This differs from previous behavior primarily when there are missing values. Many improvements to the consistency of augment.*() methods:Īugment() via the data or newdata arguments, you are now guaranteed that the augmented dataset will have exactly the same number of rows as the original dataset.This update also features many bug fixes improvements to existing tidiers. Improvements and Bug Fixes for Existing Tidiers We have restored a simplified version of.speedglm objects from the speedglm package.sarlm objects from the spatialreg package.lmrob and glmrob objects from the robustbase package.mfx, logitmfx, negbinmfx, poissonmfx, probitmfx, and betamfx objects from the mfx package.lm.beta objects from the lm.beta package.regsubsets objects from the leaps package.summary_emm objects from the emmeans package.When there are multiple functions, they create new # variables instead of modifying the variables in place: by_species %>% summarise_all ( list ( min, max ) ) #> # A tibble: 3 × 9 #> Species Sepal.Length_fn1 Sepal.Width_fn1 Petal.Length_fn1 #> #> 1 setosa 4.3 2.3 1 #> 2 versicolor 4.9 2 3 #> 3 virginica 4.9 2.2 4.5 #> # ℹ 5 more variables: Petal.Width_fn1, Sepal.Length_fn2, #> # Sepal.Width_fn2, Petal.Length_fn2, Petal.Width_fn2 # -> by_species %>% summarise ( across ( everything ( ), list (min = min, max = max ) ) ) #> # A tibble: 3 × 9 #> Species Sepal.Length_min Sepal.Length_max Sepal.Width_min #> #> 1 setosa 4.3 5.8 2.3 #> 2 versicolor 4.9 7 2 #> 3 virginica 4.9 7.9 2.2 #> # ℹ 5 more variables: Sepal.Width_max, Petal.Length_min, #> # Petal.Length_max, Petal.Width_min, Petal.We’ll outline some of the more notable changes below! New Tidier Methodsįor one, this release includes support for several new model objects-many of these additions came from first-time contributors to broom! 97.3 87.6 by_species % group_by ( Species ) # If you want to apply multiple transformations, pass a list of # functions. x, na.rm = TRUE ) ) ) #> # A tibble: 1 × 3 #> height mass birth_year #> #> 1 174. 97.3 87.6 starwars %>% summarise ( across ( where ( is.numeric ), ~ mean (. Here we apply mean() to the numeric columns: starwars %>% summarise_if ( is.numeric, mean, na.rm = TRUE ) #> # A tibble: 1 × 3 #> height mass birth_year #> #> 1 174. 97.3 # The _if() variants apply a predicate function (a function that # returns TRUE or FALSE) to determine the relevant subset of # columns. 97.3 # -> starwars %>% summarise ( across ( height : mass, ~ mean (. 97.3 # You can also supply selection helpers to _at() functions but you have # to quote them with vars(): starwars %>% summarise_at ( vars ( height : mass ), mean, na.rm = TRUE ) #> # A tibble: 1 × 2 #> height mass #> #> 1 174. 97.3 # -> starwars %>% summarise ( across ( c ( "height", "mass" ), ~ mean (. # The _at() variants directly support strings: starwars %>% summarise_at ( c ( "height", "mass" ), mean, na.rm = TRUE ) #> # A tibble: 1 × 2 #> height mass #> #> 1 174. Name collisions in the new columns are disambiguated using a unique suffix. vars is named, a new column by that name will be created. Similarly, vars() accepts named and unnamed arguments. If a function is unnamed and the name cannot be derived automatically, funs argument can be a named or unnamed list. The names of the functions are used to name the new columns Ĭoncatenating the names of the input variables and the names of theįunctions, separated with an underscore "_". vars is of the form vars(a_single_column)) and. The names of the input variables are used to name the new columns įor _at functions, if there is only one unnamed variable (i.e., If there is only one unnamed function (i.e. Input variables and the names of the functions. The names of the new columns are derived from the names of the
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