A multiscale maximum entropy moment closure for locally regulated space-time point process models of population dynamics
Authored by Michael Raghib, Ulf Dieckmann, Nicholas A Hill
Date Published: 2011
DOI: 10.1007/s00285-010-0345-9
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Abstract
The prevalence of structure in biological populations challenges
fundamental assumptions at the heart of continuum models of population
dynamics based only on mean densities (local or global).
Individual-based models (IBMs) were introduced during 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
useful, 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. This
approach has shown that simplified representations of fecundity, local
dispersal and density-dependent mortality weighted by the local
competitive environment are sufficient to generate spatial patterns that
mimic field observations. Continuum approximations of these stochastic
processes try to distill their fundamental properties, and they keep
track of not only mean densities, but also higher order spatial
correlations. However, due to the non-linearities involved they result
in infinite hierarchies of moment equations. This leads to the problem
of finding a `moment closure'; that is, an appropriate order of (lower
order) truncation, together with a method of expressing the highest
order density not explicitly modelled in the truncated hierarchy in
terms of the lower order densities. We use the principle of constrained
maximum entropy to derive a closure relationship for truncation at
second order using normalisation and the product densities of first and
second orders as constraints, and apply it to one such hierarchy. The
resulting `maxent' closure is similar to the Kirkwood superposition
approximation, or `power-3' closure, but it is complemented with
previously unknown correction terms that depend mainly on the avoidance
function of an associated Poisson point process over the region for
which third order correlations are irreducible. This domain of
irreducible triplet correlations is found from an integral equation
associated with the normalisation constraint. This also serves the
purpose of a validation check, since a single, non-trivial domain can
only be found if the assumptions of the closure are consistent with the
predictions of the hierarchy. Comparisons between simulations of the
point process, alternative heuristic closures, and the maxent closure
show significant improvements in the ability of the truncated hierarchy
to predict equilibrium values for mildly aggregated spatial patterns.
However, the maxent closure performs comparatively poorly in segregated
ones. Although the closure is applied in the context of point processes, the method does not require fixed locations to be valid, and can in
principle be applied to problems where the particles move, provided that
their correlation functions are stationary in space and time.
Tags
Competition
epidemics
growth
Plant-communities
Equations
Ecological-systems
Superposition approximation
Stochastic spatial models
Pair correlation-function
Spatiotemporal models