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MuMIn (version 1.13.4)

Weights: Akaike weights

Description

Calculate or extract normalized model likelihoods (Akaike weights).

Usage

Weights(x)

Arguments

x
a numeric vector of information criterion values such as AIC, or objects returned by functions like AIC. There are also methods for extracting Akaike weights from a "model.selection" or "averaging"

Value

  • A numeric vector of normalized likelihoods.

encoding

utf-8

See Also

importance, weighted.mean

weights, which extracts fitting weights from model objects.

Examples

Run this code
fm1 <- glm(Prop ~ dose, data = Beetle, family = binomial)
fm2 <- update(fm1, . ~ . + I(dose^2))
fm3 <- update(fm1, . ~ log(dose))
fm4 <- update(fm3, . ~ . + I(log(dose)^2))

round(Weights(AICc(fm1, fm2, fm3, fm4)), 3)

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