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Main Authors: Russell, Sam OConnor, Charuau, Delphine, Harte, Naomi
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.13835
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author Russell, Sam OConnor
Charuau, Delphine
Harte, Naomi
author_facet Russell, Sam OConnor
Charuau, Delphine
Harte, Naomi
contents Fluid turn-taking remains a key challenge in human-robot interaction. Self-supervised speech representations (S3Rs) have driven many advances, but it remains unclear whether S3R-based turn-taking models rely on prosodic cues, lexical cues or both. We introduce a vocoder-based approach to control prosody and lexical cues in speech more cleanly than prior work. This allows us to probe the voice-activity projection model, an S3R-based turn-taking model. We find that prediction on prosody-matched, unintelligible noise is similar to accuracy on clean speech. This reveals both prosodic and lexical cues support turn-taking, but either can be used in isolation. Hence, future models may only require prosody, providing privacy and potential performance benefits. When either prosodic or lexical information is disrupted, the model exploits the other without further training, indicating they are encoded in S3Rs with limited interdependence. Results are consistent in CPC-based and wav2vec2.0 S3Rs. We discuss our findings and highlight a number of directions for future work. All code is available to support future research.
format Preprint
id arxiv_https___arxiv_org_abs_2601_13835
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publishDate 2026
record_format arxiv
spellingShingle The Role of Prosodic and Lexical Cues in Turn-Taking with Self-Supervised Speech Representations
Russell, Sam OConnor
Charuau, Delphine
Harte, Naomi
Computation and Language
Fluid turn-taking remains a key challenge in human-robot interaction. Self-supervised speech representations (S3Rs) have driven many advances, but it remains unclear whether S3R-based turn-taking models rely on prosodic cues, lexical cues or both. We introduce a vocoder-based approach to control prosody and lexical cues in speech more cleanly than prior work. This allows us to probe the voice-activity projection model, an S3R-based turn-taking model. We find that prediction on prosody-matched, unintelligible noise is similar to accuracy on clean speech. This reveals both prosodic and lexical cues support turn-taking, but either can be used in isolation. Hence, future models may only require prosody, providing privacy and potential performance benefits. When either prosodic or lexical information is disrupted, the model exploits the other without further training, indicating they are encoded in S3Rs with limited interdependence. Results are consistent in CPC-based and wav2vec2.0 S3Rs. We discuss our findings and highlight a number of directions for future work. All code is available to support future research.
title The Role of Prosodic and Lexical Cues in Turn-Taking with Self-Supervised Speech Representations
topic Computation and Language
url https://arxiv.org/abs/2601.13835