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IRONIC: Coherence-Aware Reasoning Chains for Multi-Modal Sarcasm Detection

About

Interpreting figurative language such as sarcasm across multi-modal inputs presents unique challenges, often requiring task-specific fine-tuning and extensive reasoning steps. However, current Chain-of-Thought approaches do not efficiently leverage the same cognitive processes that enable humans to identify sarcasm. We present IRONIC, an in-context learning framework that leverages Multi-modal Coherence Relations to analyze referential, analogical and pragmatic image-text linkages. Our experiments show that IRONIC achieves state-of-the-art performance on zero-shot Multi-modal Sarcasm Detection across different baselines. This demonstrates the need for incorporating linguistic and cognitive insights into the design of multi-modal reasoning strategies. Our code is available at: https://github.com/aashish2000/IRONIC

Aashish Anantha Ramakrishnan, Aadarsh Anantha Ramakrishnan, Dongwon Lee• 2025

Related benchmarks

TaskDatasetResultRank
Multi-modal sarcasm detectionMMSD 2.0
Accuracy64.5
37
Multi-modal sarcasm detectionMMSD
Accuracy66.8
25
Multimodal Sarcasm DetectionredEval
F1 Score59.1
12
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