| model.average {secr} | R Documentation |
AICc-weighted average of estimated 'real' or 'beta' parameters from multiple fitted secr models.
model.average(..., realnames = NULL, betanames = NULL, newdata = NULL,
alpha = 0.05, dmax = 10, covar = FALSE, average = 'link')
collate (..., realnames = NULL, betanames = NULL, newdata = NULL,
alpha = 0.05, perm = 1:4, fields = 1:4)
... |
secr objects |
realnames |
character vector of real parameter names |
betanames |
character vector of beta parameter names |
newdata |
optional dataframe of values at which to evaluate models |
alpha |
alpha level for confidence intervals |
dmax |
numeric, the maximum AIC difference for inclusion in confidence set |
covar |
logical, if TRUE then return variance-covariance matrix |
average |
character string for scale on which to average real parameters |
perm |
permutation of dimensions in output from collate |
fields |
vector to restrict summary fields in output |
Models to be compared must have been fitted to the same data and use the
same likelihood method (full vs conditional). If realnames ==
NULL and betanames == NULL then all real parameters will be
averaged; in this case all models must use the same real parameters. To
average beta parameters, specify betanames (this is ignored if a
value is provided for realnames). See predict.secr
for an explanation of the optional argument newdata;
newdata is ignored when averaging beta parameters.
Model-averaged estimates for parameter theta are given by
theta-hat = sum( w_k * theta-hat_k)
where the subscript k refers to a specific
model and the w_k are AIC weights with small sample adjustment
(see AIC.secr for details). Averaging of real parameters
may be done on the link scale before back-transformation
(average='link') or after back-transformation
(average='real').
Models for which dAICc > dmax are given a weight of zero and
effectively are excluded from averaging.
Also,
var(theta-hat) = sum(w_k (var(theta-hat_k) + beta_k^2))
where beta-hat_k = theta-hat_k – theta-hat and the variances are asymptotic estimates from fitting each model k. This follows Burnham and Anderson (2004) rather than Buckland et al. (1997).
collate extracts parameter estimates from a set of fitted secr
model objects. fields may be used to select a subset of summary
fields ('estimate','SE.estimate','lcl','ucl') by name or number.
For model.average, an array of model-averaged estimates, their
standard errors, and a 100(1-alpha)% confidence
interval. The interval for real parameters is backtransformed from the
link scale. If there is only one row in newdata or beta
parameters are averaged or averaging is requested for only one parameter
then the array is collapsed to a matrix. If covar = TRUE then a
list is returned with separate components for the estimates and the
variance-covariance matrices.
For collate, a 4-dimensional array of model-specific parameter
estimates. By default, the dimensions correspond respectively to rows in
newdata (usually sessions), models, statistic fields (estimate, SE.estimate, lcl,
ucl), and parameters ('D', 'g0' etc.). For particular comparisons it often helps
to reorder the dimensions with the perm argument.
Murray Efford murray.efford@otago.ac.nz
Buckland S. T., Burnham K. P. and Augustin, N. H. (1997) Model selection: an integral part of inference. Biometrics 53, 603–618.
Burnham, K. P. and Anderson, D. R. (2002) Model Selection and Multimodel Inference: A Practical Information-Theoretic Approach. Second edition. New York: Springer-Verlag.
Burnham, K. P. and Anderson, D. R. (2004) Multimodel inference - understanding AIC and BIC in model selection. Sociological Methods & Research 33, 261–304.
## Compare two models fitted previously
## secrdemo.0 is a null model
## secrdemo.b has a learned trap response
data(secrdemo)
model.average(secrdemo.0, secrdemo.b)
model.average(secrdemo.0, secrdemo.b, betanames = c('D','g0','sigma'))
## In this case we find the difference was actually trivial...
## (subscripting of output is equivalent to setting fields = 1)
collate (secrdemo.0, secrdemo.b, perm = c(4,2,3,1))[,,1,]