Towards More Robust Natural Language Understanding
Xinliang Frederick Zhang

TL;DR
This paper emphasizes the importance of robustness in NLU systems, highlighting the need for improved models and datasets to handle out-of-domain and challenging language items more effectively, aiming for human-like understanding.
Contribution
The paper introduces novel models and datasets specifically designed to enhance the robustness of NLU systems across various tasks.
Findings
Proposed models improve out-of-domain performance.
New datasets help evaluate robustness against challenging items.
Robust NLU models transfer knowledge more reliably.
Abstract
Natural Language Understanding (NLU) is a branch of Natural Language Processing (NLP) that uses intelligent computer software to understand texts that encode human knowledge. Recent years have witnessed notable progress across various NLU tasks with deep learning techniques, especially with pretrained language models. Besides proposing more advanced model architectures, constructing more reliable and trustworthy datasets also plays a huge role in improving NLU systems, without which it would be impossible to train a decent NLU model. It's worth noting that the human ability of understanding natural language is flexible and robust. On the contrary, most of existing NLU systems fail to achieve desirable performance on out-of-domain data or struggle on handling challenging items (e.g., inherently ambiguous items, adversarial items) in the real world. Therefore, in order to have NLU models…
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Taxonomy
TopicsNatural Language Processing Techniques
