Availability-Based Production Predicts Speakers' Real-time Choices of Mandarin Classifiers
Meilin Zhan, Roger Levy

TL;DR
This study investigates how the predictability of upcoming nouns influences Mandarin speakers' choice of classifiers, supporting the idea that availability in production affects real-time linguistic decisions.
Contribution
It provides empirical evidence that availability-based production constraints influence classifier choices in Mandarin during real-time speech.
Findings
Speakers prefer using the general classifier when upcoming nouns are less predictable.
Classifier choice aligns with availability-based production models rather than purely informational density.
Experiment results support the role of production constraints in linguistic variation.
Abstract
Speakers often face choices as to how to structure their intended message into an utterance. Here we investigate the influence of contextual predictability on the encoding of linguistic content manifested by speaker choice in a classifier language. In English, a numeral modifies a noun directly (e.g., three computers). In classifier languages such as Mandarin Chinese, it is obligatory to use a classifier (CL) with the numeral and the noun (e.g., three CL.machinery computer, three CL.general computer). While different nouns are compatible with different specific classifiers, there is a general classifier "ge" (CL.general) that can be used with most nouns. When the upcoming noun is less predictable, the use of a more specific classifier would reduce surprisal at the noun thus potentially facilitate comprehension (predicted by Uniform Information Density, Levy & Jaeger, 2007), but the use…
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Taxonomy
TopicsSyntax, Semantics, Linguistic Variation · Language and cultural evolution · Natural Language Processing Techniques
