Explaining Clustering of Ecological Momentary Assessment Data Through Temporal and Feature Attention

Open Access
Authors
Publication date 2024
Host editors
  • Luca Longo
  • Sebastian Lapuschkin
  • Christin Seifert
Book title Explainable Artificial Intelligence
Book subtitle Second World Conference, xAI 2024, Valletta, Malta, July 17–19, 2024 : proceedings
ISBN
  • 9783031637964
ISBN (electronic)
  • 9783031637971
Series Communications in Computer and Information Science
Event 2nd World Conference on Explainable Artificial Intelligence, xAI 2024
Volume | Issue number II
Pages (from-to) 75-99
Number of pages 25
Publisher Cham: Springer
Organisations
  • Faculty of Social and Behavioural Sciences (FMG) - Psychology Research Institute (PsyRes)
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 primary roles in distinguishing between clusters. A key part of this study is to examine ways to analyze, summarize, and interpret the attention weights as well as evaluate the patterns underlying the important segments of the data that differentiate across clusters. To evaluate the proposed approach, an EMA dataset of 187 individuals grouped in 3 clusters is used for analyzing the derived attention-based importance attributes. More specifically, this analysis provides the distinct characteristics at the cluster-, feature- and individual level. Such clustering explanations could be beneficial for generalizing existing concepts of mental disorders, discovering new insights, and even enhancing our knowledge at an individual level.

Document type Conference contribution
Language English
Published at https://doi.org/10.1007/978-3-031-63797-1_5
Other links https://www.scopus.com/pages/publications/85200659797
Downloads
978-3-031-63797-1_5 (Final published version)
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