SDHCASDec 9, 2021

Personalized musically induced emotions of not-so-popular Colombian music

arXiv:2112.04975v1
Originality Incremental advance
AI Analysis

This work addresses the potential for emotion manipulation in music emotion recognition systems, highlighting ethical risks in human-centered machine learning, though it is incremental as an initial proof of concept.

The study trained personalized machine learning models to predict musically induced emotions, such as anger and fear, for users with diverse political views using politically charged Colombian music, achieving initial proof-of-concept results.

This work presents an initial proof of concept of how Music Emotion Recognition (MER) systems could be intentionally biased with respect to annotations of musically induced emotions in a political context. In specific, we analyze traditional Colombian music containing politically charged lyrics of two types: (1) vallenatos and social songs from the "left-wing" guerrilla Fuerzas Armadas Revolucionarias de Colombia (FARC) and (2) corridos from the "right-wing" paramilitaries Autodefensas Unidas de Colombia (AUC). We train personalized machine learning models to predict induced emotions for three users with diverse political views - we aim at identifying the songs that may induce negative emotions for a particular user, such as anger and fear. To this extent, a user's emotion judgements could be interpreted as problematizing data - subjective emotional judgments could in turn be used to influence the user in a human-centered machine learning environment. In short, highly desired "emotion regulation" applications could potentially deviate to "emotion manipulation" - the recent discredit of emotion recognition technologies might transcend ethical issues of diversity and inclusion.

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