4.7 Article

On fits to correlated and auto-correlated data

Journal

COMPUTER PHYSICS COMMUNICATIONS
Volume 285, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.cpc.2022.108643

Keywords

Chi-squared test; Goodness of fit; Autocorrelations

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Observables in particle physics, particularly in lattice QCD calculations, are often obtained through fits. However, reliable determination of the covariance matrix and its inverse from correlated and auto-correlated data is challenging and can lead to close-to-singular estimates. To address this, modifications of the X2 definition, such as uncorrelated fits, are proposed. We demonstrate how the goodness-of-fit measured by the p-value can still be robustly estimated for a wide range of such fits.
Observables in particle physics and specifically in lattice QCD calculations are often extracted from fits. Standard X2 tests require a reliable determination of the covariance matrix and its inverse from correlated and auto-correlated data, a challenging task often leading to close-to-singular estimates. These motivate modifications of the definition of X2 such as uncorrelated fits. We show how the goodness-of-fit measured by their p-value can still be estimated robustly for a broad class of such fits.(c) 2022 Elsevier B.V. All rights reserved.

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