Allegra Larche
2017
Recognizing Counterfactual Thinking in Social Media Texts
Youngseo Son
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Anneke Buffone
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Joe Raso
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Allegra Larche
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Anthony Janocko
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Kevin Zembroski
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H Andrew Schwartz
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Lyle Ungar
Proceedings of the 55th Annual Meeting of the Association for Computational Linguistics (Volume 2: Short Papers)
Counterfactual statements, describing events that did not occur and their consequents, have been studied in areas including problem-solving, affect management, and behavior regulation. People with more counterfactual thinking tend to perceive life events as more personally meaningful. Nevertheless, counterfactuals have not been studied in computational linguistics. We create a counterfactual tweet dataset and explore approaches for detecting counterfactuals using rule-based and supervised statistical approaches. A combined rule-based and statistical approach yielded the best results (F1 = 0.77) outperforming either approach used alone.
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- Youngseo Son 1
- Anneke Buffone 1
- Joe Raso 1
- Anthony Janocko 1
- Kevin Zembroski 1
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