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I am a rookie STATA user trying to make the jump to R. I am working through various exercises, but keep getting something wrong with the group_by and subset command.

I have a simple dataset that I wish to make groupbased calculations on. I am trying to use the groups_by command from the dplyr package to do this.

My dataset is called itchy and consists of 4 variabels:
treat- levels A and B (type of treatment)
type- levels Dark and Fair (skin-colour)
y - levels 0 and 1 (failure or succes of treatment)
freq - numerical variable indicating how many are in this particular group

Using this code you can recreate it:

type <- c(2,2,2,2,1,1,1,1)
treat <-c(1,1,2,2,1,1,2,2)
y <- c(1,0,1,0,1,0,1,0)
freq <- c(9,17,5,20,10,15,3,20)
itchy <- cbind.data.frame(type,treat,y,freq)
itchy$type <- as.factor(type)
itchy$type <- factor(itchy$type,levels = c(1,2), labels = c("Dark", "Fair"))
itchy$treat <- as.factor(treat)
itchy$treat <- factor(itchy$treat,levels = c(1,2), labels = c("A", "B"))
itchy$y <- as.factor(y)
itchy$y <- factor(itchy$y,levels = c(0,1), labels = c("failure", "succes"))

Now I would like to calculate the ods for a success for treatment A and B when applied to skintype Dark or Fair. (ods = nr of successful events/nr of failures)

I have two questions:

1) Can you help me do the ods calculations by groups?
2) I have tried with various combinations of group_by and subset, without any luck. The below code shows some of my unsuccessful attempts. Can you then tell I have a basic misunderstanding of how the group_by and subset commands work

itchy %>% group_by(treat, type) %>% summarize(ods = (subset(freq, y==1)/subset(freq, y==0)))

itchy %>% group_by(treat, type) %>% ods <- c((subset(freq, y==1)/subset(freq, y==0)))

itchy %>% group_by(treat, type) %>% itchy$ods <- (subset(freq, y==1)/subset(freq, y==0))
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If I understand you correctly, I think the following will work. I made use of the the spread function from the tidyr package, which like dplyr is part of the tidyverse


library(tidyr)
itchy %>% 
  spread(y, freq) %>% 
  mutate(odds = succes / failure)

  type treat failure succes      odds
1 Dark     A      15     10 0.6666667
2 Dark     B      20      3 0.1500000
3 Fair     A      17      9 0.5294118
4 Fair     B      20      5 0.2500000
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  • This worked like a charm. Just to make sure I understand the code: "spread" changes the y variable from long to wide format. "mutate" generates a new variable – Steen Harsted Oct 1 '17 at 12:37
  • That is correct. I should have used the argument names for clarity. You can find the docs online at tidyr.tidyverse.org – R Thomas Oct 1 '17 at 14:11
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junk = itchy %>% group_by(y,treat, type) %>% summarize(Overall = sum(freq))
myfunc = function(arg1,arg2){
  filter(junk,treat == arg1,type == arg2)[1,4]/filter(junk,treat == arg1,type == arg2)[2,4]
}

myfunc("A","Dark") # You can try all the various combinations here

Does this give you the desired result?

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  • No, I am sorry if my question wasnt clear enough: I want to compute: the ratio between succesfull and unsuccefull treatments (ods = (subset(freq, y==1)/subset(freq, y==0))) And I want to calculate this for the 4 groups; Treat A + Type Fair Treat A + Type Dark Treat B + Type Fair Treat B + Type Dark – Steen Harsted Sep 30 '17 at 19:09
  • @SteenHarsted I made some changes to the code. Can you check now? – honeybadger Sep 30 '17 at 23:58

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