Paradigm Completion for Derivational Morphology
Computation and Language
2025-02-18 v3
Abstract
The generation of complex derived word forms has been an overlooked problem in NLP; we fill this gap by applying neural sequence-to-sequence models to the task. We overview the theoretical motivation for a paradigmatic treatment of derivational morphology, and introduce the task of derivational paradigm completion as a parallel to inflectional paradigm completion. State-of-the-art neural models, adapted from the inflection task, are able to learn a range of derivation patterns, and outperform a non-neural baseline by 16.4%. However, due to semantic, historical, and lexical considerations involved in derivational morphology, future work will be needed to achieve performance parity with inflection-generating systems.
Cite
@article{arxiv.1708.09151,
title = {Paradigm Completion for Derivational Morphology},
author = {Ryan Cotterell and Ekaterina Vylomova and Huda Khayrallah and Christo Kirov and David Yarowsky},
journal= {arXiv preprint arXiv:1708.09151},
year = {2025}
}
Comments
EMNLP 2017