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Fair-Gate: Fairness-Aware Interpretable Risk Gating for Sex-Fair Voice Biometrics

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Voice biometric systems can exhibit sex-related performance gaps even when overall verification accuracy is strong. We attribute these gaps to two practical mechanisms: (i) demographic shortcut learning, where speaker classification training exploits spurious correlations between sex and speaker identity, and (ii) feature entanglement, where sex-linked acoustic variation overlaps with identity cues and cannot be removed without degrading speaker discrimination. We propose Fair-Gate, a fairness-aware and interpretable risk-gating framework that addresses both mechanisms in a single pipeline. Fair-Gate applies risk extrapolation to reduce variation in speaker-classification risk across proxy sex groups, and introduces a local complementary gate that routes intermediate features into an identity branch and a sex branch. The gate provides interpretability by producing an explicit routing mask that can be inspected to understand which features are allocated to identity versus sex-related pathways. Experiments on VoxCeleb1 show that Fair-Gate improves the utility--fairness trade-off, yielding more sex-fair ASV performance under challenging evaluation conditions.

Yangyang Qu, Massimiliano Todisco, Chiara Galdi, Nicholas Evans• 2026

Related benchmarks

TaskDatasetResultRank
Speaker VerificationVoxCeleb1 (Vox1-O)
EER0.92
105
Speaker VerificationVoxCeleb1 extended
EER1.11
17
Speaker VerificationVoxCeleb1 hard (H)
EER2.25
17
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