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Morphology Matters: A Multilingual Language Modeling Analysis

Hyunji Hayley Park, Katherine J. Zhang, Coleman Haley, Kenneth Steimel, Han Liu, Lane Schwartz

2021Transactions of the Association for Computational Linguistics13 citationsDOIOpen Access PDF

Abstract

Abstract Prior studies in multilingual language modeling (e.g., Cotterell et al., 2018; Mielke et al., 2019) disagree on whether or not inflectional morphology makes languages harder to model. We attempt to resolve the disagreement and extend those studies. We compile a larger corpus of 145 Bible translations in 92 languages and a larger number of typological features.1 We fill in missing typological data for several languages and consider corpus-based measures of morphological complexity in addition to expert-produced typological features. We find that several morphological measures are significantly associated with higher surprisal when LSTM models are trained with BPE-segmented data. We also investigate linguistically motivated subword segmentation strategies like Morfessor and Finite-State Transducers (FSTs) and find that these segmentation strategies yield better performance and reduce the impact of a language’s morphology on language modeling.

Topics & Concepts

Computer scienceNatural language processingArtificial intelligenceLanguage modelMorphology (biology)SegmentationLinguisticsConstructed languageNatural languageCompilerTypologyParallel corporaMorphemeVariety (cybernetics)Natural Language Processing TechniquesTopic ModelingText Readability and Simplification
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