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Corrective In-Context Learning: Evaluating Self-Correction in Large Language Models

About

In-context learning (ICL) has transformed the use of large language models (LLMs) for NLP tasks, enabling few-shot learning by conditioning on labeled examples without finetuning. Despite its effectiveness, ICL is prone to errors, especially for challenging examples. With the goal of improving the performance of ICL, we propose corrective in-context learning (CICL), an approach that incorporates a model's incorrect predictions alongside ground truth corrections into the prompt, aiming to enhance classification accuracy through self-correction. However, contrary to our hypothesis, extensive experiments on text classification tasks demonstrate that CICL consistently underperforms standard ICL, with performance degrading as the proportion of corrections in the prompt increases. Our findings indicate that CICL introduces confusion by disrupting the model's task understanding, rather than refining its predictions. Additionally, we observe that presenting harder examples in standard ICL does not improve performance, suggesting that example difficulty alone may not be a reliable criterion for effective selection. By presenting these negative results, we provide important insights into the limitations of self-corrective mechanisms in LLMs and offer directions for future research.

Mario Sanz-Guerrero, Katharina von der Wense• 2025

Related benchmarks

TaskDatasetResultRank
In-Context Value AlignmentValue Composition (Overall)
Confucianism Score3.372
37
Value AlignmentConfucianism-4
Conformity Score3.212
22
Value AlignmentHH Balance-8
Conformity Score4.282
17
Value AlignmentLiberalism 4
Conformity Score2.633
11
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