Paradigm Completion for Derivational Morphology

EMNLP 2017 Ryan CotterellEkaterina VylomovaHuda KhayrallahChristo KirovDavid Yarowsky

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... (read more)

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