This study explores the impact of various layers of the XLS-R encoder on speaker recognition accuracy using CNNs and logistic regression. Findings indicate that earlier layers yield higher accuracy, highlighting their importance in feature capture. The study also reveals a significant gender disparity in accuracy. These results suggest the need for further investigation into model biases and optimizations.
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Investigating Layer-Specific Performance in Speaker Recognition with XLS-R Architecture
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