0

I want to fit a multinomial model with nnet::multinom() and get predictions with ggeffects::ggemmeans(). Whereas such procedure works in regular code, I fail to wrap this in a function.

Example

Data

library(dplyr)

my_mtcars <- 
  mtcars %>%
  mutate(across(c(vs, carb), as.factor)) %>%
  as_tibble()

Fitting and predicting works in the following way

library(nnet) # 7.3-15
library(emmeans) # 1.5.4
library(ggeffects) # 1.0.2

m <- multinom(carb ~ vs, data = my_mtcars)
ggemmeans(model = m, terms = "vs")

## # Predicted probabilities of carb
## # x = vs

## # Response Level = 1

## x | Predicted |       95% CI
## ----------------------------
## 0 |      0.00 | [0.00, 0.00]
## 1 |      0.50 | [0.43, 0.57]

## # Response Level = 2

## x | Predicted |       95% CI
## ----------------------------
## 0 |      0.28 | [0.24, 0.32]
## 1 |      0.36 | [0.30, 0.42]

## # Response Level = 3

## x | Predicted |       95% CI
## ----------------------------
## 0 |      0.17 | [0.14, 0.19]
## 1 |      0.00 | [0.00, 0.00]

## # Response Level = 4

## x | Predicted |       95% CI
## ----------------------------
## 0 |      0.44 | [0.39, 0.50]
## 1 |      0.14 | [0.12, 0.17]

## # Response Level = 6

## x | Predicted |       95% CI
## ----------------------------
## 0 |      0.06 | [0.05, 0.06]
## 1 |      0.00 | [0.00, 0.00]

## # Response Level = 8

## x | Predicted |       95% CI
## ----------------------------
## 0 |      0.06 | [0.05, 0.06]
## 1 |      0.00 | [0.00, 0.00]

But when I try to wrap this procedure in a custom function it fails

my_multinom <- function(dat, dv, expl) {
  
  frmla <- as.formula(paste0(dv, "~", expl))
  
  model_fit <- nnet::multinom(frmla, data = dat)
  ggemmeans(model = model_fit, terms = expl)
}

my_multinom(dat = my_mtcars, dv = "carb", expl = "vs")

Error in object$call$formula[[2]] :
object of type 'symbol' is not subsettable

Notably, it seems that the problem lies in the interaction between multinom() and ggemmeans(). If we omit ggemmeans() from my_multinom() then it seems to work OK:

my_multinom_no_ggemmeans <- function(dat, dv, expl) {
  
  frmla <- as.formula(paste0(dv, "~", expl))
  model_fit <- nnet::multinom(frmla, data = dat)
  model_fit
}

my_multinom_no_ggemmeans(dat = my_mtcars, dv = "carb", expl = "vs")

## # weights:  18 (10 variable)
## initial  value 57.336303 
## iter  10 value 38.192450
## iter  20 value 37.940409
## final  value 37.940164 
## converged
## Call:
## nnet::multinom(formula = frmla, data = dat)

## Coefficients:
##   (Intercept)       vs1
## 2    13.44961 -13.78607
## 3    12.93879 -33.99280
## 4    13.91961 -15.17237
## 6    11.84015 -23.96194
## 8    11.84015 -23.96194

## Residual Deviance: 75.88033 
## AIC: 95.88033 

Any idea why my_multinom() wrapper fails?


UPDATE


I may have found a solution but I don't understand why it works. Based on this github issue (a different package), I've adapted the following solution:

my_multinom_with_do.call <- function(dat, dv, expl) {

  frmla <- as.formula(paste0(dv, "~", expl))

  model_fit <- do.call(multinom, args = list(formula = frmla, data = dat))
  ggemmeans(model = model_fit, terms = expl)
}

And it works:

my_multinom_with_do.call(dat = my_mtcars, dv = "carb", expl = "vs")

But why this works whereas my original my_multinom() didn't?

1

It doesn't work because of lazy evaluation. The call member of model_fit has formula = frmla, unevaluated. The emmeans support for that model is expecting a formula there. It will work if you add a line to the original function:

my_multinom <- function(dat, dv, expl) {
    
    frmla <- as.formula(paste0(dv, "~", expl))
    
    model_fit <- nnet::multinom(frmla, data = dat)
    model_fit$call$formula <- frmla
    ggemmeans(model = model_fit, terms = expl)
}

The reason the do.call method does work is that frmla is evaluated when you create the list that is passed to do.call.

1
  • 1
    I added a step to evaluate the formula (in the environment for the model's terms) before extracting the 2nd element (lhs of the formula, needed to get the levels of the multinomial response). So, after the next emmeans update to CRAN (soon), the extra line will not needed. – Russ Lenth Mar 17 at 21:19

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.