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Detecting Emotional Incongruity of Sarcasm by Commonsense Reasoning
Computer ScienceProceedings of the 31st International Conference on Computational Linguistics

Detecting Emotional Incongruity of Sarcasm by Commonsense Reasoning

Z. Qiu, J. Yu, et al.

Leveraging commonsense augmentation, EICR detects sarcasm by using retrieval-augmented large language models to supply missing background, refining dependency graphs to capture contextual associations, and applying an adaptive reasoning skeleton to extract sentiment-inconsistent subgraphs—plus adversarial contrastive learning for robustness. Experiments on five datasets show its effectiveness. Research conducted by Ziqi Qiu, Jianxing Yu, Yufeng Zhang, Hanjiang Lai, Yanghui Rao, Qinliang Su, and Jian Yin.... show more
Abstract
This paper focuses on sarcasm detection, which aims to identify whether given statements convey criticism, mockery, or other negative sentiment opposite to the literal meaning. To detect sarcasm, humans often require a comprehensive understanding of the semantics in the statement and even resort to external commonsense to infer the fine-grained incongruity. However, existing methods lack commonsense inferential ability when they face complex real-world scenarios, leading to unsatisfactory performance. To address this problem, we propose a novel framework for sarcasm detection, which conducts incongruity reasoning based on commonsense augmentation, called EICR. Concretely, we first employ retrieval-augmented large language models to supplement the missing but indispensable commonsense background knowledge. To capture complex contextual associations, we construct a dependency graph and obtain the optimized topology via graph refinement. We further introduce an adaptive reasoning skeleton that integrates prior rules to extract sentiment-inconsistent subgraphs explicitly. To eliminate the possible spurious relations between words and labels, we employ adversarial contrastive learning to enhance the robustness of the detector. Experiments conducted on five datasets demonstrate the effectiveness of EICR.
Publisher
Proceedings of the 31st International Conference on Computational Linguistics
Published On
Jan 19, 2025
Authors
Ziqi Qiu, Jianxing Yu, Yufeng Zhang, Hanjiang Lai, Yanghui Rao, Qinliang Su, Jian Yin
Tags
sarcasm detectioncommonsense augmentationretrieval-augmented large language modelsdependency graphgraph refinementadaptive reasoning skeletonadversarial contrastive learning
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