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mlogit (version 1.1-1)

Multinomial Logit Models

Description

Maximum likelihood estimation of random utility discrete choice models. The software is described in Croissant (2020) and the underlying methods in Train (2009) .

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Version

Install

install.packages('mlogit')

Monthly Downloads

8,418

Version

1.1-1

License

GPL (>= 2)

Maintainer

Last Published

October 2nd, 2020

Functions in mlogit (1.1-1)

Fishing

Choice of Fishing Mode
Catsup

Choice of Brand for Catsup
Electricity

Stated preference data for the choice of electricity suppliers
Cracker

Choice of Brand for Crakers
HC

Heating and Cooling System Choice in Newly Built Houses in California
Car

Stated Preferences for Car Choice
Game

Ranked data for gaming platforms
JapaneseFDI

Japanese Foreign Direct Investment in European Regions
Mode

Mode Choice
effects.mlogit

Marginal effects of the covariates
Heating

Heating System Choice in California Houses
cor.mlogit

Correlation structure of the random parameters
distribution

Functions used to describe the characteristics of estimated random parameters
ModeCanada

Mode Choice for the Montreal-Toronto Corridor
vcov.mlogit

vcov method for mlogit objects
mlogit-package

mlogit package: estimation of random utility discrete choice models by maximum likelihood
logsum

Compute the log-sum or inclusive value/utility
NOx

Technologies to reduce NOx emissions
hmftest

Hausman-McFadden Test
miscmethods.mlogit

Methods for mlogit objects
mlogit

Multinomial logit model
RiskyTransport

Risky Transportation Choices
Train

Stated Preferences for Train Traveling
mlogit-deprecated

Some deprecated functions, especially mlogit.data, index and mFormula
rpar

random parameter objects
scoretest

The three tests for mlogit models
plot.mlogit

Plot of the distribution of estimated random parameters
reexports

Objects exported from other packages
has.intercept

Indicates whether the formula contains an intercept
model.matrix.dfidx_mlogit

Compute the model matrix for RUM
mlogit.optim

Non-linear minimization routine