Saved in:
Bibliographic Details
Main Authors: Osakuade, Opeyemi, King, Simon
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.07467
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910113818738688
author Osakuade, Opeyemi
King, Simon
author_facet Osakuade, Opeyemi
King, Simon
contents Discrete speech units (DSUs) are derived by quantising representations from models trained using self-supervised learning (SSL). They are a popular representation for a wide variety of spoken language tasks, including those where prosody matters. DSUs are especially convenient for tasks where text and speech are jointly modelled, such as text-to-speech and multimodal dialogue systems. But we have found that DSUs encode suprasegmental information less reliably than segmental structure, which we demonstrate in this work using lexical tone, though this limitation likely extends to other suprasegmental features such as prosody. Our investigations using the tone languages Mandarin and Yorùbá show that the SSL latent representations themselves do encode tone, yet DSUs obtained using quantisation tend to prioritise phonetic structure, which makes lexical tone less reliably encoded. This remains true for a variety of quantisation methods, not only the most common, K-means. We conclude that current DSU quantisation strategies have limitations for suprasegmental features, which suggests a need for new, tone-aware (or prosody-aware) techniques in speech representation learning. We point towards a potential form of the solution by performing K-means clustering once to encode phonetic information, then again on the residual representation, which better encodes lexical tone.
format Preprint
id arxiv_https___arxiv_org_abs_2604_07467
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Lexical Tone is Hard to Quantize: Probing Discrete Speech Units in Mandarin and Yorùbá
Osakuade, Opeyemi
King, Simon
Computation and Language
Machine Learning
Discrete speech units (DSUs) are derived by quantising representations from models trained using self-supervised learning (SSL). They are a popular representation for a wide variety of spoken language tasks, including those where prosody matters. DSUs are especially convenient for tasks where text and speech are jointly modelled, such as text-to-speech and multimodal dialogue systems. But we have found that DSUs encode suprasegmental information less reliably than segmental structure, which we demonstrate in this work using lexical tone, though this limitation likely extends to other suprasegmental features such as prosody. Our investigations using the tone languages Mandarin and Yorùbá show that the SSL latent representations themselves do encode tone, yet DSUs obtained using quantisation tend to prioritise phonetic structure, which makes lexical tone less reliably encoded. This remains true for a variety of quantisation methods, not only the most common, K-means. We conclude that current DSU quantisation strategies have limitations for suprasegmental features, which suggests a need for new, tone-aware (or prosody-aware) techniques in speech representation learning. We point towards a potential form of the solution by performing K-means clustering once to encode phonetic information, then again on the residual representation, which better encodes lexical tone.
title Lexical Tone is Hard to Quantize: Probing Discrete Speech Units in Mandarin and Yorùbá
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2604.07467