Explaining Clustering of Ecological Momentary Assessment Data Through Temporal and Feature Attention
Mandani Ntekouli, Gerasimos Spanakis, Lourens Waldorp, Anne Roefs

TL;DR
This paper introduces an attention-based framework for interpreting clustering in ecological momentary assessment data, highlighting key time-points and variables that differentiate groups to improve understanding of mental health patterns.
Contribution
It presents a novel interpretable clustering approach using attention mechanisms to identify important features and time segments in EMA data, enhancing explainability and insights.
Findings
Successfully identified distinct cluster-specific patterns.
Provided interpretability of important variables and time-points.
Analyzed individual differences within clusters.
Abstract
In the field of psychopathology, Ecological Momentary Assessment (EMA) studies offer rich individual data on psychopathology-relevant variables (e.g., affect, behavior, etc) in real-time. EMA data is collected dynamically, represented as complex multivariate time series (MTS). Such information is crucial for a better understanding of mental disorders at the individual- and group-level. More specifically, clustering individuals in EMA data facilitates uncovering and studying the commonalities as well as variations of groups in the population. Nevertheless, since clustering is an unsupervised task and true EMA grouping is not commonly available, the evaluation of clustering is quite challenging. An important aspect of evaluation is clustering explainability. Thus, this paper proposes an attention-based interpretable framework to identify the important time-points and variables that play…
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Taxonomy
TopicsData Analysis with R · Advanced Clustering Algorithms Research · Data Mining Algorithms and Applications
