TY - JOUR
T1 - A Gentle Introduction and Application of Feature-Based Clustering with Psychological Time Series
AU - Kreienkamp, Jannis
AU - Agostini, Maximilian
AU - Monden, Rei
AU - Epstude, Kai
AU - de Jonge, Peter
AU - Bringmann, Laura F.
N1 - Publisher Copyright:
© 2024 The Author(s). Published with license by Taylor & Francis Group, LLC.
PY - 2025
Y1 - 2025
N2 - Psychological researchers and practitioners collect increasingly complex time series data aimed at identifying differences between the developments of participants or patients. Past research has proposed a number of dynamic measures that describe meaningful developmental patterns for psychological data (e.g., instability, inertia, linear trend). Yet, commonly used clustering approaches are often not able to include these meaningful measures (e.g., due to model assumptions). We propose feature-based time series clustering as a flexible, transparent, and well-grounded approach that clusters participants based on the dynamic measures directly using common clustering algorithms. We introduce the approach and illustrate the utility of the method with real-world empirical data that highlight common ESM challenges of multivariate conceptualizations, structural missingness, and non-stationary trends. We use the data to showcase the main steps of input selection, feature extraction, feature reduction, feature clustering, and cluster evaluation. We also provide practical algorithm overviews and readily available code for data preparation, analysis, and interpretation.
AB - Psychological researchers and practitioners collect increasingly complex time series data aimed at identifying differences between the developments of participants or patients. Past research has proposed a number of dynamic measures that describe meaningful developmental patterns for psychological data (e.g., instability, inertia, linear trend). Yet, commonly used clustering approaches are often not able to include these meaningful measures (e.g., due to model assumptions). We propose feature-based time series clustering as a flexible, transparent, and well-grounded approach that clusters participants based on the dynamic measures directly using common clustering algorithms. We introduce the approach and illustrate the utility of the method with real-world empirical data that highlight common ESM challenges of multivariate conceptualizations, structural missingness, and non-stationary trends. We use the data to showcase the main steps of input selection, feature extraction, feature reduction, feature clustering, and cluster evaluation. We also provide practical algorithm overviews and readily available code for data preparation, analysis, and interpretation.
KW - ESM
KW - feature-based clustering
KW - intensive longitudinal data
KW - Time series analysis
UR - https://www.scopus.com/pages/publications/105002588582
U2 - 10.1080/00273171.2024.2432918
DO - 10.1080/00273171.2024.2432918
M3 - Article
C2 - 39660653
SN - 0027-3171
VL - 60
SP - 362
EP - 392
JO - Multivariate Behavioral Research
JF - Multivariate Behavioral Research
IS - 2
ER -