Growth-rate distributions at stationarity
TLDR
New analytical tools explain non-normal growth-rate distributions in stationary time-series, proposing a generalized logistic null model.
Key contributions
- Introduces new analytical tools for describing growth-rate distributions from stationary time-series.
- Demonstrates that deviations from normality in growth-rates are natural, not pathological, due to general statistics.
- Proposes a generalized logistic distribution as a useful null model for log-growth-rates from Gamma or heavy-tailed data.
- Provides a pragmatic workflow for model selection, particularly useful for systems with limited data quality.
Why it matters
This research reframes how we understand growth-rate distributions, moving beyond the assumption of normality. It offers a robust null model and practical tools for analyzing systems with limited data, which is crucial for fields like macroecology, improving model selection and interpretation.
Original Abstract
We propose new analytical tools for describing growth-rate distributions generated by stationary time-series. Our analysis shows how deviations from normality are not pathological behaviour, as suggested by some traditional views, but instead can be accounted for by clean and general statistical considerations. In contrast, strict normality is the effect of specific modelling choices. Systems characterized by stationary Gamma or heavy-tailed abundance distributions produce log-growth-rate distributions well described by a generalized logistic distribution, which can describe tent-shaped or nearly normal datasets and serves as a useful null model for these observables. These results prove that, for large enough time lags, in practice, growth-rate distributions cease to be time-dependent and exhibit finite variance. Based on this analysis, we identify some key stylized macroecological patterns and specific stochastic differential equations capable of reproducing them. A pragmatic workflow for heuristic selection between these models is then introduced. This approach is particularly useful for systems with limited data-tracking quality, where applying sophisticated inference methods is challenging.
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