DS1 spectrogram: Using embeddings to predict spoken word duration and pitch in Mandarin monosyllabic words

Using embeddings to predict spoken word duration and pitch in Mandarin monosyllabic words

2607.02002

Authors

Xiaoyun Jin,Mirjam Ernestus,R. Harald Baayen

Abstract

Time-normalized f0 contours of Mandarin words in conversational speech have been shown to be predictable in part from their contextualized embeddings (CEs). The present study investigates whether CEs also predict spoken word duration for 7470 tokens of Mandarin monosyllabic CV words extracted from a Mandarin corpus of spontaneous speech.

We show that CEs indeed are predictive for duration, above chance level, not only at the type level, but also at the level of individual tokens, as indicated by the results obtained with the type-wise and token-wise permutation baselines. We also show that the predicted durations are sufficiently precise to back-transform predicted f0 contours in [0,1] normalized time to contours on the ms time scale.

The resulting predicted contours approximate empirical contours and also outperform a permutation baseline.

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