¡Qué maravilla! Multimodal Sarcasm Detection in Spanish: a Dataset and a Baseline

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Abstract

We construct the first ever multimodal sarcasm dataset for Spanish. The audiovisual dataset consists of sarcasm annotated text that is aligned with video and audio. The dataset represents two varieties of Spanish, a Latin American variety and a Peninsular Spanish variety, which ensures a wider dialectal coverage for this global language. We present several models for sarcasm detection that will serve as baselines in the future research. Our results show that results with text only (89%) are worse than when combining text with audio (91.9%). Finally, the best results are obtained when combining all the modalities: text, audio and video (93.1%).

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APA

Alnajjar, K., & Hämäläinen, M. (2021). ¡Qué maravilla! Multimodal Sarcasm Detection in Spanish: a Dataset and a Baseline. In Multimodal Artificial Intelligence, MAI Workshop 2021 - Proceedings of the 3rd Workshop (pp. 63–68). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2021.maiworkshop-1.9

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