qur'an QA 2022: Building Automatic Extractive Question Answering Systems for the Holy Qur'an with Transformer Models and Releasing a New Dataset.
Mohamemd Alaa Elkomy and Amany M. Sarhan. TCE at Qur'an QA 2022: Arabic Language Question Answering Over Holy Qur'an Using a Post-Processed Ensemble of BERT-based Models.