RESEARCHarXiv CS.LG·4/13/2026
Silhouette Loss: Differentiable Global Structure Learning for Deep Representations
This paper introduces Soft Silhouette Loss, a novel differentiable objective for deep learning, inspired by the classical silhouette coefficient. It aims to learn discriminative representations by enforcing intra-class compactness and inter-class separation more efficiently than existing metric learning approaches.
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