| Literature DB >> 29265549 |
Sami Virpioja1, Minna Lehtonen2,3, Annika Hultén4, Henna Kivikari4, Riitta Salmelin4, Krista Lagus5,6.
Abstract
Determining optimal units of representing morphologically complex words in the mental lexicon is a central question in psycholinguistics. Here, we utilize advances in computational sciences to study human morphological processing using statistical models of morphology, particularly the unsupervised Morfessor model that works on the principle of optimization. The aim was to see what kind of model structure corresponds best to human word recognition costs for multimorphemic Finnish nouns: a model incorporating units resembling linguistically defined morphemes, a whole-word model, or a model that seeks for an optimal balance between these two extremes. Our results showed that human word recognition was predicted best by a combination of two models: a model that decomposes words at some morpheme boundaries while keeping others unsegmented and a whole-word model. The results support dual-route models that assume that both decomposed and full-form representations are utilized to optimally process complex words within the mental lexicon.Entities:
Keywords: Lexical decision; Mental lexicon; Minimum Description Length principle; Morphology; Psycholinguistics; Statistical language modeling; Unsupervised learning; Word recognition
Mesh:
Year: 2017 PMID: 29265549 DOI: 10.1111/cogs.12576
Source DB: PubMed Journal: Cogn Sci ISSN: 0364-0213