2022-11-16
Neural referential form selection: Generalisability and interpretability
2022-11-16 • Guanyi Chen, Fahime Same, Kees van Deemter
In recent years, a range of Neural Referring Expression Generation (REG) systems have been built and they have often achieved encouraging results. However, these models are often thought to lack transparency and generality. Firstly, it is hard to understand what these neural REG models can learn and to compare their performance with existing linguistic theories. Secondly, it is unclear whether they can generalise to data in different text genres and different languages. To answer these questions, we propose to foc…