21

Is it possible somehow to do a t.test over multiple variables against the same categorical variable without going through a reshaping of the dataset as follows?

data(mtcars)
library(dplyr)
library(tidyr)
j <- mtcars %>% gather(var, val, disp:qsec)
t <- j %>% group_by(var) %>% do(te = t.test(val ~ vs, data = .))

t %>% summarise(p = te$p.value)

I´ve tried using

mtcars %>% summarise_each_(funs = (t.test(. ~ vs))$p.value, vars = disp:qsec)

but it throws an error.

Bonus: How can t %>% summarise(p = te$p.value) also include the name of the grouping variable?

2
  • 8
    You should consider adding whitespace to your code.
    – x4nd3r
    Oct 7, 2014 at 23:53
  • This may be a partial solution (void of summarise portion) by data.table : (step1) library(data.table) (step2) setDT(j) (Step3) j[, te := t.test(value~vs), by=variable][]
    – KFB
    Oct 8, 2014 at 1:38

4 Answers 4

19

After all discussions with @aosmith and @Misha, here is one approach. As @aosmith wrote in his/her comments, You want to do the following.

mtcars %>%
    summarise_each(funs(t.test(.[vs == 0], .[vs == 1])$p.value), vars = disp:qsec)

#         vars1        vars2      vars3        vars4        vars5
#1 2.476526e-06 1.819806e-06 0.01285342 0.0007281397 3.522404e-06

vs is either 0 or 1 (group). If you want to run a t-test between the two groups in a variable (e.g., dips), it seems that you need to subset data as @aosmith suggested. I would like to say thank you for the contribution.

What I originally suggested works in another situation, in which you simply compare two columns. Here is sample data and codes.

foo <- data.frame(country = "Iceland",
                  year = 2014,
                  id = 1:30,
                  A = sample.int(1e5, 30, replace = TRUE),
                  B = sample.int(1e5, 30, replace = TRUE),
                  C = sample.int(1e5, 30, replace = TRUE),
                  stringsAsFactors = FALSE)

If you want to run t-tests for the A-C, and B-C combination, the following would be one way.

foo2 <- foo %>%
        summarise_each(funs(t.test(., C, pair = TRUE)$p.value), vars = A:B) 

names(foo2) <- colnames(foo[4:5])

#          A         B
#1 0.2937979 0.5316822
20
  • Those p-values don't look quite right to me. If using t.test without a formula, x and y should be vectors of the response from each group. Try something like summarise_each(funs(t.test(.[vs == 0], .[vs == 1])$p.value), vars = disp:qsec)
    – aosmith
    Oct 8, 2014 at 15:27
  • 1
    @aosmith - Are you able to make it work using formula in t.test? : mtcars %>% summarise_each(funs(t.test(.~vs)$p.value), vars = disp:qsec) - it does not work for me.
    – Misha
    Oct 8, 2014 at 16:29
  • 1
    @KonradRudolph Hi again. I ran your code above, but I received an error message. I stuck to subset again and wrote the following. Is this something you are after? mtcars %>% group_by(am) %>% summarize(t.test(subset(mpg, vs == 0), subset(mpg, vs == 1))$p.value) Please let me know if you need more. I am happy to help and think together.
    – jazzurro
    Sep 29, 2015 at 7:33
  • 1
    @KonradRudolph Yep. I understand your point. Not sure why filter does not work. filter(mtcars, vs == 0)[1] works. So, the best guess is to write mtcars %>% group_by(am) %>% summarize(out = t.test(filter(vs == 0)[1], filter(vs == 1)[1])$p.value) or mtcars %>% group_by(am) %>% summarize(out = t.test(filter(.,vs == 0)[1], filter(.,vs == 1)[1])$p.value). The former returns Error: no applicable method for 'filter_' applied to an object of class "logical" and the latter returns Error: incorrect length (19), expecting: 13.
    – jazzurro
    Sep 29, 2015 at 13:57
  • 1
    @KonradRudolph One more thing for you. Without group_by, the following is working for me. mtcars %>% summarize(out = t.test(filter(mtcars,vs == 0)[1], filter(mtcars,vs == 1)[1])$p.value)
    – jazzurro
    Sep 29, 2015 at 14:17
14

I like the following solution using the powerful "broom" package:

library("dplyr")
library("broom")

your_db %>%
  group_by(grouping_variable1, grouping_variable2 ...) %>%
  do(tidy(t.test(variable_u_want_2_test ~ dicothomous_grouping_var, data = .)))
1
6

Realizing that the question is fairly old, here is another answer for the reference of future generations.

This is more general than the accepted answer since it allows for dynamically generated variable names rather than hard-coded.

vars_to_test <- c("disp","hp","drat","wt","qsec")
iv <- "vs"

mtcars %>%
  summarise_each_(
    funs_( 
      sprintf("stats::t.test(.[%s == 0], .[%s == 1])$p.value",iv,iv)
    ), 
    vars = vars_to_test)

which produces this:

          disp           hp       drat           wt         qsec
1 2.476526e-06 1.819806e-06 0.01285342 0.0007281397 3.522404e-06

The idea of this solution is to use SE versions of dplyr functions (summarise_each_ and funs_) instead of NSE versions (summarise_each and funs). For more information about Standard Evaluation (SE) and Non-Standard Evaluation (NSE), please check vignette("nse").

2
  • Thanks for the solution! it works for me. However, i have two warning messages : 1: summarise_each() is deprecated. Please use summarise_if(), summarise_at(), or summarise_all() instead: - To map "funs" over all variables, use summarise_all() - To map "funs" over a selection of variables, use summarise_at() and 2: funs_() is deprecated. Please use list() instead. Is there an updated version of this code? Second question, is there a way to change the "1" (first character of the second row) by the name of the group (ie : "vs" in this case)? thanks for your help!
    – B_slash_
    Mar 3, 2020 at 10:06
  • dplyr changed all their stuff all code now is broken Apr 18, 2020 at 19:04
2

So I ended up hacking up a new function : df=dataframe , by_var=right hand side of formula, ... all variables on left hand side of formula (dplyr/tidyr select).

e.g: mult_t.test(mtcars,vs,disp:qsec)

mult_t.test<-function(df,by_var,...){
  require(dplyr)
  require(tidyr)
  by_var<-deparse(substitute(by_var))
  j<-df%>%gather(var,val,...)
  t<-j%>%group_by(var)%>%do(v=tes(.,by_var))
  k<-data.frame(levels(t$var),matrix(unlist(t$v),ncol=3,byrow = T))
  names(k)<-c("var",names(t$v[[1]]))
  k
}


tes<-function(df,vart){
  x<-t.test(df$val~df[[vart]])
  p<-x$estimate
  p<-c(p,p.val=x$p.value)
  p
}
0

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