SIEVE enables sample-efficient parametric learning from natural language by decomposing context for higher-quality synthetic rollouts and distillation, outperforming prior methods with only three query examples.
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SIEVE: Sample-Efficient Parametric Learning from Natural Language
SIEVE enables sample-efficient parametric learning from natural language by decomposing context for higher-quality synthetic rollouts and distillation, outperforming prior methods with only three query examples.