Symmetry (May 2021)

Monte Carlo Simulation of a Modified Chi Distribution Considering Asymmetry in the Generating Functions: Application to the Study of Health-Related Variables

  • Nuria Ortigosa,
  • Marcos Orellana-Panchame,
  • Juan Carlos Castro-Palacio,
  • Pedro Fernández de Córdoba,
  • J. M. Isidro

DOI
https://doi.org/10.3390/sym13060924
Journal volume & issue
Vol. 13, no. 6
p. 924

Abstract

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Random variables in biology, social and health sciences commonly follow skewed distributions. Many of these variables can be represented by exGaussian functions; however, in practice, they are sometimes considered as Gaussian functions when statistical analysis is carried out. The asymmetry can play a fundamental role which can not be captured by central tendency estimators such as the mean. By means of Monte Carlo simulations, the effect of a small asymmetry in the generating functions of the chi distribution is studied. To this end, the k generating functions are taken as exGaussian functions. The limits of this approximation are tested numerically for the practical case of three health-related variables: one physical (body mass index) and two cognitive (verbal fluency and short-term memory). This work is in line with our previous works on a physics-inspired mathematical model to represent the reaction times of a group of individuals.

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