AI4Code
Srikanth Tamilselvam, Dinesh Khandelwal, et al.
ACML 2022
Pretrained language models have shown success in various areas of natural language processing, including reading comprehension tasks. However, when applying machine learning methods to new domains, labeled data may not always be available. To address this, we use supervised pretraining on source-domain data to reduce sample complexity on domain-specific downstream tasks. We evaluate zero-shot performance on domain-specific reading comprehension tasks by combining task transfer with domain adaptation to fine-tune a pretrained model with no labelled data from the target task. Our approach outperforms Domain-Adaptive Pretraining on downstream domain-specific reading comprehension tasks in 3 out of 4 domains.
Srikanth Tamilselvam, Dinesh Khandelwal, et al.
ACML 2022
Eduardo Almeida Soares, Victor Shirasuna, et al.
ACS Fall 2024
Conrad Albrecht, Jannik Schneider, et al.
CVPR 2025
Andrew Rouditchenko, Angie Boggust, et al.
INTERSPEECH 2021