Title: Handling uncertainty in models of population dynamics
1Handling uncertainty in models of population
dynamics
- S.T. Buckland, K.B. Newman,
- L. Thomas and J. Harwood
- University of St Andrews
- Carmen Fernández
- University of Lancaster and Institute of Marine
Research, Vigo
2AIMA generalized methodology for defining and
fitting matrix population models that
accommodates process variation (demographic and
environmental stochasticity), observation error
and model uncertainty
3Hidden process models
- Special case
- state-space models
- (first-order Markov)
4States
We categorize animals by their state, and
represent the population as numbers of animals
by state.
Examples of factors that determine state age
sex size class genotype sub-population
(metapopulations) species (e.g. predator-prey
models, community models).
5States
Suppose we have m states at the start of year t.
Then numbers of animals by state are
NB These numbers are unknown!
6Intermediate states
The process that updates nt to nt1 can be split
into ordered sub-processes.
e.g. survival ageing births
7Survival sub-process
Given nt
NB a model (involving hyperparameters) can be
specified for
8Ageing sub-process
No first-year animals left!
Given us,t
NB process is deterministic
9Birth sub-process
Given ua,t
New first-year animals
NB a model may be specified for
10The BAS model
where
11The BAS model
12Leslie matrix
The product BAS is a Leslie projection matrix
13Other processes
Growth sex assignment genotype assignment
movement (metapopulations) competition predato
r-prey effects
14Observation equation
e.g. metapopulation with two sub-populations,
each split into adults and young, unbiased
estimates of total abundance of each
sub-population available
15Fitting models to time series of data
- Kalman filter
- Normal errors, linear models
- or linearizations of non-linear models
- Markov chain Monte Carlo
- Sequential Monte Carlo methods
16Elements required for Bayesian inference
Prior for parameters
pdf (prior) for initial state
pdf for state at time t given earlier states
Observation pdf
17Bayesian inference
Joint prior for and the
Likelihood
Posterior
18Types of inference
Filtering
Smoothing
One step ahead prediction
19Generalizing the framework
by
where
and is a possibly random operator
20Incorporating model uncertainty
- MCMC use reversible jump MCMC
Sequential MC methods define a set of models
and associated prior, and use model averaging
21Example British grey seals
22Estimated pup production
23Population dynamics model
- Predictions constrained to be biologically
realistic - Can predict outcomes from different management
actions - Framework for exploring ecological processes
(e.g. density dependence operating on different
processes)
24Posterior parameter estimates
25Smoothed pup estimates
26Predicted adults
27References
Buckland, S.T., Newman, K.B., Thomas, L. and
Koesters, N.B. 2004. State-space models for the
dynamics of wild animal populations. Ecological
Modelling 171, 157-175.
Thomas, L., Buckland, S.T., Newman, K.B. and
Harwood, J. 2005. A unified framework for
modelling wildlife population dynamics.
Australian and New Zealand Journal of Statistics
47, 19-34.
Newman, K.B., Buckland, S.T., Lindley, S.T.,
Thomas, L. and Fernández, C. in press. Hidden
process models for animal population dynamics.
Ecological Applications.