학술논문

Predicting Meeting Success With Nuanced Emotions
Document Type
Periodical
Source
IEEE Pervasive Computing IEEE Pervasive Comput. Pervasive Computing, IEEE. 21(2):51-59 Jun, 2022
Subject
Computing and Processing
Predictive models
Psychology
Emotion recognition
Linguistics
Principal component analysis
Language
ISSN
1536-1268
1558-2590
Abstract
While current meeting tools are able to capture key analytics (e.g., transcript and summarization), they do not often capture nuanced emotions (e.g., disappointment and feeling impressed). Given the high number of meetings that were held online during the COVID-19 pandemic, we had an unprecedented opportunity to record extensive meeting data with a newly developed meeting companion application. We analyzed 72 h of conversations from 85 real-world virtual meetings and 256 self-reported meeting success scores. We did so by developing a deep-learning framework that can extract 32 nuanced emotions from meeting transcripts, and by then testing a variety of models predicting meeting success from the extracted emotions. We found that rare emotions (e.g., disappointment and excitement) were generally more predictive of success than more common emotions. This demonstrates the importance of quantifying nuanced emotions to further improve productivity analytics, and, in the long term, employee well-being.