A Quantifier-Based Approach to NPI-Licensing Typology: Empirical and Computational Investigations

This thesis examines the quantifier-based approach to NPI-licensing (as proposed in (Giannakidou, 2000)) from empirical and computational perspectives. This approach argues that all NPIs can be categorized as either existentially or universally quantified items, and that this difference drives cross...

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Bibliographic Details
Main Author Vu, Mai Ha
Format Dissertation
LanguageEnglish
Published ProQuest Dissertations & Theses 01.01.2020
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Summary:This thesis examines the quantifier-based approach to NPI-licensing (as proposed in (Giannakidou, 2000)) from empirical and computational perspectives. This approach argues that all NPIs can be categorized as either existentially or universally quantified items, and that this difference drives cross-linguistically divergent NPI-behaviors. After providing the necessary background and assumptions, in the first half of the thesis I show that English any-NPIs are existentially quantified, whereas Hungarian se-NPIs are universally quantified. I also demonstrate how this approach can help understand the behavior of NPIs in other languages and language families such as Slavic, Mandarin Chinese, Turkish, and Romance languages. In the second half of the thesis, I analyze the quantifier-based NPI-licensing constraints for computational complexity. I find that except for the constraints that rely on derived c-command, all other constraints can be described with Input-local Tier-based Strictly Local (I-TSL) or Multiple Input-local Tier-based Strictly Local (MITSL) restrictions, which means that tree-languages that satisfy NPI-licensing constraints for the most part fit into a fairly restrictive subregular class of tree-languages. Taken together, this thesis argues that a theoretically informed approach to linguistic phenomena can significantly affect results on their computational complexity.
ISBN:9798672162164