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Prompt-Augmented Linear Probing: Scaling beyond the Limit of Few-Shot In-Context Learners

Authors
Cho, HyunsooKim, Hyuhng JoonKim, JunyeobLee, Sang-WooLee, Sang-gooYoo, Kang MinKim, Tae Uk
Issue Date
Jun-2023
Publisher
Association for the Advancement of Artificial Intelligence
Keywords
SNLP; Language Models, SNLP; Text Classification
Citation
AAAI Conference on Artificial Intelligence, v.37, no.11, pp.12709 - 12716
Indexed
SCOPUS
Journal Title
AAAI Conference on Artificial Intelligence
Volume
37
Number
11
Start Page
12709
End Page
12716
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/190393
DOI
10.1609/aaai.v37i11.26495
ISSN
2159-5399
Abstract
Through in-context learning (ICL), large-scale language models are effective few-shot learners without additional model fine-tuning. However, the ICL performance does not scale well with the number of available training samples as it is limited by the inherent input length constraint of the underlying language model. Meanwhile, many studies have revealed that language models are also powerful feature extractors, allowing them to be utilized in a black-box manner and enabling the linear probing paradigm, where lightweight discriminators are trained on top of the pre-extracted input representations. This paper proposes prompt-augmented linear probing (PALP), a hybrid of linear probing and ICL, which leverages the best of both worlds. PALP inherits the scalability of linear probing and the capability of enforcing language models to derive more meaningful representations via tailoring input into a more conceivable form. Throughout in-depth investigations on various datasets, we verified that PALP significantly enhances the input representations closing the gap between ICL in the data-hungry scenario and fine-tuning in the data-abundant scenario with little training overhead, potentially making PALP a strong alternative in a black-box scenario.
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