Impact of Life-History Evolution on Population Dynamics: Predicting the Presence of Maternal Effects

1995 ◽  
pp. 251-275 ◽  
Author(s):  
MaryCarol Rossiter
2015 ◽  
Vol 103 (4) ◽  
pp. 798-808 ◽  
Author(s):  
Jennifer L. Williams ◽  
Hans Jacquemyn ◽  
Brad M. Ochocki ◽  
Rein Brys ◽  
Tom E. X. Miller

2017 ◽  
Author(s):  
Bethan J. Hindle ◽  
Mark Rees ◽  
Andy W. Sheppard ◽  
Pedro F. Quintana-Ascencio ◽  
Eric S. Menges ◽  
...  

Temporal variability in the environment drives variation in individuals' vital rates, with consequences for population dynamics and life history evolution. Integral projection models (IPMs) are data-driven models widely used to study population dynamics and life history evolution of structured populations in temporally variable environments. However, many data sets have insufficient temporal replication for the environmental drivers of vital rates to be identified with confidence, limiting their use for evaluating population level responses to environmental change. Parameter selection, where the kernel is constructed at each time step by randomly selecting the time-varying parameters from their joint probability distribution, is one approach to including stochasticity in IPMs. We consider a factor analytic (FA) approach for modelling the covariance matrix of time-varying parameters, whereby latent variable(s) describe the covariance among vital rate parameters. This decreases the number of parameters estimated and, where the covariance is positive, the latent variable can be interpreted as a measure of environmental quality. We demonstrate this using simulation studies and two case studies. The simulation studies suggest the FA approach provides similarly accurate estimates of stochastic population growth rate to estimating an unstructured covariance matrix. We demonstrate how the latent parameter can be perturbed to show how selection on reproductive delays in the monocarp Carduus nutans changes under different environmental conditions. We develop a demographic model of the fire dependent herb Eryngium cuneifolium to show how a causal indicator (i.e. a driver of the changes in the environmental quality) can be incorporated with the addition of a single parameter. Using perturbation analyses we determine optimal management strategies for this species. This approach estimates fewer parameters than previous approaches and allows novel eco-evolutionary insights. Predictions on population dynamics and life history evolution under different environmental conditions can be made without necessarily identifying causal factors. Environmental drivers can be incorporated with relatively few parameters, allowing for predictions on how populations will be affected by changes to these drivers.


2010 ◽  
Vol 59 (5) ◽  
pp. 504-517 ◽  
Author(s):  
Jonathan M. Waters ◽  
Diane L. Rowe ◽  
Christopher P. Burridge ◽  
Graham P. Wallis

Sign in / Sign up

Export Citation Format

Share Document