Sarcasm detection on news headlines using transformers

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Tarih

2025-09-07

Dergi Başlığı

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Yayıncı

Springer

Erişim Hakkı

info:eu-repo/semantics/closedAccess

Araştırma projeleri

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Özet

Sarcasm poses a linguistic challenge due to its figurative nature, where intended meaning contradicts literal interpretation. Sarcasm is prevalent in human communication, affecting interactions in literature, social media, news, e-commerce, etc. Identifying the true intent behind sarcasm is challenging but essential for applications in sentiment analysis. Detecting sarcasm in written text, as a challenging task, has attracted many researchers in recent years. This paper attempts to detect sarcasm in news headlines. Journalists prefer using sarcastic news headlines as they seem much more interesting to the readers. In the proposed methodology, we experimented with Transformers, namely the BERT model, and several Machine and Deep Learning models with different word and sentence embedding methods. The proposed approach inherently requires high-performance resources due to the use of large-scale pre-trained language models such as BERT. We also extended an existing news headlines dataset for sarcasm detection using augmentation techniques and annotating it with hand-crafted features. The proposed methodology could outperform almost all existing sarcasm detection approaches with a 98.86% F1-score when applied to the extended news headlines dataset, which we made publicly available on GitHub.

Açıklama

Thanks to the Graduate school of Isik University for their support.

Anahtar Kelimeler

Deep learning, Handcrafted features, News headlines, Sarcasm, Sarcasm classification, Text augmentation, Transformers, Learning systems, Linguistics, Sentiment analysis, Human communications, Literals, Social media

Kaynak

Journal of Supercomputing

WoS Q Değeri

Q2

Scopus Q Değeri

Q1

Cilt

81

Sayı

14

Künye

Gümüşçekiçci, G. & Dehkharghani, R. (2025). Sarcasm detection on news headlines using transformers. Journal of Supercomputing, 81(14), 1-28. doi: