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Dual Debiasing for Noisy In-Context Learning for Text Generation

Published: May 31, 2025 | arXiv ID: 2506.00418v2

By: Siqi Liang , Sumyeong Ahn , Paramveer S. Dhillon and more

Potential Business Impact:

Finds bad examples to make AI smarter.

Business Areas:
Natural Language Processing Artificial Intelligence, Data and Analytics, Software

In context learning (ICL) relies heavily on high quality demonstrations drawn from large annotated corpora. Existing approaches detect noisy annotations by ranking local perplexities, presuming that noisy samples yield higher perplexities than their clean counterparts. However, this assumption breaks down when the noise ratio is high and many demonstrations are flawed. We reexamine the perplexity based paradigm for text generation under noisy annotations, highlighting two sources of bias in perplexity: the annotation itself and the domain specific knowledge inherent in large language models (LLMs). To overcome these biases, we introduce a dual debiasing framework that uses synthesized neighbors to explicitly correct perplexity estimates, yielding a robust Sample Cleanliness Score. This metric uncovers absolute sample cleanliness regardless of the overall corpus noise level. Extensive experiments demonstrate our method's superior noise detection capabilities and show that its final ICL performance is comparable to that of a fully clean demonstration corpus. Moreover, our approach remains robust even when noise ratios are extremely high.

Country of Origin
🇺🇸 United States

Page Count
14 pages

Category
Computer Science:
Computation and Language