Literature DB >> 30742458

(Not) hearing happiness: Predicting fluctuations in happy mood from acoustic cues using machine learning.

Aaron C Weidman1, Jessie Sun1, Simine Vazire1, Jordi Quoidbach2, Lyle H Ungar3, Elizabeth W Dunn4.   

Abstract

Recent popular claims surrounding virtual assistants suggest that computers will soon be able to hear our emotions. Supporting this possibility, promising work has harnessed big data and emergent technologies to automatically predict stable levels of one specific emotion, happiness, at the community (e.g., counties) and trait (i.e., people) levels. Furthermore, research in affective science has shown that nonverbal vocal bursts (e.g., sighs, gasps) and specific acoustic features (e.g., pitch, energy) can differentiate between distinct emotions (e.g., anger, happiness) and that machine-learning algorithms can detect these differences. Yet, to our knowledge, no work has tested whether computers can automatically detect normal, everyday, within-person fluctuations in one emotional state from acoustic analysis. To address this issue in the context of happy mood, across 3 studies (total N = 20,197), we asked participants to repeatedly report their state happy mood and to provide audio recordings-including both direct speech and ambient sounds-from which we extracted acoustic features. Using three different machine learning algorithms (neural networks, random forests, and support vector machines) and two sets of acoustic features, we found that acoustic features yielded minimal predictive insight into happy mood above chance. Neither multilevel modeling analyses nor human coders provided additional insight into state happy mood. These findings suggest that it is not yet possible to automatically assess fluctuations in one emotional state (i.e., happy mood) from acoustic analysis, pointing to a critical future direction for affective scientists interested in acoustic analysis of emotion and automated emotion detection. (PsycInfo Database Record (c) 2020 APA, all rights reserved).

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Year:  2019        PMID: 30742458     DOI: 10.1037/emo0000571

Source DB:  PubMed          Journal:  Emotion        ISSN: 1528-3542


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Journal:  Affect Sci       Date:  2022-01-20

2.  Validating Biobehavioral Technologies for Use in Clinical Psychiatry.

Authors:  Alex S Cohen; Christopher R Cox; Raymond P Tucker; Kyle R Mitchell; Elana K Schwartz; Thanh P Le; Peter W Foltz; Terje B Holmlund; Brita Elvevåg
Journal:  Front Psychiatry       Date:  2021-06-11       Impact factor: 4.157

  2 in total

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