2

I am running multiple models on multiple sections of my data set, similar to (but with many more models)

library(tidyverse)
d1 <- mtcars %>% 
  group_by(cyl) %>% 
  do(mod_linear = lm(mpg ~ disp + hp, data = ., x = TRUE))
d1 
# Source: local data frame [3 x 3]
# Groups: <by row>
# 
# # A tibble: 3 x 3
#     cyl mod_linear 
# * <dbl> <list>     
# 1    4. <S3: lm>   
# 2    6. <S3: lm>   
# 3    8. <S3: lm>   

I then tidy this tibble and save my parameter estimates using tidy() in the broom package.

I also want to calculate the standard deviation of the predictors (stored in models above as I set x = TRUE) to create and then compare re-scaled parameters. I can do the former of these using

d1 %>%
  # group_by(cyl) %>% 
  do(term = colnames(.$mod$x),
     pred_sd = apply(X = .$mod$x, MARGIN = 2, FUN = sd)) %>%
  unnest()
# # A tibble: 9 x 2
#          term  pred_sd
#         <chr>    <dbl>
# 1 (Intercept)  0.00000
# 2        disp 26.87159
# 3          hp 20.93453
# 4 (Intercept)  0.00000
# 5        disp 41.56246
# 6          hp 24.26049
# 7 (Intercept)  0.00000
# 8        disp 67.77132
# 9          hp 50.97689

However, the result is not a grouped tibble so I end up loosing the cyl column to tell me which terms belong to which model. How can avoid this loss? - Adding in group_by again seems to throw an error.

n.b. I want avoid using purrr for at least for the first part (fitting the models) as I run different types of models and then need to reshape the results (d1), and I like the progress bar with do.

n.b. I want to work with the $x component of the models rather than the raw data as they have the data on correct scale (I am experimenting with different transformations of the predictors)

4

We can do this by nesting initially and then do the unnest

mtcars %>% 
    group_by(cyl) %>% 
      nest(-cyl) %>% 
      mutate(mod_linear = map(data, ~ lm(mpg ~ disp + hp, data = .x, x = TRUE)),
           term  = map(mod_linear, ~ names(coef(.x))),
           pred = map(mod_linear, ~ .x$x %>%
                                       as_tibble %>% 
                                       summarise_all(sd) %>% 
                                       unlist )) %>%
   select(-data, -mod_linear) %>%
     unnest
# A tibble: 9 x 3
#    cyl term         pred
#  <dbl> <chr>       <dbl>
#1  6.00 (Intercept)   0  
#2  6.00 disp         41.6
#3  6.00 hp           24.3
#4  4.00 (Intercept)   0  
#5  4.00 disp         26.9
#6  4.00 hp           20.9
#7  8.00 (Intercept)   0  
#8  8.00 disp         67.8
#9  8.00 hp           51.0

Or instead of calling the map multiple times, this can be further made compact with

mtcars %>% 
       group_by(cyl) %>% 
        nest(-cyl) %>% 
        mutate(mod_contents = map(data, ~ {
           mod <- lm(mpg ~ disp + hp, data = .x, x = TRUE)
           term <- names(coef(mod))
           pred <- mod$x %>%
                      as_tibble %>%
                            summarise_all(sd) %>%
                            unlist
            tibble(term, pred)        
            }
         )) %>%
      select(-data) %>%
      unnest    
# A tibble: 9 x 3
#    cyl term         pred
#  <dbl> <chr>       <dbl>
#1  6.00 (Intercept)   0  
#2  6.00 disp         41.6
#3  6.00 hp           24.3
#4  4.00 (Intercept)   0  
#5  4.00 disp         26.9
#6  4.00 hp           20.9
#7  8.00 (Intercept)   0  
#8  8.00 disp         67.8
#9  8.00 hp           51.0

If we start from 'd1' (based on the OP's code)

d1 %>% 
   ungroup %>%
   mutate(mod_contents = map(mod_linear, ~ {

             pred <- .x$x %>%
                       as_tibble %>%
                        summarise_all(sd) %>%
                        unlist
            term <- .x %>%
                          coef %>% 
                          names 
            tibble(term, pred)                        

        }))  %>%
   select(-mod_linear) %>%
   unnest     

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.