English

Conditional regularized halfspace depth for sparse functional data and its applications

Methodology 2026-05-21 v1

Abstract

Many functional datasets are observed sparsely and irregularly. Ordering such data is challenging because only limited information is available from each observation, while the underlying trajectories remain infinite-dimensional. This paper develops a novel depth notion for sparse functional data, called the conditional regularized halfspace depth (CRHD). CRHD is defined as the infimum of conditional halfspace probabilities of the underlying trajectory given the observed sparse measurements, thereby enabling depth evaluation directly at sparse observations without requiring trajectory reconstruction. We study several basic theoretical properties of CRHD that clarify its behavior as a depth measure. The proposed depth is applicable even to extremely sparsely observed functional data, overcoming key limitations of existing sparse functional depths that often rely on reconstructed curves. In addition, CRHD induces meaningful rankings for complex functional data. Its numerical performance is demonstrated through rank-based tests, and its practical utility is illustrated using an infant growth dataset.

Keywords

Cite

@article{arxiv.2605.20604,
  title  = {Conditional regularized halfspace depth for sparse functional data and its applications},
  author = {Hyemin Yeon and Xiongtao Dai and Sara Lopez-Pintado},
  journal= {arXiv preprint arXiv:2605.20604},
  year   = {2026}
}