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PRiSM: Benchmarking Phone Realization in Speech Models

PRiSM benchmark evaluates phonetic perception in speech models through standardized transcription-based metrics and downstream applications across clinical, educational, and multilingual domains.

Year
2026
Venue
arXiv 2026
Authors
16
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2601.14046ARXIV-DEFAULT
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Abstract

Phone recognition (PR) serves as the atomic interface for language-agnostic modeling for cross-lingual speech processing and phonetic analysis. Despite prolonged efforts in developing PR systems, current evaluations only measure surface-level transcription accuracy. We introduce PRiSM, the first open-source benchmark designed to expose blind spots in phonetic perception through intrinsic and extrinsic evaluation of PR systems. PRiSM standardizes transcription-based evaluation and assesses downstream utility in clinical, educational, and multilingual settings with transcription and representation probes. We find that diverse language exposure during training is key to PR performance, encoder-CTC models are the most stable, and specialized PR models still outperform Large Audio Language Models. PRiSM releases code, recipes, and datasets to move the field toward multilingual speech models with robust phonetic ability: https://github.com/changelinglab/prism.

Authors

16