The {logitr} package requires that data be structured in a data.frame
and arranged in a “long” format [@Wickham2014] where each row contains data on a single alternative from a choice observation. The choice observations do not have to be symmetric, meaning they can have a “ragged” structure where different choice observations have different numbers of alternatives. The data must also include variables for each of the following:
1
is chosen, 0
is not chosen). Only one alternative should have a 1
per choice observation.obsID
variable would be 1, 1, 2, 2, 3, 3
.The {logitr} package contains several example data sets that illustrate this data structure. For example, the yogurt
contains observations of yogurt purchases by a panel of 100 households [@Jain1994]. Choice is identified by the choice
column, the observation ID is identified by the obsID
column, and the columns price
, feat
, and brand
can be used as model covariates:
library("logitr")
head(yogurt)
#> id obsID alt choice price feat brand
#> 1 1 1 1 0 8.1 0 dannon
#> 2 1 1 2 0 6.1 0 hiland
#> 3 1 1 3 1 7.9 0 weight
#> 4 1 1 4 0 10.8 0 yoplait
#> 5 1 2 1 1 9.8 0 dannon
#> 6 1 2 2 0 6.4 0 hiland
This data set also includes an alt
variable that determines the alternatives included in the choice set of each observation and an id
variable that determines the individual as the data have a panel structure containing multiple choice observations from each individual.
Variables are modeled as either continuous or discrete based on their data type. Numeric variables are by default estimated with a single “slope” coefficient. For example, consider a data frame that contains a price
variable with the levels $10, $15, and $20. Adding price
to the pars
argument in the main logitr()
function would result in a single price
coefficient for the “slope” of the change in price.
In contrast, categorical variables (i.e. character
or factor
type variables) are by default estimated with a coefficient for all but the first level, which serves as the reference level. The default reference level is determined alphabetically, but it can also be set by modifying the factor levels for that variable. For example, the default reference level for the brand
variable is "dannon"
as it is alphabetically first. To set "weight"
as the reference level, the factor levels can be modified using the factor()
function:
<- yogurt
yogurt2
<- c("weight", "hiland", "yoplait", "dannon")
brands $brand <- factor(yogurt2$brand, levels = brands) yogurt2
If you wish to make dummy-coded variables yourself to use them in a model, I recommend using the dummy_cols()
function from the {fastDummies} package. For example, in the code below, I create dummy-coded columns for the brand
variable and then use those variables as covariates in a model:
<- fastDummies::dummy_cols(yogurt2, "brand") yogurt2
The yogurt2
data frame now has new dummy-coded columns for brand:
head(yogurt2)
#> # A tibble: 6 × 11
#> id obsID alt choice price feat brand brand_weight brand_hiland
#> <dbl> <int> <int> <dbl> <dbl> <dbl> <fct> <int> <int>
#> 1 1 1 1 0 8.1 0 dannon 0 0
#> 2 1 1 2 0 6.10 0 hiland 0 1
#> 3 1 1 3 1 7.90 0 weight 1 0
#> 4 1 1 4 0 10.8 0 yoplait 0 0
#> 5 1 2 1 1 9.80 0 dannon 0 0
#> 6 1 2 2 0 6.40 0 hiland 0 1
#> # … with 2 more variables: brand_yoplait <int>, brand_dannon <int>
Now I can use those columns as covariates:
<- logitr(
mnl_pref_dummies data = yogurt2,
outcome = 'choice',
obsID = 'obsID',
pars = c(
'price', 'feat', 'brand_yoplait', 'brand_dannon', 'brand_weight')
)
summary(mnl_pref_dummies)
#> =================================================
#> Call:
#> logitr(data = yogurt2, outcome = "choice", obsID = "obsID", pars = c("price",
#> "feat", "brand_yoplait", "brand_dannon", "brand_weight"))
#>
#> Frequencies of alternatives:
#> 1 2 3 4
#> 0.402156 0.029436 0.229270 0.339138
#>
#> Exit Status: 3, Optimization stopped because ftol_rel or ftol_abs was reached.
#>
#> Model Type: Multinomial Logit
#> Model Space: Preference
#> Model Run: 1 of 1
#> Iterations: 18
#> Elapsed Time: 0h:0m:0.03s
#> Algorithm: NLOPT_LD_LBFGS
#> Weights Used?: FALSE
#> Robust? FALSE
#>
#> Model Coefficients:
#> Estimate Std. Error z-value Pr(>|z|)
#> price -0.366581 0.024366 -15.045 < 2.2e-16 ***
#> feat 0.491412 0.120063 4.093 4.259e-05 ***
#> brand_yoplait 4.450197 0.187118 23.783 < 2.2e-16 ***
#> brand_dannon 3.715575 0.145419 25.551 < 2.2e-16 ***
#> brand_weight 3.074399 0.145384 21.147 < 2.2e-16 ***
#> ---
#> Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
#>
#> Log-Likelihood: -2656.8878788
#> Null Log-Likelihood: -3343.7419990
#> AIC: 5323.7757575
#> BIC: 5352.7168000
#> McFadden R2: 0.2054148
#> Adj McFadden R2: 0.2039195
#> Number of Observations: 2412.0000000