The Many Faces of Anger: A Multicultural Video Dataset of Negative Emotions in the Wild (MFA-Wild)

10 Dec 2021  ยท  Roya Javadi, Angelica Lim ยท

The portrayal of negative emotions such as anger can vary widely between cultures and contexts, depending on the acceptability of expressing full-blown emotions rather than suppression to maintain harmony. The majority of emotional datasets collect data under the broad label ``anger", but social signals can range from annoyed, contemptuous, angry, furious, hateful, and more. In this work, we curated the first in-the-wild multicultural video dataset of emotions, and deeply explored anger-related emotional expressions by asking culture-fluent annotators to label the videos with 6 labels and 13 emojis in a multi-label framework. We provide a baseline multi-label classifier on our dataset, and show how emojis can be effectively used as a language-agnostic tool for annotation.

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Datasets


Introduced in the Paper:

MFA

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Emotion Classification MFA MLKNN F-F1 score (NA) 0.42 # 1
F-F1 score (Persian) 0.4 # 1
F-F1 score (Comb.) 0.34 # 1
V-F1 score (NA) 0.42 # 1
V-F1 score (Persian) 0.40 # 1
V-F1 score (Comb.) 0.39 # 1
Emotion Classification MFA CC - XGB F-F1 score (NA) 0.42 # 1
F-F1 score (Persian) 0.28 # 2
F-F1 score (Comb.) 0.33 # 2
V-F1 score (NA) 0.4 # 2
V-F1 score (Persian) 0.33 # 2
V-F1 score (Comb.) 0.36 # 2

Methods


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