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Marginal effects for the multinomial logit model and cumulative logit/probit/... models and continuation ratio models and stopping ratio models and adjacent categories models: the derivative of the fitted probabilities with respect to each explanatory variable.
margeff(object, subset = NULL, ...)
A vglm
object,
with one of the following family functions:
multinomial
,
cumulative
,
cratio
,
sratio
or
acat
.
Numerical or logical vector, denoting the required observation(s). Recycling is used if possible. The default means all observations.
further arguments passed into the other methods functions.
A
In general, if
is.numeric(subset)
and
length(subset) == 1
then a
Care is needed in interpretation, e.g., the change is not universally accurate for a unit change in each explanatory variable because eventually the `new' probabilities may become negative or greater than unity. Also, the `new' probabilities will not sum to one.
This function is not applicable for models with
data-dependent terms such as bs
and
poly
.
Also the function should not be applied to models with any terms that
have generated more than one column of the LM model matrix,
such as bs
and poly
.
For such try using numerical methods such as finite-differences.
The formula
in object
should comprise of simple terms
of the form ~ x2 + x3 + x4
, etc.
Some numerical problems may occur if the fitted values are
close to 0 or 1 for the
cratio
and
sratio
models.
Models with offsets may result in an incorrect answer.
Computes the derivative of the fitted probabilities of the categorical response model with respect to each explanatory variable. Formerly one big function, this function now uses S4 dispatch to break up the computations.
The function margeff()
is not generic. However, it
calls the function margeffS4VGAM()
which is.
This is based on the class of the VGAMff
argument, and
it uses the S4 function setMethod
to
correctly dispatch to the required methods function.
The inheritance is given by the vfamily
slot of the
VGAM family function.
multinomial
,
cumulative
,
propodds
,
acat
,
cratio
,
sratio
,
vglm
.
# NOT RUN {
# Not a good example for multinomial() because the response is ordinal!!
ii <- 3; hh <- 1/100
pneumo <- transform(pneumo, let = log(exposure.time))
fit <- vglm(cbind(normal, mild, severe) ~ let, multinomial, data = pneumo)
fit <- vglm(cbind(normal, mild, severe) ~ let,
cumulative(reverse = TRUE, parallel = TRUE),
data = pneumo)
fitted(fit)[ii, ]
mynewdata <- with(pneumo, data.frame(let = let[ii] + hh))
(newp <- predict(fit, newdata = mynewdata, type = "response"))
# Compare the difference. Should be the same as hh --> 0.
round(digits = 3, (newp-fitted(fit)[ii, ])/hh) # Finite-difference approxn
round(digits = 3, margeff(fit, subset = ii)["let",])
# Other examples
round(digits = 3, margeff(fit))
round(digits = 3, margeff(fit, subset = 2)["let",])
round(digits = 3, margeff(fit, subset = c(FALSE, TRUE))["let",,]) # recycling
round(digits = 3, margeff(fit, subset = c(2, 4, 6, 8))["let",,])
# }
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