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Auteurs principaux: Zhang, Yuanshuo, Li, Aohua, Chen, Bo, Sun, Jingbo, Zhao, Xiaobing
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2512.04492
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author Zhang, Yuanshuo
Li, Aohua
Chen, Bo
Sun, Jingbo
Zhao, Xiaobing
author_facet Zhang, Yuanshuo
Li, Aohua
Chen, Bo
Sun, Jingbo
Zhao, Xiaobing
contents LLM-based approaches have recently achieved impressive results in zero-shot stance detection. However, they still struggle in complex real-world scenarios, where stance understanding requires dynamic background knowledge, target definitions involve compound entities or events that must be explicitly linked to stance labels, and rhetorical devices such as irony often obscure the author's actual intent. To address these challenges, we propose MSME, a Multi-Stage, Multi-Expert framework for zero-shot stance detection. MSME consists of three stages: (1) Knowledge Preparation, where relevant background knowledge is retrieved and stance labels are clarified; (2) Expert Reasoning, involving three specialized modules-Knowledge Expert distills salient facts and reasons from a knowledge perspective, Label Expert refines stance labels and reasons accordingly, and Pragmatic Expert detects rhetorical cues such as irony to infer intent from a pragmatic angle; (3) Decision Aggregation, where a Meta-Judge integrates all expert analyses to produce the final stance prediction. Experiments on three public datasets show that MSME achieves state-of-the-art performance across the board.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MSME: A Multi-Stage Multi-Expert Framework for Zero-Shot Stance Detection
Zhang, Yuanshuo
Li, Aohua
Chen, Bo
Sun, Jingbo
Zhao, Xiaobing
Computation and Language
LLM-based approaches have recently achieved impressive results in zero-shot stance detection. However, they still struggle in complex real-world scenarios, where stance understanding requires dynamic background knowledge, target definitions involve compound entities or events that must be explicitly linked to stance labels, and rhetorical devices such as irony often obscure the author's actual intent. To address these challenges, we propose MSME, a Multi-Stage, Multi-Expert framework for zero-shot stance detection. MSME consists of three stages: (1) Knowledge Preparation, where relevant background knowledge is retrieved and stance labels are clarified; (2) Expert Reasoning, involving three specialized modules-Knowledge Expert distills salient facts and reasons from a knowledge perspective, Label Expert refines stance labels and reasons accordingly, and Pragmatic Expert detects rhetorical cues such as irony to infer intent from a pragmatic angle; (3) Decision Aggregation, where a Meta-Judge integrates all expert analyses to produce the final stance prediction. Experiments on three public datasets show that MSME achieves state-of-the-art performance across the board.
title MSME: A Multi-Stage Multi-Expert Framework for Zero-Shot Stance Detection
topic Computation and Language
url https://arxiv.org/abs/2512.04492