In-Context Transfer Learning: Demonstration Synthesis by Transferring Similar Tasks
In-context learning (ICL) is an effective approach to help large language models (LLMs) adapt to various tasks by providing demonstrations of the target task. Considering the high cost of labeling demonstrations, many methods propose synthesizing demonstrations from scratch using LLMs. However, the...
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Zusammenfassung: | In-context learning (ICL) is an effective approach to help large language
models (LLMs) adapt to various tasks by providing demonstrations of the target
task. Considering the high cost of labeling demonstrations, many methods
propose synthesizing demonstrations from scratch using LLMs. However, the
quality of the demonstrations synthesized from scratch is limited by the
capabilities and knowledge of LLMs. To address this, inspired by transfer
learning, we propose In-Context Transfer Learning (ICTL), which synthesizes
target task demonstrations by transferring labeled demonstrations from similar
source tasks. ICTL consists of two steps: source sampling and target transfer.
First, we define an optimization objective, which minimizes transfer error to
sample source demonstrations similar to the target task. Then, we employ LLMs
to transfer the sampled source demonstrations to the target task, matching the
definition and format of the target task. Experiments on Super-NI show that
ICTL outperforms synthesis from scratch by 2.0% on average, demonstrating the
effectiveness of our method. |
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DOI: | 10.48550/arxiv.2410.01548 |