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Main Authors: Zheng, Xianda, Huang, Zijian, Chiang, Meng-Fen, Witbrock, Michael J., Zhao, Kaiqi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.01273
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author Zheng, Xianda
Huang, Zijian
Chiang, Meng-Fen
Witbrock, Michael J.
Zhao, Kaiqi
author_facet Zheng, Xianda
Huang, Zijian
Chiang, Meng-Fen
Witbrock, Michael J.
Zhao, Kaiqi
contents Knowledge conflicts commonly arise across diverse sources, and their prevalence has increased with the advent of LLMs. When dealing with conflicts between multiple contexts, also known as \emph{inter-context knowledge conflicts}, LLMs are often confused by lengthy and conflicting contexts. To address this challenge, we propose the Knowledge Conflict Reasoning (KCR) framework, which enhances the ability of LLMs to resolve conflicting knowledge. The key idea of KCR is to train backbone LLMs to establish a correct reasoning process by rewarding them for selecting and adhering to the context with stronger logical consistency when presented with conflicting contexts. Specifically, we first extract reasoning paths, represented by either text or local knowledge graphs, from the conflicting long contexts. Subsequently, we employ Reinforcement Learning to encourage the model to learn the paradigm of reasoning process that follows correct reasoning paths rather than the incorrect counterparts. This enables the backbone models to genuinely acquire the capability to resolve inter-context knowledge conflicts within long contexts. Experimental results demonstrate that our framework significantly improves the ability of various backbone models to resolve knowledge conflicts in long-context scenarios, yielding substantial performance gains.
format Preprint
id arxiv_https___arxiv_org_abs_2508_01273
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle KCR: Resolving Long-Context Knowledge Conflicts via Reasoning in LLMs
Zheng, Xianda
Huang, Zijian
Chiang, Meng-Fen
Witbrock, Michael J.
Zhao, Kaiqi
Artificial Intelligence
Knowledge conflicts commonly arise across diverse sources, and their prevalence has increased with the advent of LLMs. When dealing with conflicts between multiple contexts, also known as \emph{inter-context knowledge conflicts}, LLMs are often confused by lengthy and conflicting contexts. To address this challenge, we propose the Knowledge Conflict Reasoning (KCR) framework, which enhances the ability of LLMs to resolve conflicting knowledge. The key idea of KCR is to train backbone LLMs to establish a correct reasoning process by rewarding them for selecting and adhering to the context with stronger logical consistency when presented with conflicting contexts. Specifically, we first extract reasoning paths, represented by either text or local knowledge graphs, from the conflicting long contexts. Subsequently, we employ Reinforcement Learning to encourage the model to learn the paradigm of reasoning process that follows correct reasoning paths rather than the incorrect counterparts. This enables the backbone models to genuinely acquire the capability to resolve inter-context knowledge conflicts within long contexts. Experimental results demonstrate that our framework significantly improves the ability of various backbone models to resolve knowledge conflicts in long-context scenarios, yielding substantial performance gains.
title KCR: Resolving Long-Context Knowledge Conflicts via Reasoning in LLMs
topic Artificial Intelligence
url https://arxiv.org/abs/2508.01273