Variational Deep Alliance: A Generative Auto-Encoding Approach to Longitudinal Data Analysis

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Abstract

Rapid advancements in the field of deep learning have had a profound impact on a wide range of scientific studies. This paper incorporates the power of deep neural networks to learn complex relationships in longitudinal data. The novel generative approach, Variational Deep Alliance (VaDA), is established, where an “alliance” is formed across repeated measurements via the strength of Variational Auto-Encoder. VaDA models the generating process of longitudinal data with a unified and well-structured latent space, allowing outcomes prediction, subjects clustering and representation learning simultaneously. The integrated model can be inferred efficiently within a stochastic Auto-Encoding Variational Bayes framework, which is scalable to large datasets and can accommodate variables of mixed type. Quantitative comparisons to those baseline methods are considered. VaDA shows high robustness and generalization capability across various synthetic scenarios. Moreover, a longitudinal study based on the well-known CelebFaces Attributes dataset is carried out, where we show its usefulness in detecting meaningful latent clusters and generating high-quality face images.

Original languageEnglish
Article number113
JournalEntropy
Volume28
Issue number1
DOIs
StatePublished - Jan 2026

Keywords

  • Variational Auto-Encoder
  • clustering
  • deep generative model
  • longitudinal data
  • marginal model
  • representation learning

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