Masking and Demasking Agents
Aggregates Classification
Stereotype Content Model
Force Classification
Improving Translational Accuracy
Observational Learning
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Masked Embedding Modeling for Few-Shot Learning (MEM-FS) enhances few-shot classification accuracy, especially in out-of-domain scenarios. This self-supervised generative technique, combined with Rapid Domain Adjustment (RDA), improves performance on small, limited datasets.
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