The individual dynamics of affective expression on social media

Abstract Understanding the temporal dynamics of affect is crucial for our understanding human emotions in general. In this study, we empirically test a computational model of affective dynamics by analyzing a large-scale dataset of Facebook status updates using text analysis techniques. Our analyses...

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Main Authors: Max Pellert, Simon Schweighofer, David Garcia
Format: Article
Language:English
Published: SpringerOpen 2020-01-01
Series:EPJ Data Science
Subjects:
Online Access:https://doi.org/10.1140/epjds/s13688-019-0219-3
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spelling doaj-a210719e7da64b5db2a693d162cbfd292021-01-10T12:08:50ZengSpringerOpenEPJ Data Science2193-11272020-01-019111410.1140/epjds/s13688-019-0219-3The individual dynamics of affective expression on social mediaMax Pellert0Simon Schweighofer1David Garcia2Complexity Science Hub ViennaComplexity Science Hub ViennaComplexity Science Hub ViennaAbstract Understanding the temporal dynamics of affect is crucial for our understanding human emotions in general. In this study, we empirically test a computational model of affective dynamics by analyzing a large-scale dataset of Facebook status updates using text analysis techniques. Our analyses support the central assumptions of our model: After stimulation, affective states, quantified as valence and arousal, exponentially return to an individual-specific baseline. On average, this baseline is at a slightly positive valence value and at a moderate arousal point below the midpoint. Furthermore, affective expression, in this case posting a status update on Facebook, immediately pushes arousal and valence towards the baseline by a proportional value. These results are robust to the choice of the text analysis technique and illustrate the fast timescale of affective dynamics through social media text. These outcomes are of high relevance for affective computing, the detection and modeling of collective emotions, the refinement of psychological research methodology, and the detection of abnormal, and potentially pathological, individual affect dynamics.https://doi.org/10.1140/epjds/s13688-019-0219-3EmotionsSocial mediaComputational modeling
collection DOAJ
language English
format Article
sources DOAJ
author Max Pellert
Simon Schweighofer
David Garcia
spellingShingle Max Pellert
Simon Schweighofer
David Garcia
The individual dynamics of affective expression on social media
EPJ Data Science
Emotions
Social media
Computational modeling
author_facet Max Pellert
Simon Schweighofer
David Garcia
author_sort Max Pellert
title The individual dynamics of affective expression on social media
title_short The individual dynamics of affective expression on social media
title_full The individual dynamics of affective expression on social media
title_fullStr The individual dynamics of affective expression on social media
title_full_unstemmed The individual dynamics of affective expression on social media
title_sort individual dynamics of affective expression on social media
publisher SpringerOpen
series EPJ Data Science
issn 2193-1127
publishDate 2020-01-01
description Abstract Understanding the temporal dynamics of affect is crucial for our understanding human emotions in general. In this study, we empirically test a computational model of affective dynamics by analyzing a large-scale dataset of Facebook status updates using text analysis techniques. Our analyses support the central assumptions of our model: After stimulation, affective states, quantified as valence and arousal, exponentially return to an individual-specific baseline. On average, this baseline is at a slightly positive valence value and at a moderate arousal point below the midpoint. Furthermore, affective expression, in this case posting a status update on Facebook, immediately pushes arousal and valence towards the baseline by a proportional value. These results are robust to the choice of the text analysis technique and illustrate the fast timescale of affective dynamics through social media text. These outcomes are of high relevance for affective computing, the detection and modeling of collective emotions, the refinement of psychological research methodology, and the detection of abnormal, and potentially pathological, individual affect dynamics.
topic Emotions
Social media
Computational modeling
url https://doi.org/10.1140/epjds/s13688-019-0219-3
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