AI RESEARCH
Similarity Choice and Negative Scaling in Supervised Contrastive Learning for Deepfake Audio Detection
arXiv CS.LG
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ArXi:2604.26057v1 Announce Type: cross Supervised contrastive learning (SupCon) is widely used to shape representations, but has seen limited targeted study for audio deepfake detection. Existing work typically combines contrastive terms with broader pipelines; however, the focus on SupCon itself is missing. In this work, we run a controlled study on wav2vec2 XLS-R (300M) that varies (i) similarity in SupCon (cosine vs angular similarity derived from the hyperspherical angle) and (ii) negative scaling using a warm-started global cross-batch queue.