EMNLP 2025

November 05, 2025

Suzhou, China

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We introduce VoiceBBQ, a spoken extension of the BBQ benchmark that disentangles bias along two orthogonal axes: content and acoustic. The dataset converts every BBQ context into controlled voice conditions, enabling per-axis accuracy, bias, and consistency scores that remain comparable to the original text benchmark. Using Voice BBQ, we evaluate two SLMs—LLaMA-Omni and Qwen2-Audio—and observe sharp architectural contrasts: LLaMA-Omni retains strong acoustic sensitivity, amplifying gender and accent bias, whereas Qwen2-Audio substantially dampens these cues while preserving content fidelity. Voice BBQ thus provides a compact, drop-in testbed for jointly diagnosing textual and acoustic bias across spoken language models.

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