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mlogit (version 0.2-3)

effects.mlogit: Marginal effects of the covariates

Description

The effects method for mlogit objects computes the marginal effects of the selected covariate on the probabilities of choosing the alternatives

Usage

## S3 method for class 'mlogit':
effects(object, covariate = NULL,
                        type = c("aa", "ar", "rr", "ra"), data = NULL, ...)

Arguments

object
a mlogit object,
covariate
the name of the covariate for which the effect should be computed,
type
the effect is a ratio of two marginal variations of the probability and of the covariate ; these variations can be absolute "a" or relative "r". This argument is a string that contains two letters, the first refers to
data
a data.frame containing the values for which the effects should be calculated. The number of lines of this data.frame should be equal to the number of alternatives,
...
further arguments.

Value

  • If the covariate is alternative specific, a $J$ times $J$ matrix is returned, $J$ being the number of alternatives. Each line contains the marginal effects of the covariate of one alternative on the probability to choose any alternative. If the covariate is individual specific, a vector of length $J$ is returned.

See Also

mlogit for the estimation of multinomial logit models.

Examples

Run this code
data("Fishing", package = "mlogit")
Fish <- mlogit.data(Fishing, varying = c(2:9), shape = "wide", choice = "mode")
m <- mlogit(mode ~ price | income | catch, data = Fish)
# compute a data.frame containing the mean value of the covariates in
# the sample
z <- with(Fish, data.frame(price = tapply(price, index(m)$alt, mean),
                           catch = tapply(catch, index(m)$alt, mean),
                           income = mean(income)))
# compute the marginal effects (the second one is an elasticity
effects(m, covariate = "income", data = z)
effects(m, covariate = "price", type = "rr", data = z)
effects(m, covariate = "catch", type = "ar", data = z)

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