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Revisiting $(\epsilon, \gamma, \tau)$-similarity learning for domain adaptation

Sofiane Dhouib, Ievgen Redko

Nov-20-2025, 17:33:10 GMT–Neural Information Processing Systems 

The author was at CREATIS when this work was done.

  artificial intelligence, machine learning, similarity function, (14 more...)

Neural Information Processing Systems

Nov-20-2025, 17:33:10 GMT

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  • Genre:
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