Multivariate Functional Linear Discriminant Analysis for Partially-Observed Time Series (Abstract Reprint)

Authors

  • Rahul Bordoloi Department of Systems Biology and Bioinformatics, Institute of Computer Science, University of Rostock, 18051 Rostock, Germany
  • Clémence Réda Department of Systems Biology and Bioinformatics, Institute of Computer Science, University of Rostock, 18051 Rostock, Germany
  • Orell Trautmann Department of Systems Biology and Bioinformatics, Institute of Computer Science, University of Rostock, 18051 Rostock, Germany
  • Saptarshi Bej School of Data Science, Indian Institute of Science Education and Research, Thiruvananthapuram, Thiruvananthapuram 695551, India
  • Olaf Wolkenhauer Department of Systems Biology and Bioinformatics, Institute of Computer Science, University of Rostock, 18051 Rostock, Germany Leibniz-Institute for Food Systems Biology, Technical University of Munich, 85354 Freising, Germany Stellenbosch Institute of Advanced Study, Wallenberg Research Centre, Stellenbosch 7602, South Africa

DOI:

https://doi.org/10.1609/aaai.v40i47.41371

Abstract

The more extensive access to time-series data, especially for biomedical purposes, raises new methodological challenges, particularly regarding missing values. Functional linear discriminant analysis (FLDA) extends Linear Discriminant Analysis (LDA)-mediated multiclass classification and dimension reduction to data in the form of fragmented observations of a univariate function. For large multivariate and partially-observed data, there are two challenges: (i) statistical dependencies between different components of a multivariate function and (ii) heterogeneous sampling times with missing features. We here develop a multivariate version of FLDA, called MUDRA, to tackle these challenges and describe a computationally efficient expectation/conditional-maximisation (ECM) algorithm to infer its parameters without any tensor inversions. We assess its predictive power on the “Articulary Words” dataset and show its improvement over the state-of-the-art, especially in the case of missing data. This advancement in dimension reduction of multivariate functional data holds promise for enhancing classification accuracy in scenarios like partially observed short multivariate time series analysis.

Published

2026-03-14

How to Cite

Bordoloi, R., Réda, C., Trautmann, O., Bej, S., & Wolkenhauer, O. (2026). Multivariate Functional Linear Discriminant Analysis for Partially-Observed Time Series (Abstract Reprint). Proceedings of the AAAI Conference on Artificial Intelligence, 40(47), 39856–39856. https://doi.org/10.1609/aaai.v40i47.41371