4.7 Article

Sememe knowledge and auxiliary information enhanced approach for sarcasm detection

Journal

INFORMATION PROCESSING & MANAGEMENT
Volume 59, Issue 3, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.ipm.2022.102883

Keywords

Sarcasm detection; Sememe knowledge; Auxiliary information

Funding

  1. National Natural Science Foundation of China [61876053, 62006062]
  2. Shenzhen Foundational Research Funding, China [JCYJ20180507183527919, JCYJ20200109113441941]
  3. China Merchants Securities
  4. [62006062,62176076]

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Sarcasm expression is a literary technique where people intentionally express the opposite of what is implied. Accurate detection of sarcasm can help understand speakers' true intentions and improve other natural language processing tasks. Detecting sarcasm in Chinese is more challenging due to the characteristics of the language. To address this, a sememe and auxiliary enhanced attention neural model is proposed.
Sarcasm expression is a pervasive literary technique in which people intentionally express the opposite of what is implied. Accurate detection of sarcasm in a text can facilitate the understand-ing of speakers' true intentions and promote other natural language processing tasks, especially sentiment analysis tasks. Since sarcasm is a kind of implicit sentiment expression and speakers deliberately confuse the audience, it is challenging to detect sarcasm only by text. Existing approaches based on machine learning and deep learning achieved unsatisfactory performance when handling sarcasm text with complex expression or needing specific background knowledge to understand. Especially, due to the characteristics of the Chinese language itself, sarcasm detection in Chinese is more difficult. To alleviate this dilemma on Chinese sarcasm detection, we propose a sememe and auxiliary enhanced attention neural model, SAAG. At the word level, we introduce sememe knowledge to enhance the representation learning of Chinese words. Sememe is the minimum unit of meaning, which is a fine-grained portrayal of a word. At the sentence level, we leverage some auxiliary information, such as the news title, to learning the representation of the context and background of sarcasm expression. Then, we construct the representation of text expression progressively and dynamically. The evaluation on a sarcasm dateset, consisting of comments on news text, reveals that our proposed approach is effective and outperforms the state-of-the-art models.

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