Emotion dynamic patterns between intimate relationship partners predict their separation two years later: A machine learning approach

PLoS One. 2023 Jul 6;18(7):e0288048. doi: 10.1371/journal.pone.0288048. eCollection 2023.

Abstract

Contemporary emotion theories predict that how partners' emotions are coupled together across an interaction can inform on how well the relationship functions. However, few studies have compared how individual (i.e., mean, variability) and dyadic aspects of emotions (i.e., coupling) during interactions predict future relationship separation. In this exploratory study, we utilized machine learning methods to evaluate whether emotions during a positive and a negative interaction from 101 couples (N = 202 participants) predict relationship stability two years later (17 breakups). Although the negative interaction was not predictive, the positive was: Intra-individual variability of emotions as well as the coupling between partners' emotions predicted relationship separation. The present findings demonstrate that utilizing machine learning methods enables us to improve our theoretical understanding of complex patterns.

MeSH terms

  • Emotions*
  • Humans
  • Interpersonal Relations*
  • Sexual Behavior
  • Sexual Partners / psychology

Grants and funding

EC, PK: GOA/15/003; OT/11/031, Research Fund of the University of Leuven, https://www.kuleuven.be/english/research/support/if EC, PK: IAP/P7/06, Interuniversity Attraction Poles programme, http://www.belspo.be/belspo/iap/index_en.stm EC, PK, FT: G.0582.14, Fund for Scientific Research-Flanders, https://www.fwo.be/en/ PH: P2ZHP1_151628, Swiss National Science Foundation, https://www.snf.ch PH: P300P1_164582, Swiss National Science Foundation, https://www.snf.ch PH: P3P3P1_174466, Swiss National Science Foundation, https://www.snf.ch The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.