Type: | Package |
Title: | Boosting Conditional Logit Model |
Version: | 1.1 |
Date: | 2015-12-09 |
Author: | Haolun Shi and Guosheng Yin |
Maintainer: | Haolun Shi <shl2003@connect.hku.hk> |
Description: | A set of functions to fit a boosting conditional logit model. |
License: | GPL-2 | GPL-3 [expanded from: GPL (≥ 2)] |
Imports: | Rcpp (≥ 0.11.6) |
LinkingTo: | Rcpp |
LazyData: | True |
NeedsCompilation: | yes |
Packaged: | 2015-12-21 04:17:59 UTC; ra3 |
Repository: | CRAN |
Date/Publication: | 2015-12-21 08:54:58 |
Boosting conditional logit model
Description
Fit a boosting conditional logit model using componentwise smoothing spline.
Usage
clogitboost(y, x, strata, iter, rho)
Arguments
y |
vector of binary outcomes. |
x |
matrix or data frame with each column being a covariate. |
strata |
vector of group membership, i.e., items in the same group have the same value. |
iter |
number of iterations. |
rho |
learning rate parameter in the boosting algorithm. |
Value
The function clogitboost
returns the following list of values:
call |
original function call. |
func |
list of fitted spline functions. |
index |
list of indices indicating which covariate is used as input for the smoothing spline. |
theta |
list of fitted coefficients in the conditional logit models. |
loglike |
sequence of fitted values of log-likelihood. |
infscore |
relative influence score for each covariate. |
rho |
learning rate parameter, which typically takes a value of 0.05 or 0.1. |
xmax |
maximal element of each covariate. |
xmin |
minimal element of each covariate. |
Author(s)
Haolun Shi shl2003@connect.hku.hk
Guosheng Yin gyin@hku.hk
See Also
Examples
data(travel)
train <- 1:504
y <- travel$MODE[train]
x <- travel[train, 3:6]
strata <- travel$Group[train]
fit <- clogitboost(y = y, x = x, strata = strata, iter = 10, rho = 0.05)
Marginal utility for clogitboost objects
Description
marginal
function for the clogitboost
objects, which produces the marginal utility values of a covariate.
Usage
marginal(x, grid, d)
Arguments
x |
output object from the |
d |
integer indicating which covariate is used. |
grid |
grid of values for predicting the marginal utilities. |
Value
The method marginal
returns a vector of predicted marginal utilities based on the grid input.
Author(s)
Haolun Shi shl2003@connect.hku.hk
Guosheng Yin gyin@hku.hk
See Also
Examples
data(travel)
train <- 1:504
y <- travel$MODE[train]
x <- travel[train, 3:6]
strata <- travel$Group[train]
fit <- clogitboost(y = y, x = x, strata = strata, iter = 10, rho = 0.05)
marginal(fit, grid = seq(0, 10, by = 1), d = 1)
Plotting after fitting a boosting conditional logit model
Description
plot
methods for the clogitboost
objects, which produce marginal plots of the covariate effects.
Usage
## S3 method for class 'clogitboost'
plot(x, d, grid = NULL, ...)
Arguments
x |
output object from the |
d |
integer indicating which covariate is used. |
grid |
grid of values for plotting. If it is not specified, the minimal and maximal elements of the covariate are used as the two endpoints of the grid. |
... |
other options for plotting. |
Author(s)
Haolun Shi shl2003@connect.hku.hk
Guosheng Yin gyin@hku.hk
See Also
Examples
data(travel)
train <- 1:504
y <- travel$MODE[train]
x <- travel[train, 3:6]
strata <- travel$Group[train]
fit <- clogitboost(y = y, x = x, strata = strata, iter = 10, rho = 0.05)
plot(fit, d = 1, xlab = "x", ylab = "f(x)", main = "TTIME", type = "l")
Predicting after fitting a boosting conditional logit model
Description
predict
methods for the clogitboost
objects, which produce marginal predictions of the covariate effects.
Usage
## S3 method for class 'clogitboost'
predict(object, x, strata, ...)
Arguments
object |
output object from the |
x |
new matrix or data frame with each column being a covariate. |
strata |
new vector of group memberships, i.e., items in the same group have the same value. |
... |
not currently used. |
Value
The method predict
returns the following list of values:
prob |
probability of the outcome equal to 1. |
utility |
predicted utility. |
prediction |
0-1 prediction of the outcome variable. |
Author(s)
Haolun Shi shl2003@connect.hku.hk
Guosheng Yin gyin@hku.hk
See Also
Examples
data(travel)
train <- 1:504
y <- travel$MODE[train]
x <- travel[train, 3:6]
strata <- travel$Group[train]
fit <- clogitboost(y = y, x = x, strata = strata, iter = 10, rho = 0.05)
predict(fit, x = travel[-train, 3:6], strata = travel$Group[-train])
Summary after fitting a boosting conditional logit model
Description
summary
methods for the clogitboost
objects.
Usage
## S3 method for class 'clogitboost'
summary(object, ...)
Arguments
object |
output object from the |
... |
not currently used. |
Value
The function clogitboost()
returns the following list of values:
call |
original function call. |
infscore |
relative influence score for each covariate. |
loglike |
sequence of the fitted values of log-likelihood. |
Author(s)
Haolun Shi shl2003@connect.hku.hk
Guosheng Yin gyin@hku.hk
See Also
Examples
data(travel)
train <- 1:504
y <- travel$MODE[train]
x <- travel[train, 3:6]
strata <- travel$Group[train]
fit <- clogitboost(y = y, x = x, strata = strata, iter = 10, rho = 0.05)
summary(fit)
Australian travel mode choice data
Description
The dataset is a survey result of 210 individuals' choices of travel mode between Sydney, Melbourne and New South Wales. There are four alternative choices, along with four choice-specific covaraites for each choice.
Usage
data("travel")
Format
A data frame with 840 observations on the following 6 variables.
Group
index of the group membership.
MODE
binary outcome of whether the item is chosen.
TTME
terminal time.
INVC
in-vehicle cost.
INVT
amount of time spent traveling.
GC
genearlized cost of travel.
Source
Greene W (2008). Econometric Analysis, 6th edition. Prentice Hall.