Insight Into Individual Differences in Emotion Dynamics With Clustering

Assessment. 2021 Jun;28(4):1186-1206. doi: 10.1177/1073191119873714. Epub 2019 Sep 13.

Abstract

Studying emotion dynamics through time series models is becoming increasingly popular in the social sciences. Across individuals, dynamics can be rather heterogeneous. To enable comparisons and generalizations of dynamics across groups of individuals, one needs sophisticated tools that express the essential similarities and differences. A way to proceed is to identify subgroups of people who are characterized by qualitatively similar emotion dynamics through dynamic clustering. So far, these methods assume equal generating processes for individuals per cluster. To avoid this overly restrictive assumption, we outline a probabilistic clustering approach based on a mixture model that clusters on individuals' vector autoregressive coefficients. We evaluate the performance of the method and compare it with a nonprobabilistic method in a simulation study. The usefulness of the methods is illustrated using 366 ecological momentary assessment time series with external measures of depression and anxiety.

Keywords: VAR model; ecological momentary assessment; finite mixture model; intensive longitudinal data; interindividual differences.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Anxiety
  • Anxiety Disorders
  • Cluster Analysis
  • Emotions*
  • Humans
  • Individuality*