A statistical perspective on transformers for small longitudinal cohort data
Kiana Farhadyar, Maren Hackenberg, Kira Ahrens, Charlotte Schenk, Bianca Kollmann, Oliver T\"uscher, Klaus Lieb, Michael M. Plichta, Andreas Reif, Raffael Kalisch, Martin Wolkewitz, Moritz Hess, Harald Binder

TL;DR
This paper introduces a simplified transformer model tailored for small longitudinal cohort datasets, leveraging a statistical perspective to effectively identify temporal patterns and dependencies with fewer parameters.
Contribution
The authors develop a reduced-parameter transformer architecture based on a statistical framework, enabling effective analysis of small longitudinal datasets and providing a permutation-based testing method.
Findings
Successfully recovers contextual dependencies in simulations with small data
Identifies meaningful temporal patterns in stress and mental health data
Achieves competitive predictive performance in small data settings
Abstract
Modeling of longitudinal cohort data typically involves complex temporal dependencies between multiple variables. There, the transformer architecture, which has been highly successful in language and vision applications, allows us to account for the fact that the most recently observed time points in an individual's history may not always be the most important for the immediate future. This is achieved by assigning attention weights to observations of an individual based on a transformation of their values. One reason why these ideas have not yet been fully leveraged for longitudinal cohort data is that typically, large datasets are required. Therefore, we present a simplified transformer architecture that retains the core attention mechanism while reducing the number of parameters to be estimated, to be more suitable for small datasets with few time points. Guided by a statistical…
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Taxonomy
TopicsMental Health Research Topics · Health, Environment, Cognitive Aging · Mental Health via Writing
