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Factor Analysis with Correlated Topic Model for Multi-Modal Data

Machine Learning 2025-04-29 v1 Applications Machine Learning

Abstract

Integrating various data modalities brings valuable insights into underlying phenomena. Multimodal factor analysis (FA) uncovers shared axes of variation underlying different simple data modalities, where each sample is represented by a vector of features. However, FA is not suited for structured data modalities, such as text or single cell sequencing data, where multiple data points are measured per each sample and exhibit a clustering structure. To overcome this challenge, we introduce FACTM, a novel, multi-view and multi-structure Bayesian model that combines FA with correlated topic modeling and is optimized using variational inference. Additionally, we introduce a method for rotating latent factors to enhance interpretability with respect to binary features. On text and video benchmarks as well as real-world music and COVID-19 datasets, we demonstrate that FACTM outperforms other methods in identifying clusters in structured data, and integrating them with simple modalities via the inference of shared, interpretable factors.

Keywords

Cite

@article{arxiv.2504.18914,
  title  = {Factor Analysis with Correlated Topic Model for Multi-Modal Data},
  author = {Małgorzata Łazęcka and Ewa Szczurek},
  journal= {arXiv preprint arXiv:2504.18914},
  year   = {2025}
}

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AISTATS 2025

R2 v1 2026-06-28T23:12:22.138Z