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In-context Learning Distillation: Transferring Few-shot Learning Ability of Pre-trained Language Models

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arxiv 2212.10670 v1 pith:BF353SZE submitted 2022-12-20 cs.CL cs.LG

In-context Learning Distillation: Transferring Few-shot Learning Ability of Pre-trained Language Models

classification cs.CL cs.LG
keywords in-contextlearningobjectiveslanguagemodelsfew-shotmultitask-ictability
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Given the success with in-context learning of large pre-trained language models, we introduce in-context learning distillation to transfer in-context few-shot learning ability from large models to smaller models. We propose to combine in-context learning objectives with language modeling objectives to distill both the ability to read in-context examples and task knowledge to the smaller models. We perform in-context learning distillation under two different few-shot learning paradigms: Meta In-context Tuning (Meta-ICT) and Multitask In-context Tuning (Multitask-ICT). Multitask-ICT performs better on multitask few-shot learning but also requires more computation than Meta-ICT. Our method shows consistent improvements for both Meta-ICT and Multitask-ICT on two benchmarks: LAMA and CrossFit. Our extensive experiments and analysis reveal that in-context learning objectives and language modeling objectives are complementary under the Multitask-ICT paradigm. In-context learning objectives achieve the best performance when combined with language modeling objectives.

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