Individual-based integral projection models: the role of size-structure on extinction risk and establishment success
Authored by Sebastian J Schreiber, Noam Ross
Date Published: 2016
DOI: 10.1111/2041-210x.12537
Sponsors:
United States National Science Foundation (NSF)
Platforms:
R
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
https://zenodo.org/record/32086
Abstract
Matrix models or integral projection models (IPMs) are commonly used to
study the dynamics of structured populations, where discrete or
continuous traits influence survival, growth or reproduction. When a
population's size is small, as is often the case for threatened species
or potentially invasive species arriving in novel habitats, extinction
risk may be substantial due to demographic stochasticity. Branching
processes, which are individual-based counterparts to matrix models and
IPMs, allow one to quantify these risks of extinction. For discretely
structured populations, the theory of multitype branching processes
provides analytic methods to compute how extinction risk changes over
time and how it depends on the size and composition of the population.
Building on prior work on continuous-state branching processes, we
extend these analytic methods to individual-based models accounting for
any mixture of discrete and continuous population structure. The
individual-based IPMs are defined by probabilistic update rules at the
level of the individual which determine how each individual with a given
trait value dies, changes trait values (e.g. grows in size) or produces
individuals with the same or other trait values. We show that
probabilities of extinction can be analytically determined by
probability-generating functionals associated with the individual-based
IPMs. In particular, we present analytical expressions for how
extinction probabilities change over time and depend on the initial
abundance and trait distribution of the population. We illustrate how to
numerically implement these methods using data from the short-lived
desert shrub species Cryptantha flava and provide a more general
discussion of how to implement these methods to other data sets
including those involving fluctuating environmental conditions. As most
IPM studies have the necessary data to parameterize individual-based
IPMs, these methods provide a computationally efficient means to explore
how continuously structured populations differing in their evolutionary
history and environmental context may differ in their vulnerability to
extinction or ability to colonize new habitats.
Tags
Evolution
emergence
probability
Demography
ecology
Guide
Construction
Environments