English

Simultaneous inference for misaligned multivariate functional data

Applications 2023-01-23 v3

Abstract

We consider inference for misaligned multivariate functional data that represents the same underlying curve, but where the functional samples have systematic differences in shape. In this paper we introduce a new class of generally applicable models where warping effects are modeled through nonlinear transformation of latent Gaussian variables and systematic shape differences are modeled by Gaussian processes. To model cross-covariance between sample coordinates we introduce a class of low-dimensional cross-covariance structures suitable for modeling multivariate functional data. We present a method for doing maximum-likelihood estimation in the models and apply the method to three data sets. The first data set is from a motion tracking system where the spatial positions of a large number of body-markers are tracked in three-dimensions over time. The second data set consists of height and weight measurements for Danish boys. The third data set consists of three-dimensional spatial hand paths from a controlled obstacle-avoidance experiment. We use the developed method to estimate the cross-covariance structure, and use a classification setup to demonstrate that the method outperforms state-of-the-art methods for handling misaligned curve data.

Keywords

Cite

@article{arxiv.1606.03295,
  title  = {Simultaneous inference for misaligned multivariate functional data},
  author = {Niels Lundtorp Olsen and Bo Markussen and Lars Lau Rakêt},
  journal= {arXiv preprint arXiv:1606.03295},
  year   = {2023}
}

Comments

44 pages in total including tables and figures. Additional 9 pages of supplementary material and references

R2 v1 2026-06-22T14:22:29.678Z