A Multiscale maximum entropy moment closure for locally regulated space-time point process models of population dynamics
Michael Raghib, Nicholas A. Hill, Ulf Dieckmann

TL;DR
This paper introduces a novel maximum entropy closure method for space-time point process models of population dynamics, improving predictions of spatial patterns over existing heuristics.
Contribution
It develops a new maximum entropy-based closure for moment hierarchies in spatial population models, incorporating correction terms for better accuracy.
Findings
Maxent closure outperforms heuristic methods in predicting equilibrium spatial patterns.
The approach provides a more accurate analytical tool for spatially structured populations.
Validation shows improved predictions for mildly aggregated spatial distributions.
Abstract
The pervasive presence spatial and size structure in biological populations challenges fundamental assumptions at the heart of continuum models of population dynamics based on mean densities (local or global) only. Individual-based models (IBM's) were introduced over the last decade in an attempt to overcome this limitation by following explicitly each individual in the population. Although the IBM approach has been quite insightful, the capability to follow each individual usually comes at the expense of analytical tractability, which limits the generality of the statements that can be made. For the specific case of spatial structure in populations of sessile (and identical) organisms, space-time point processes with local regulation seem to cover the middle ground between analytical tractability and a higher degree of biological realism. Continuum approximations of these stochastic…
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Taxonomy
TopicsEcosystem dynamics and resilience · Evolution and Genetic Dynamics · Ecology and Vegetation Dynamics Studies
