CLJan 3, 2024

Cross-target Stance Detection by Exploiting Target Analytical Perspectives

arXiv:2401.01761v219 citationsh-index: 9ICASSP
Originality Incremental advance
AI Analysis

This addresses stance detection across different targets, an incremental improvement for natural language processing applications.

The paper tackles cross-target stance detection by proposing a Multi-Perspective Prompt-Tuning model that uses target analysis perspectives to transfer knowledge, achieving superior performance against state-of-the-art baselines.

Cross-target stance detection (CTSD) is an important task, which infers the attitude of the destination target by utilizing annotated data derived from the source target. One important approach in CTSD is to extract domain-invariant features to bridge the knowledge gap between multiple targets. However, the analysis of informal and short text structure, and implicit expressions, complicate the extraction of domain-invariant knowledge. In this paper, we propose a Multi-Perspective Prompt-Tuning (MPPT) model for CTSD that uses the analysis perspective as a bridge to transfer knowledge. First, we develop a two-stage instruct-based chain-of-thought method (TsCoT) to elicit target analysis perspectives and provide natural language explanations (NLEs) from multiple viewpoints by formulating instructions based on large language model (LLM). Second, we propose a multi-perspective prompt-tuning framework (MultiPLN) to fuse the NLEs into the stance predictor. Extensive experiments results demonstrate the superiority of MPPT against the state-of-the-art baseline methods.

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