No choice model without choice
data, so this vignette1 provides a reference for data management in
{RprobitB}
. We use the train_choice
data set
for illustration.
{RprobitB}
helps in modeling the choice of individual
deciders of one alternative from a finite set of choice alternatives.
This choice set has to fulfill three properties (Train 2009):
Choices need to be
mutually exclusive (one can choose one and only one alternative that are all different),
exhaustive (the alternatives do not leave other options open),
and finitely many.
Every decider may take one or repeated choices (called choice occasions). The data set thus contains information on
an identifier for each decider (and optionally for each choice situation),
the choices,
alternative and decider specific covariates.
Additionally, {RprobitB}
asks the following formal
requirements:
The data set must be in “wide” format, that means each row provides the full information for one choice occasion.2
It must contain a column with unique identifiers for each decision maker. Additionally, it can contain a column with identifier for each choice situation of each decider. If this information is missing, these identifier are generated automatically by the appearance of the choices in the data set.3
It can contain a column with the observed choices. Such a column is required for model fitting but not for prediction.
It must contain columns for the values of each alternative specific covariate for each alternative and for each decider specific covariate.
The train_choice
data set contains 2929 stated choices
by 235 Dutch individuals deciding between two virtual train trip options
based on the price, the travel time, the level of comfort, and the
number of changes. It fulfills the above requirements: Each row
represents one choice occasion, the columns id
and
choiceid
identify the deciders and the choice occasions,
respectively. The column choice
gives the observed choices.
Four alternative-specific covariates are available, namely
price
, time
, change
, and
comfort
. There values are given for each alternative.4
str(train_choice)
#> 'data.frame': 2929 obs. of 11 variables:
#> $ deciderID : int 1 1 1 1 1 1 1 1 1 1 ...
#> $ occasionID: int 1 2 3 4 5 6 7 8 9 10 ...
#> $ choice : chr "A" "A" "A" "B" ...
#> $ price_A : num 52.9 52.9 52.9 88.1 52.9 ...
#> $ time_A : num 2.5 2.5 1.92 2.17 2.5 ...
#> $ change_A : int 0 0 0 0 0 0 0 0 0 0 ...
#> $ comfort_A : int 1 1 1 1 1 0 1 1 0 1 ...
#> $ price_B : num 88.1 70.5 88.1 70.5 70.5 ...
#> $ time_B : num 2.5 2.17 1.92 2.5 2.5 ...
#> $ change_B : int 0 0 0 0 0 0 0 0 0 0 ...
#> $ comfort_B : int 1 1 0 0 0 0 1 0 1 0 ...
We have to inform {RprobitB}
about the covariates we
want to include in our model via specifying a formula
object. Say we want to model the utility Un, t, j
of decider n at choice
occasion t for alternative
j via the linear equation
Un, t, j = An, t, jβ1 + Bn, tβ2, j + Cn, t, jβ3, j + ϵn, tj. Here, A and C are alternative and choice situation specific covariates, whereas B is choice situation specific. The coefficient β1 is generic (i.e. the same for each alternative), whereas β2, j and β3, j are alternative specific.
To represent this structure, the formula
object is of
the form (analogously to {mlogit}
)
choice ~ A | B | C
, where
choice
is the dependent variable (the discrete
choice we aim to explain),
A
are alternative and choice situation specific
covariates with a generic coefficient (we call them covariates of type
1),
B
are choice situation specific covariates with
alternative specific coefficients5 (we call them covariates of type
2),
and C
are alternative and choice situation specific
covariates with alternative specific coefficients (we call them
covariates of type 3).
Specifying a formula
object for {RprobitB}
must be consistent with the following rules:
By default, alternative specific constants (ASCs)6 are added to the
model. They can be removed by adding + 0
in the second
spot, e.g. choice ~ A | B + 0 | C
.
To exclude covariates of the backmost categories, use either
0
, e.g. choice ~ A | B | 0
or just leave this
part out and write choice ~ A | B
. However, to exclude
covariates of front categories, we have to use 0
,
e.g. choice ~ 0 | B
.
To include more than one covariate of the same category, use
+
, e.g. choice ~ A1 + A2 | B
.
If we don’t want to include any covariates of the second category
but we want to estimate alternative specific constants, add
1
in the second spot, e.g. choice ~ A | 1
. The
expression choice ~ A | 0
is interpreted as no covariates
of the second category and no alternative specific constants.
To impose random effects for specific variables, we need to define a
character vector re
with the corresponding variable names.
To have random effects for the alternative specific constants, include
"ASC"
in re
.
We specify a model formula for the train_choice
data
set. Say we want to include all the covariates price
,
time
, comfort
, and change
, which
are all alternative specific (that is, they contain a potentially
different value for each alternative, such as different prices for A and
B), so either of type 1 or type 3. The difference between type 1 and
type 3 is that in the former case, we would estimate a generic
coefficient (i.e. a coefficient that is constant across alternatives),
whereas in the latter case, we would estimate alternative specific
coefficients. Deciding between type 1 and type 3 for these covariates
belongs into the topic of model selection, for which we provide a
separate vignette. For now, we go with type 1 for all covariates and
remove ASCs:
Additionally, we specify random effects for price
and
time
(because we would typically expect heterogeneity
here):
prepare_data()
functionBefore model estimation with {RprobitB}
, any empirical
choice data set choice_data
must pass the
prepare_data()
function:
The function performs compatibility checks and data transformations
and returns an object of class RprobitB_data
that can be
fed into the estimation routine fit_model()
. The following
arguments are optional:
re
: The character vector of variable names of
form
with random effects. re = NULL
per
default, i.e. no random effects.
alternatives
: We may not want to consider all
alternatives in choice_data
. In that case, we can specify a
character vector alternatives
with selected names of
alternatives. If not specified, the choice set is defined by the
observed choices.
id
: A character (single string), the name of the
column in choice_data
that contains a unique identifier for
each decision maker. The default is "id"
.
idc
: A character, the name of the column in
choice_data
that contains a unique identifier for each
choice situation given the decision maker. Per default, these identifier
are generated by the appearance of the choices in the data set.
standardize
: A character vector of variable names of
form
that get standardized. Covariates of type 1 or 3 have
to be addressed by <covariate>_<alternative>
.
If standardize = "all"
, all covariates get standardized.
Per default, no covariate is standardized.
impute
: Specifies how to handle missing entries
(NA, NaN, -Inf, Inf
) in choice_data
. The
following options are available:
"complete_cases"
, which removes rows containing
missing entries (the default),
"zero"
, which replaces missing entries by
zero,
"mean"
, which imputes missing entries by the
covariate mean.
The two choice alternatives from the train trip example are
unordered. If we had asked “rate your train trip from 1 (horrible) to 7
(great)”, then the respondents would choose from a set of ordered
alternatives. Such ordered alternatives can by analyzed by setting
ordered = TRUE
in prepare_data
. In this case,
alternatives
becomes a mandatory argument, where the
alternatives must be named from worst to best.
Rather than recording only the single most preferred alternative,
some surveys ask for a full ranking of all the alternatives, which
reveals far more about the underlying preferences. Ranked choices can by
analyzed by setting ranked = TRUE
in
prepare_data()
. The choice column of the data set must
provide the full ranking for each choice occasion (from most preferred
to least preferred), where the alternatives are separated by commas.
The ranked probit model follows directly from the basic multivariate case. The only difference is that we take flexible utility differences such that the differenced utility vector is always negative. Thereby, we incorporate information of the full ranking.
The simulate_choices
function simulates discrete choice
data from a prespecified probit model. Say we want to simulate the
choices of N
deciders in T
choice occasions7 among
J
alternatives from a model formulation form
,
we have to call
The function simulate_choices()
has the following
optional arguments:
re
: The character vector of variable names of
form
with random effects.
alternatives
: A character vector of length
J
with the names of the choice alternatives. If not
specified, the alternatives are labeled by the first J
upper-case letters of the Roman alphabet.
covariates
: A named list of covariate values. Each
element must be a vector of length equal to the number of choice
occasions and named according to a covariate, or follow the naming
convention for alternative specific covariates,
i.e. <covariate>_<alternative>
. Covariates for
which no values are specified are drawn from a standard normal
distribution.
standardize
: A character vector of variable names of
form
that get standardized.
seed
: Set a seed for the simulation.
We can specify the true parameters8 by adding a named list with values for
alpha
, the fixed coefficient vector,
C
, the number (greater or equal 1) of latent classes
of decision makers,
s
, the vector of class weights,
b
, the matrix of class means as columns,
Omega
, the matrix of class covariance matrices as
columns,
Sigma
, the differenced error term covariance matrix,
or Sigma_full
, the full error term covariance
matrix,
beta
, the matrix of the decision-maker specific
coefficient vectors,
z
, the class allocation vector,
d
, the vector of logarithmic threshold increments in
the ordered probit case.
True parameters that are not specified will be set at random.
For illustration, we simulate the choices of N = 100
deciders at T = 10
choice occasions between the
alternatives A
and B
:
N <- 100
T <- 10
alternatives <- c("A", "B")
base <- "B"
form <- choice ~ var1 | var2 | var3
re <- c("ASC", "var2")
{RprobitB}
provides the function
overview_effects()
which can be used to get an overview of
the effects for which parameters can be specified:
overview_effects(form = form, re = re, alternatives = alternatives, base = base)
#> effect as_value as_coef random
#> 1 var1 TRUE FALSE FALSE
#> 2 var3_A TRUE TRUE FALSE
#> 3 var3_B TRUE TRUE FALSE
#> 4 var2_A FALSE TRUE TRUE
#> 5 ASC_A FALSE TRUE TRUE
Hence, the coefficient vector alpha
must be of length 3,
where the elements 1 to 3 correspond to var1
,
var3_A
, and var3_B
, respectively. The matrix
b
must be of dimension 2 x C
, where (by
default) C = 1
and row 1 and 2 correspond to
var2_A
and ASC_A
, respectively.
data <- simulate_choices(
form = form,
N = N,
T = T,
J = 2,
re = re,
alternatives = alternatives,
seed = 1,
true_parameter = list(
alpha = c(-1, 0, 1),
b = matrix(c(2, -0.5), ncol = 1)
)
)
summary(data)
#> count
#> deciders 100
#> choice occasions 10
#> total choices 1000
#> alternatives 2
#> - 'A' 435
#> - 'B' 565
We can visualize the covariates grouped by the chosen alternatives:
What we see is consistent with our specification: Higher values of
var1_A
for example correspond more frequently to choice
B
(upper-right panel), because the coefficient of
var1
(the first value of alpha
) is
negative.
The function train_test()
can be used to split the
output of prepare_data()
or simulate_choices()
into a train and a test subset. This is useful when evaluating the
prediction performance of a fitted model. For example, the following
code puts 70% of deciders from our simulated data
into the
train subsample and 30% of deciders in the test subsample:
train_test(data, test_proportion = 0.3, by = "N")
#> $train
#> Simulated data of 700 choices.
#>
#> $test
#> Simulated data of 300 choices.
Alternatively, the following code puts 2 randomly chosen choice
occasions per decider from data
into the test subsample,
the rest goes into the train subsample:
This vignette is build using R 4.4.2 with the
{RprobitB}
1.1.4 package.↩︎
The{tidyr}
package [contains functionality](https://tidyr.tidyverse.org/articles/pivot.html) that can transform a
data.frame`
into this format.↩︎
The choice situation identifier are irrelevant for model
estimation because {RprobitB}
does not model correlation
over choice occasions. They are useful to identify specific choice
occasions later on.↩︎
For alternative specific variables, the alternative
names must be added to the covariates via the _
separator.↩︎
Mind that not all alternative specific coefficients of type 2-covariates are identified. This is because the probit model is estimated on utility differences since the level of the utility is irrelevant, see the vignette on the model definition. Therefore, the coefficient of the last alternative of each type 2-covariate is set to 0.↩︎
ASCs capture the average effect on utility of all factors that are not included in the model. Due to identifiability, we cannot estimate ASCs for all the alternatives. Therefore, they are added for all except for the last alternative.↩︎
T
can be either a positive number,
representing a fixed number of choice occasions for each decision maker,
or a vector of length N
with decision maker specific
numbers of choice occasions.↩︎
See the vignette on the model definition for more details, especially for the meaning of the parameters.↩︎