On the Gaussian distribution of the Mann-Kendall tau in the case of autocorrelated data
By: Tristan Gamot, Nils Thibeau--Sutre, Tom J. M. Van Dooren
Potential Business Impact:
Finds when math tests for trends are wrong.
Non-parametric Mann-Kendall tests for autocorrelated data rely on the assumption that the distribution of the normalized Mann-Kendall tau is Gaussian. While this assumption holds asymptotically for stationary autoregressive processes of order 1 (AR(1)) and simple moving average (SMA) processes when sampling over an increasingly long period, it often fails for finite-length time series. In such cases, the empirical distribution of the Mann-Kendall tau deviates significantly from the Gaussian distribution. To assess the validity of this assumption, we explore an alternative asymptotic framework for AR(1) and SMA processes. We prove that, along upsampling sequences, the distribution of the normalized Mann-Kendall tau does not converge to a Gaussian but instead to a bounded distribution with strictly positive variance. This asymptotic behavior suggests scaling laws which determine the conditions under which the Gaussian approximation remains valid for finite-length time series generated by stationary AR(1) and SMA processes. Using Shapiro-Wilk tests, we numerically confirm the departure from normality and establish simple, practical criteria for assessing the validity of the Gaussian assumption, which depend on both the autocorrelation structure and the series length. Finally, we illustrate these findings with examples from existing studies.
Similar Papers
Asymptotic Inference for Rank Correlations
Methodology
Finds how strongly two things are linked.
Unified theory of testing relevant hypothesis in functional time series
Methodology
Finds changes in data even with errors.
ANOVA for High-dimensional Non-stationary Time Series
Statistics Theory
Fixes math tests for changing data.