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Main Authors: Chen, Haoyang, Zhang, Richong, Chen, Junfan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.12175
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author Chen, Haoyang
Zhang, Richong
Chen, Junfan
author_facet Chen, Haoyang
Zhang, Richong
Chen, Junfan
contents Large language models (LLMs) perform in-context learning (ICL) with minimal supervised examples, which benefits various natural language processing (NLP) tasks. One of the critical research focus is the selection of prompt demonstrations. Current approaches typically employ retrieval models to select the top-K most semantically similar examples as demonstrations. However, we argue that existing methods are limited since the label consistency is not guaranteed during demonstration selection. Our cognition derives from the Bayesian view of ICL and our rethinking of ICL from the transductive label propagation perspective. We treat ICL as a transductive learning method and incorporate latent concepts from Bayesian view and deduce that similar demonstrations guide the concepts of query, with consistent labels serving as estimates. Based on this understanding, we establish a label propagation framework to link label consistency with propagation error bounds. To model label consistency, we propose a data synthesis method, leveraging both semantic and label information, and use TopK sampling with Synthetic Data (TopK-SD) to acquire demonstrations with consistent labels. TopK-SD outperforms original TopK sampling on multiple benchmarks. Our work provides a new perspective for understanding the working mechanisms within ICL.
format Preprint
id arxiv_https___arxiv_org_abs_2512_12175
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rethinking Label Consistency of In-Context Learning: An Implicit Transductive Label Propagation Perspective
Chen, Haoyang
Zhang, Richong
Chen, Junfan
Artificial Intelligence
Large language models (LLMs) perform in-context learning (ICL) with minimal supervised examples, which benefits various natural language processing (NLP) tasks. One of the critical research focus is the selection of prompt demonstrations. Current approaches typically employ retrieval models to select the top-K most semantically similar examples as demonstrations. However, we argue that existing methods are limited since the label consistency is not guaranteed during demonstration selection. Our cognition derives from the Bayesian view of ICL and our rethinking of ICL from the transductive label propagation perspective. We treat ICL as a transductive learning method and incorporate latent concepts from Bayesian view and deduce that similar demonstrations guide the concepts of query, with consistent labels serving as estimates. Based on this understanding, we establish a label propagation framework to link label consistency with propagation error bounds. To model label consistency, we propose a data synthesis method, leveraging both semantic and label information, and use TopK sampling with Synthetic Data (TopK-SD) to acquire demonstrations with consistent labels. TopK-SD outperforms original TopK sampling on multiple benchmarks. Our work provides a new perspective for understanding the working mechanisms within ICL.
title Rethinking Label Consistency of In-Context Learning: An Implicit Transductive Label Propagation Perspective
topic Artificial Intelligence
url https://arxiv.org/abs/2512.12175