Towards Transparent Stance Detection: A Zero-Shot Approach Using Implicit and Explicit Interpretability
Apoorva Upadhyaya, Wolfgang Nejdl, Marco Fisichella

TL;DR
This paper introduces IRIS, an interpretable zero-shot stance detection framework that leverages implicit and explicit rationales to improve interpretability and generalizability across multiple datasets.
Contribution
IRIS is a novel framework that models stance detection as an information retrieval task using implicit and explicit rationales for better interpretability.
Findings
IRIS outperforms existing models on benchmark datasets.
The model maintains high accuracy with limited training data.
Explicit rationales reveal emotional and cognitive aspects of stance.
Abstract
Zero-Shot Stance Detection (ZSSD) identifies the attitude of the post toward unseen targets. Existing research using contrastive, meta-learning, or data augmentation suffers from generalizability issues or lack of coherence between text and target. Recent works leveraging large language models (LLMs) for ZSSD focus either on improving unseen target-specific knowledge or generating explanations for stance analysis. However, most of these works are limited by their over-reliance on explicit reasoning, provide coarse explanations that lack nuance, and do not explicitly model the reasoning process, making it difficult to interpret the model's predictions. To address these issues, in our study, we develop a novel interpretable ZSSD framework, IRIS. We provide an interpretable understanding of the attitude of the input towards the target implicitly based on sequences within the text (implicit…
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Taxonomy
TopicsTopic Modeling · Multimodal Machine Learning Applications · Sentiment Analysis and Opinion Mining
