Predicting Individual Well-Being in Teamwork Contexts Based on Speech Features

Author:

Zeulner Tobias1ORCID,Hagerer Gerhard Johann1ORCID,Müller Moritz1,Vazquez Ignacio2,Gloor Peter A.3ORCID

Affiliation:

1. Research Group Social Computing, Technical University of Munich, 85748 Munich, Germany

2. System Design and Management, Massachusetts Institute of Technology, Cambridge, MA 02142, USA

3. Center for Collective Intelligence, Massachusetts Institute of Technology, Cambridge, MA 02142, USA

Abstract

Current methods for assessing individual well-being in team collaboration at the workplace often rely on manually collected surveys. This limits continuous real-world data collection and proactive measures to improve team member workplace satisfaction. We propose a method to automatically derive social signals related to individual well-being in team collaboration from raw audio and video data collected in teamwork contexts. The goal was to develop computational methods and measurements to facilitate the mirroring of individuals’ well-being to themselves. We focus on how speech behavior is perceived by team members to improve their well-being. Our main contribution is the assembly of an integrated toolchain to perform multi-modal extraction of robust speech features in noisy field settings and to explore which features are predictors of self-reported satisfaction scores. We applied the toolchain to a case study, where we collected videos of 20 teams with 56 participants collaborating over a four-day period in a team project in an educational environment. Our audiovisual speaker diarization extracted individual speech features from a noisy environment. As the dependent variable, team members filled out a daily PERMA (positive emotion, engagement, relationships, meaning, and accomplishment) survey. These well-being scores were predicted using speech features extracted from the videos using machine learning. The results suggest that the proposed toolchain was able to automatically predict individual well-being in teams, leading to better teamwork and happier team members.

Funder

German Academic Exchange Service

Publisher

MDPI AG

Reference80 articles.

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3. Landy, F.J., and Conte, J.M. (2010). Work in the 21st Century: An Introduction to Industrial and Organizational Psychology, John Wiley & Sons.

4. Seligman, M.E.P. (2012). Flourish: A Visionary New Understanding of Happiness and Well-Being, Simon and Schuster.

5. Ringeval, F., Sonderegger, A., Sauer, J., and Lalanne, D. (2013, January 22–26). Introducing the RECOLA multimodal corpus of remote collaborative and affective interactions. Proceedings of the 2013 10th IEEE International Conference and Workshops on Automatic Face and Gesture Recognition (FG), Shanghai, China.

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