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Z-ICL: Zero-Shot In-Context Learning with Pseudo-Demonstrations

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arxiv 2212.09865 v2 pith:CUQ7RMUZ submitted 2022-12-19 cs.CL cs.AI

Z-ICL: Zero-Shot In-Context Learning with Pseudo-Demonstrations

classification cs.CL cs.AI
keywords zero-shotpseudo-demonstrationsz-icllearningcorpusdemonstrationsfew-shotin-context
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Although large language models can be prompted for both zero- and few-shot learning, performance drops significantly when no demonstrations are available. In this paper, we introduce Z-ICL, a new zero-shot method that closes the gap by constructing pseudo-demonstrations for a given test input using a raw text corpus. Concretely, pseudo-demonstrations are constructed by (1) finding the nearest neighbors to the test input from the corpus and pairing them with random task labels, and (2) applying a set of techniques to reduce the amount of direct copying the model does from the resulting demonstrations. Evaluation on nine classification datasets shows that Z-ICL outperforms previous zero-shot methods by a significant margin, and is on par with in-context learning with labeled training data in the few-shot setting. Overall, Z-ICL provides a significantly higher estimate of the zero-shot performance levels of a model, and supports future efforts to develop better pseudo-demonstrations that further improve zero-shot results.

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