A Multimodal Corpus for Emotion Recognition in Sarcasm
- URL: http://arxiv.org/abs/2206.02119v1
- Date: Sun, 5 Jun 2022 08:01:09 GMT
- Title: A Multimodal Corpus for Emotion Recognition in Sarcasm
- Authors: Anupama Ray, Shubham Mishra, Apoorva Nunna, Pushpak Bhattacharyya
- Abstract summary: A sarcastic expression may have a variety of underlying emotions.
We identify and correct 343 incorrect emotion labels (out of 690)
We label each sarcastic utterance with one of the four sarcasm types-Propositional, Embedded, Likeed and Illocutionary.
- Score: 29.620911976637196
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: While sentiment and emotion analysis have been studied extensively, the
relationship between sarcasm and emotion has largely remained unexplored. A
sarcastic expression may have a variety of underlying emotions. For example, "I
love being ignored" belies sadness, while "my mobile is fabulous with a battery
backup of only 15 minutes!" expresses frustration. Detecting the emotion behind
a sarcastic expression is non-trivial yet an important task. We undertake the
task of detecting the emotion in a sarcastic statement, which to the best of
our knowledge, is hitherto unexplored. We start with the recently released
multimodal sarcasm detection dataset (MUStARD) pre-annotated with 9 emotions.
We identify and correct 343 incorrect emotion labels (out of 690). We double
the size of the dataset, label it with emotions along with valence and arousal
which are important indicators of emotional intensity. Finally, we label each
sarcastic utterance with one of the four sarcasm types-Propositional, Embedded,
Likeprefixed and Illocutionary, with the goal of advancing sarcasm detection
research. Exhaustive experimentation with multimodal (text, audio, and video)
fusion models establishes a benchmark for exact emotion recognition in sarcasm
and outperforms the state-of-art sarcasm detection. We release the dataset
enriched with various annotations and the code for research purposes:
https://github.com/apoorva-nunna/MUStARD_Plus_Plus
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