MTL for dual-output L2 ASR degrades surface transcription due to encoder-level representational entanglement, with stronger effects in English linked to surface-meaning divergence.
Unifying Diarization, Separation, and ASR with Multi-Speaker Encoder
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abstract
This paper presents a unified multi-speaker encoder (UME), a novel architecture that jointly learns representations for speaker diarization (SD), speech separation (SS), and multi-speaker automatic speech recognition (ASR) tasks using a shared speech foundational encoder. We leverage the hidden representations from multiple layers of UME as a residual weighted-sum encoding (RWSE) to effectively use information from different semantic levels, contributing to bottom-up alignment between tasks. This joint training approach captures the inherent interdependencies among the tasks, enhancing overall performance on overlapping speech data. Our evaluations demonstrate that UME substantially improves over the single-task baselines dedicated to SD, SS, and multi-speaker ASR on LibriMix evaluation sets. Notably, for SD, UME outperforms the previous studies, achieving diarization error rates of 1.37% and 2.29% on Libri2Mix and Libri3Mix evaluation sets, respectively.
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cs.CL 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Multi-task Learning is Not Enough: Representational Entanglement in Dual-output Second Language Speech Recognition
MTL for dual-output L2 ASR degrades surface transcription due to encoder-level representational entanglement, with stronger effects in English linked to surface-meaning divergence.