ACL2024
Resisting the Lure of the Skyline: Grounding Practices in Active Learning for Morphological Inflection
Saliha Muradoglu, Michael Ginn, Miikka Silfverberg, Mans Hulden
摘要
Active learning (AL) aims to reduce the burden of annotation by selecting informative unannotated samples for model building. In this paper, we explore the importance of conscious experimental design in the language documentation and description setting, particularly the distribution of the unannotated sample pool. We focus on the task of morphological inflection using a Transformer model. We propose context motivated benchmarks: a baseline and skyline. The baseline describes the frequency weighted distribution encountered in natural speech. We simulate this using Wikipedia texts. The skyline defines the more common approach, uniform sampling from a large, balanced corpus (UniMorph, in our case), which often yields mixed results. We note the unrealistic nature of this unannotated pool. When these factors are considered, our results show a clear benefit to targeted sampling.