English

Metric Oja Depth, New Statistical Tool for Estimating the Most Central Objects

Methodology 2026-03-31 v3 Computation

Abstract

The Oja depth (simplicial volume depth) is one of the classical statistical techniques for measuring the central tendency of data in multivariate space. Despite the widespread emergence of object data like images, texts, matrices or graphs, a well-developed and suitable version of Oja depth for object data is lacking. To address this shortcoming, a novel measure of statistical depth, the metric Oja depth applicable to any object data, is proposed. Two competing strategies are used for optimizing metric depth functions, i.e., finding the deepest objects with respect to them. The performance of the metric Oja depth is compared with three other depth functions (half-space, lens, and spatial) in diverse data scenarios. Keywords: Object Data, Metric Oja depth, Statistical depth, Optimization, Metric statistics

Keywords

Cite

@article{arxiv.2411.11580,
  title  = {Metric Oja Depth, New Statistical Tool for Estimating the Most Central Objects},
  author = {Vida Zamanifarizhandi and Joni Virta},
  journal= {arXiv preprint arXiv:2411.11580},
  year   = {2026}
}

Comments

25 pages + 12 pages as supplementary materials

R2 v1 2026-06-28T20:03:33.281Z