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Exploring Lottery Prompts for Pre-trained Language Models

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arxiv 2305.19500 v1 pith:FNLBBUUA submitted 2023-05-31 cs.CL

Exploring Lottery Prompts for Pre-trained Language Models

classification cs.CL
keywords promptlotterypromptslanguagemethodmodelsperformanceplms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Consistently scaling pre-trained language models (PLMs) imposes substantial burdens on model adaptation, necessitating more efficient alternatives to conventional fine-tuning. Given the advantage of prompting in the zero-shot setting and the observed performance fluctuation among different prompts, we explore the instance-level prompt and their generalizability. By searching through the prompt space, we first validate the assumption that for every instance, there is almost always a lottery prompt that induces the correct prediction from the PLM, and such prompt can be obtained at a low cost thanks to the inherent ability of PLMs. Meanwhile, we find that some strong lottery prompts have high performance over the whole training set, and they are equipped with distinguishable linguistic features. Lastly, we attempt to generalize the searched strong lottery prompts to unseen data with prompt ensembling method without any parameter tuning. Experiments are conducted on various types of NLP classification tasks and demonstrate that the proposed method can achieve comparable results with other gradient-free and optimization-free baselines.

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