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arxiv:2604.17248

VIBE: Voice-Induced open-ended Bias Evaluation for Large Audio-Language Models via Real-World Speech

Published on Jul 3
· Submitted by
Yi-Cheng Lin
on Jul 8
Authors:
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Abstract

Large Audio-Language Models exhibit systematic generative biases in realistic scenarios when evaluated through open-ended tasks using human-recorded speech, with bias magnitude varying significantly by task and triggered by gender and accent cues.

Large Audio-Language Models (LALMs) are increasingly integrated into daily applications, yet their generative biases remain underexplored. Existing speech fairness benchmarks rely on synthetic speech and Multiple-Choice Questions (MCQs), both offering a fragmented view of fairness. We propose VIBE, a framework that evaluates generative bias through open-ended tasks such as personalized recommendations, using human-recorded speech. Unlike MCQs, our method allows stereotypical associations to manifest organically without predefined options, making it easily extensible to new tasks. Evaluating 12 state-of-the-art LALMs reveals systematic biases in realistic scenarios. Both gender and accent cues trigger statistically significant distributional shifts, and bias magnitude is strongly task-dependent.

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Open-ended bias evaluation for LALM.

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