SLURP-TN : Resource for Tunisian Dialect Spoken Language Understanding
arXiv cs.CL / 3/24/2026
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Key Points
- The paper introduces SLURP-TN, a Tunisian Arabic dialect spoken-language understanding dataset aimed at enabling semantic extraction from user speech for task-oriented dialogue systems.
- The dataset was created by recording 55 native speakers and includes 4,165 manually translated sentences covering six SLURP domains, totaling about 5 hours of acoustic audio.
- Alongside the dataset release, the authors provide baseline models and develop both Automatic Speech Recognition (ASR) and SLU systems that leverage SLURP-TN.
- SLURP-TN and the baseline models are made available on Hugging Face, lowering the barrier for researchers to build and evaluate Tunisian-dialect SLU/ASR.
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