A sharp tension exists about the nature of human language between two opposite parties: those who believe that statistical surface distributions, in particular using measures like surprisal, provide a better understanding of language processing, vs. those who believe that discrete hierarchical structures implementing linguistic information such as syntactic ones are a better tool. In this paper, we show that this dichotomy is a false one. Relying on the fact that statistical measures can be defined on the basis of either structural or non-structural models, we provide empirical evidence that onlymodels of surprisal that reflect syntactic structure are able to account for language regularities.

False perspectives on human language : why statistics needs linguistics

Moro, Andrea
2023

Abstract

A sharp tension exists about the nature of human language between two opposite parties: those who believe that statistical surface distributions, in particular using measures like surprisal, provide a better understanding of language processing, vs. those who believe that discrete hierarchical structures implementing linguistic information such as syntactic ones are a better tool. In this paper, we show that this dichotomy is a false one. Relying on the fact that statistical measures can be defined on the basis of either structural or non-structural models, we provide empirical evidence that onlymodels of surprisal that reflect syntactic structure are able to account for language regularities.
2023
Settore GLOT-01/A - Glottologia e linguistica
Syntax; surprisal; brain; electrophysiology; statistics; POS
   Inner speech converter technology
   INSPECT
   MUR
   PRIN2017
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11384/163960
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