A corpus-based investigation of pitch contours of monosyllabic words in conversational Taiwan Mandarin
Xiaoyun Jin, Mirjam Ernestus, and R. Harald Baayen

TL;DR
This study investigates how spontaneous conversational Taiwan Mandarin alters canonical pitch contours of monosyllabic words, revealing significant effects of tonal context and word meaning on pitch realization through corpus analysis.
Contribution
It provides a corpus-based analysis of spontaneous Mandarin pitch contours, highlighting the influence of tonal context and word sense on tonal realization, using advanced statistical modeling.
Findings
Tonal context significantly modifies canonical tones.
T2 and T3 appear as low flat tones in spontaneous speech.
Word sense co-determines pitch contours, affecting tonal realization.
Abstract
In Mandarin, the tonal contours of monosyllabic words produced in isolation or in careful speech are characterized by four lexical tones: a high-level tone (T1), a rising tone (T2), a dipping tone (T3) and a falling tone (T4). However, in spontaneous speech, the actual tonal realization of monosyllabic words can deviate significantly from these canonical tones due to intra-syllabic co-articulation and inter-syllabic co-articulation with adjacent tones. In addition, Chuang et al. (2024) recently reported that the tonal contours of disyllabic Mandarin words with T2-T4 tone pattern are co-determined by their meanings. Following up on their research, we present a corpus-based investigation of how the pitch contours of monosyllabic words are realized in spontaneous conversational Mandarin, focusing on the effects of contextual predictors on the one hand, and the way in words' meanings…
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Taxonomy
TopicsCategorization, perception, and language
MethodsSparse Evolutionary Training
