You Don’t Say… Linguistic Features in Sarcasm Detection

Martina Ducret, Lauren Kruse, Carlos Martinez, Anna Feldman, Jing Peng
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Abstract

We explore linguistic features that contribute to sarcasm detection. The linguistic features that we investigate are a combination of text and word complexity, stylistic and psychological features. We experiment with sarcastic tweets with and without context. The results of our experiments indicate that contextual information is crucial for sarcasm prediction. One important observation is that sarcastic tweets are typically incongruent with their context in terms of sentiment or emotional load.
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You Don’t Say…反讽检测中的语言特征
我们探索有助于讽刺检测的语言特征。我们研究的语言特征是语篇和词的复杂性、文体和心理特征的结合。我们用带有或不带有背景的讽刺推文做实验。我们的实验结果表明,语境信息对讽刺预测至关重要。一个重要的观察是,讽刺的推文在情绪或情绪负荷方面通常与上下文不一致。
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