4

I am trying to grasp tidy evaluation from rlang. As a short example I would like to add a column of predictions to a data frame. This is implemented in modelr, but I wanted to pass the formula directly so I could practice some tidy evaluation.

I have the following function

add_predictions <- function(data, model_exp){
  enquo_model_exp <- enquo(model_exp)
  fit <- data %>% as_tibble()  %>% !!enquo_model_exp
  data[[preds]] <- stats::predict(fit, data)
}

The above function has the following steps

  1. enquo the formula

  2. fit a model with the data and unqoute the formula with !!

  3. predict using the fitted model on the data

an example of this functions usage would be something like the following.

cars %>% 
  as_tibble() %>% 
  add_predictions(lm(speed ~ dist, data = .))

1 Answer 1

4
+50

Passing formulas as arguments is straightforward and I wouldn't recommend tidy evaluation for that. I would do this as follows (using just a bit of tidyeval for the new column name):

library(tidyverse)

add_predictions <- function(.data, formula,
                            .fun = lm, col = pred) {
  col <- enquo(col)
  col <- quo_name(col)
  mod <- .fun(formula = formula, data = .data)
  mutate(.data, !! col := predict(mod))
}

cars %>% 
  add_predictions(speed ~ dist, col = speed_pred) 

#    speed dist speed_pred
# 1      4    2   8.615041
# 2      4   10   9.939581
# 3      7    4   8.946176
# 4      7   22  11.926392
# 5      8   16  10.932987
# 6      9   10   9.939581
# 7     10   18  11.264122
# 8     10   26  12.588663
# 9     10   34  13.913203
# 10    11   17  11.098554
# ...

Now I understand that you want to use tidy evaluation as an exercise. Using your desired function signature:

add_predictions_2 <- function(.data, model_exp, col = pred) {
  col <- enquo(col)
  col <- quo_name(col)
  model_exp <- enquo(model_exp)
  mod <- rlang::eval_tidy(model_exp, data = list(. = .data))
  mutate(.data, !! col := predict(mod))
}

cars %>% 
  as_tibble() %>% 
  add_predictions_2(lm(speed ~ dist, data = .))

# # A tibble: 50 x 3
#    speed  dist  pred
#    <dbl> <dbl> <dbl>
#  1     4     2  8.62
#  2     4    10  9.94
#  3     7     4  8.95
#  4     7    22 11.9 
#  5     8    16 10.9 
#  6     9    10  9.94
#  7    10    18 11.3 
#  8    10    26 12.6 
#  9    10    34 13.9 
# 10    11    17 11.1 
# # ... with 40 more rows
3
  • The := function is new to me. Could you explain how it works? Also, how do you know what should have a . in front of it. If .s represent variables which are passed to the function then wouldn't all the variables be dotted (.data, .model_exp, .col)?
    – Alex
    Jul 16, 2018 at 20:05
  • 3
    Aurele can probably explain more fully, but .data is a special pronoun in rlang. There is no general . operator. And := is a workaround for the fact that you can't unquote with !! in front of an = sign in R, so you just put in := when you want to do that.
    – Calum You
    Jul 17, 2018 at 20:52
  • 2
    @CalumYou is right. dot-prefixed names in R have no special meaning or properties (except that they're "hidden" by default when you do ls() for instance). Prefixing with . is an arbitrary choice, made by imitation of what seems to be the norm in the tidyverse. := is exactly what @CalumYou describes, and the rationale is presented here cran.r-project.org/web/packages/dplyr/vignettes/… , with more details there rlang.r-lib.org/reference/quasiquotation.html
    – Aurèle
    Jul 18, 2018 at 8:43

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