3

I want to implement binary logistic regression using binomial data as discussed here. Additionally, I want to add a variable that identifies each binary data point coming from de-aggregation of the same binomial data point, so that I can properly account for their correlation in the analysis.

Below I present the outcome of my attempts so far. It successfully replicates the rows with respective covariates, but does not generate the binary variable yet. Any help would be much appreciated.

#Structure of input binomial data#

DT<-tibble::tibble(Successes = c(2,3,3), Trials=c(3,4,5), X1=c("Yes", "No", "Yes"), X2=c(10.7, 11.3, 9.9))
# A tibble: 3 x 4
  Successes Trials X1       X2
      <dbl>  <dbl> <chr> <dbl>
         2      3 Yes    10.7
         3      4 No     11.3
         3      5 Yes     9.9

#My attempts so far#

DT.expanded <- DT[rep(seq(nrow(DT)), DT$Trials), ]

DT.expanded
# A tibble: 12 x 4
   Successes Trials X1       X2
       <dbl>  <dbl> <chr> <dbl>
          2      3 Yes    10.7
          2      3 Yes    10.7
          2      3 Yes    10.7
          3      4 No     11.3
          3      4 No     11.3
          3      4 No     11.3
          3      4 No     11.3
          3      5 Yes     9.9
          3      5 Yes     9.9
          3      5 Yes     9.9
          3      5 Yes     9.9
          3      5 Yes     9.9

#Expected structure of output binary data#

# A tibble: 12 x 4
    Success   X1       X2
       <chr>  <chr> <dbl>
         1    Yes    10.7
         1    Yes    10.7
         0    Yes    10.7
         1    No     11.3
         1    No     11.3
         1    No     11.3
         0    No     11.3
         1    Yes     9.9
         1    Yes     9.9
         1    Yes     9.9
         0    Yes     9.9
         0    Yes     9.9

Thanks in advance for any help.

  • 2
    We are not here to write code. That's what we do at work to get paid. Try something, even if it is rudimentary and then we can help you to reach your goal. We are here to help – M-- Jun 30 at 2:26
  • 1
    Thanks. Sorry for posting soon the question. I am still editing it. I will soon update and post the outcome of my attempts so far. – Krantz Jun 30 at 2:28
  • also: change that image for actual copy-pastable code – PavoDive Jun 30 at 2:45
2

For this sort of expansion, I find it's easiest to generate a list column, where the list element for each row is a binary vector for that row, which you can create with c and rep for the appropriate number of 0s and 1s. Once you've got a list column, you can expand the data frame to fit. For example,

library(tidyverse)

df <- tibble(
    Successes = c(2,3,3), 
    Trials = c(3,4,5), 
    X1 = c("Yes", "No", "Yes"), 
    X2 = c(10.7, 11.3, 9.9)
)

df <- df %>% mutate(binary = map2(Successes, Trials, 
                                  ~ c(rep(1, .x), 
                                      rep(0, .y - .x))))
df
#> # A tibble: 3 x 5
#>   Successes Trials X1       X2 binary   
#>       <dbl>  <dbl> <chr> <dbl> <list>   
#> 1         2      3 Yes    10.7 <dbl [3]>
#> 2         3      4 No     11.3 <dbl [4]>
#> 3         3      5 Yes     9.9 <dbl [5]>

df2 <- df %>% unnest()
df2
#> # A tibble: 12 x 5
#>    Successes Trials X1       X2 binary
#>        <dbl>  <dbl> <chr> <dbl>  <dbl>
#>  1         2      3 Yes    10.7      1
#>  2         2      3 Yes    10.7      1
#>  3         2      3 Yes    10.7      0
#>  4         3      4 No     11.3      1
#>  5         3      4 No     11.3      1
#>  6         3      4 No     11.3      1
#>  7         3      4 No     11.3      0
#>  8         3      5 Yes     9.9      1
#>  9         3      5 Yes     9.9      1
#> 10         3      5 Yes     9.9      1
#> 11         3      5 Yes     9.9      0
#> 12         3      5 Yes     9.9      0
1

An approach using data.table and replace:

library(data.table)
setDT(DT)
DT[, .(Success=replace(rep(0L, Trials), seq_len(Successes), 1L), 
       X1, X2), 
    by=seq_len(DT[,.N])][, -1L]

output:

    Success  X1   X2
 1:       1 Yes 10.7
 2:       1 Yes 10.7
 3:       0 Yes 10.7
 4:       1  No 11.3
 5:       1  No 11.3
 6:       1  No 11.3
 7:       0  No 11.3
 8:       1 Yes  9.9
 9:       1 Yes  9.9
10:       1 Yes  9.9
11:       0 Yes  9.9
12:       0 Yes  9.9

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.