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MuMIn (version 1.47.5)

jackknifeWeights: Jackknifed model weights

Description

Computes model weights optimized for jackknifed model fits.

Usage

jackknifeWeights(
  object, ..., data, type = c("loglik", "rmse"),
  family = NULL, weights = NULL,
  optim.method = "BFGS", maxit = 1000, optim.args = list(),
  start = NULL, force.update = FALSE, py.matrix = FALSE
)

Value

The function returns a numeric vector of model weights.

Arguments

object, ...

two or more fitted glm objects, or a list of such, or an "averaging" object.

data

a data frame containing the variables in the model. It is optional if all models are glm.

type

a character string specifying the function to minimize. Either "rmse" or "loglik".

family

used only if type = "loglik", a family object to be used for likelihood calculation. Not needed if all models share the same family and link function.

weights

an optional vector of ‘prior weights’ to be used in the model fitting process. Should be NULL or a numeric vector.

optim.method

optional, optimisation method, passed to optim.

maxit

optional, the maximum number of iterations, passed to optim.

optim.args

optional list of other arguments passed to optim.

start

starting values for model weights. Numeric of length equal the number of models.

force.update

for glm, the glm.fit function is used for fitting models to the train data, which is much more efficient. Set to TRUE to use update instead.

py.matrix

either a boolean value, then if TRUE a jackknifed prediction matrix is returned and if FALSE a vector of jackknifed model weights, or a N×M matrix (number of cases × number of models) that is interpreted as a jackknifed prediction matrix and it is used for optimisation (i.e. the jackknife procedure is skipped).

Author

Kamil Bartoń. Carsten Dormann

Details

Model weights are chosen (using optim) to minimise RMSE or log-likelihood of the prediction for data point i, of a model fitted omitting that data point i. The jackknife procedure is therefore run for all provided models and for all data points.

References

Hansen, B. E. and Racine, J. S. 2012 Jackknife model averaging. Journal of Econometrics 979, 38–46

Dormann, C. et al. 2018 Model averaging in ecology: a review of Bayesian, information-theoretic, and tactical approaches for predictive inference. Ecological Monographs 88, 485–504.

See Also

Weights, model.avg

Other model weights: BGWeights(), bootWeights(), cos2Weights(), stackingWeights()

Examples

Run this code
fm <- glm(Prop ~ mortality * dose, binomial(), Beetle, na.action = na.fail)

fits <- lapply(dredge(fm, eval = FALSE), eval)

amJk <- amAICc <- model.avg(fits)
set.seed(666)
Weights(amJk) <- jackknifeWeights(fits, data = Beetle)

coef(amJk)
coef(amAICc)

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