Investigating the Utility of Surprisal from Large Language Models for Speech Synthesis Prosody

Research output: Chapter in Book/Report/Conference proceedingConference contributionProfessional

Abstract

This paper investigates the use of word surprisal, a measure of the predictability of a word in a given context, as a feature to aid speech synthesis prosody. We explore how word surprisal extracted from large language models (LLMs) correlates with word prominence, a signal-based measure of the salience of a word in a given discourse. We also examine how context length and LLM size affect the results, and how a speech synthesizer conditioned with surprisal values compares with a baseline system. To evaluate these factors, we conducted experiments using a large corpus of English text and LLMs of varying sizes. Our results show that word surprisal and word prominence are moderately correlated, suggesting that they capture related but distinct aspects of language use. We find that length of context and size of the LLM impact the correlations, but not in the direction anticipated, with longer contexts and larger LLMs generally underpredicting prominent words in a nearly linear manner. We demonstrate that, in line with these findings, a speech synthesizer conditioned with surprisal values provides a minimal improvement over the baseline with the results suggesting a limited effect of using surprisal values for eliciting appropriate prominence patterns.
Original languageEnglish
Title of host publicationProceedings of the 12th ISCA Speech Synthesis Workshop (SSW)
EditorsThomas Hueber, Damien Lolive, Nicolas Obin, Olivier Perrotin
Number of pages7
Place of PublicationBaixas
PublisherISCA - International Speech Communication Association
Publication dateAug 2023
Pages127-133
DOIs
Publication statusPublished - Aug 2023
MoE publication typeD3 Professional conference proceedings
EventSpeech Synthesis Workshop - MaCI (« Maison de la Création et de l’Innovation »), Grenoble, France
Duration: 26 Aug 202328 Aug 2023
Conference number: 12
https://ssw2023.org/

Fields of Science

  • 213 Electronic, automation and communications engineering, electronics
  • 113 Computer and information sciences
  • 6121 Languages

Cite this