RCLMuFN: Relational Context Learning and Multiplex Fusion Network for Multimodal Sarcasm Detection
Tongguan Wang, Junkai Li, Guixin Su, Yongcheng Zhang, Dongyu Su, Yuxue, Hu, Ying Sha

TL;DR
This paper introduces RCLMuFN, a novel multimodal sarcasm detection model that learns relational context and fuses features across multiple interaction levels, significantly improving detection accuracy.
Contribution
The paper presents a relational context learning module and a multiplex fusion network to better model dynamic interactions between text and images for sarcasm detection.
Findings
Achieves state-of-the-art performance on two datasets.
Effectively models dynamic relational context.
Enhances generalization through multiplex feature fusion.
Abstract
Sarcasm typically conveys emotions of contempt or criticism by expressing a meaning that is contrary to the speaker's true intent. Accurate detection of sarcasm aids in identifying and filtering undesirable information on the Internet, thereby reducing malicious defamation and rumor-mongering. Nonetheless, the task of automatic sarcasm detection remains highly challenging for machines, as it critically depends on intricate factors such as relational context. Most existing multimodal sarcasm detection methods focus on introducing graph structures to establish entity relationships between text and images while neglecting to learn the relational context between text and images, which is crucial evidence for understanding the meaning of sarcasm. In addition, the meaning of sarcasm changes with the evolution of different contexts, but existing methods may not be accurate in modeling such…
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Taxonomy
TopicsLaw in Society and Culture · Computational and Text Analysis Methods
MethodsFocus
