English

Hyper-Fit: Fitting Linear Models to Multidimensional Data with Multivariate Gaussian Uncertainties

Instrumentation and Methods for Astrophysics 2015-10-21 v1

Abstract

Astronomical data is often uncertain with errors that are heteroscedastic (different for each data point) and covariant between different dimensions. Assuming that a set of D-dimensional data points can be described by a (D - 1)-dimensional plane with intrinsic scatter, we derive the general likelihood function to be maximised to recover the best fitting model. Alongside the mathematical description, we also release the hyper-fit package for the R statistical language (github.com/asgr/hyper.fit) and a user-friendly web interface for online fitting (hyperfit.icrar.org). The hyper-fit package offers access to a large number of fitting routines, includes visualisation tools, and is fully documented in an extensive user manual. Most of the hyper-fit functionality is accessible via the web interface. In this paper we include applications to toy examples and to real astronomical data from the literature: the mass-size, Tully-Fisher, Fundamental Plane, and mass-spin-morphology relations. In most cases the hyper-fit solutions are in good agreement with published values, but uncover more information regarding the fitted model.

Keywords

Cite

@article{arxiv.1508.02145,
  title  = {Hyper-Fit: Fitting Linear Models to Multidimensional Data with Multivariate Gaussian Uncertainties},
  author = {A. S. G. Robotham and D. Obreschkow},
  journal= {arXiv preprint arXiv:1508.02145},
  year   = {2015}
}

Comments

15 pages, 13 figures, accepted for publication in PASA

R2 v1 2026-06-22T10:29:43.283Z