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Experiments in Cross-domain Few-shot Learning for Image Classification: Extended Abstract.

, , , , , , и . Meta-Knowledge Transfer @ ECML/PKDD, том 191 из Proceedings of Machine Learning Research, стр. 81-83. PMLR, (2022)

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