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I have run 48 t-tests (coded by hand instead of writing a loop) and would like to splice out certain results of those t.tests to create a table of the things I'm most interested in.

Specifically, I would like to keep only the p-value, confidence interval, and the mean of x and mean of y for each of these 48 tests and then build a table of the results.

Is there an elegant, quick way to do this beyond the top answer detailed here , wherein I would go in for all 48 tests and grab all three desired outputs with something along the lines of ttest$p.value? Perhaps a loop?

Below is a sample of the coded input for one t-test, followed by the output delivered by R.

# t.test comparing means of Change_Unemp for 2005 government employment (ix)

lowgov6 <- met_res[met_res$Gov_Emp_2005 <= 93310, "Change_Unemp"]
highgov6 <- met_res[met_res$Gov_Emp_2005 > 93310, "Change_Unemp"]
t.test(lowgov6,highgov6,pool.sd=FALSE,na.rm=TRUE)  

Welch Two Sample t-test

data:  lowgov6 and highgov6
t = 1.5896, df = 78.978, p-value = 0.1159
alternative hypothesis: true difference in means is not equal to 0
95 percent confidence interval:
-0.1813909  1.6198399
sample estimates:
mean of x mean of y 
4.761224  4.042000 
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why did you do 48 by hand? What are they named? If the naming pattern is similar for all 48, then its easy enough – pepsimax Feb 17 '14 at 21:59
1  
I did them prior to learning about loops and am still not sure how to execute one. I figured I'd find out if there was a way to do this rather than spending the time redoing my work for the t-tests in a loop. – user3288247 Feb 17 '14 at 22:11
up vote 4 down vote accepted

Save all of your t-tests into a list:

tests <- list()
tests[[1]] <- t.test(lowgov6,highgov6,pool.sd=FALSE,na.rm=TRUE)
# repeat for all tests
# there are probably faster ways than doing all of that by hand

# extract your values using `sapply`
sapply(tests, function(x) {
     c(x$estimate[1],
       x$estimate[2],
       ci.lower = x$conf.int[1],
       ci.upper = x$conf.int[2],
       p.value = x$p.value)
})

The output is something like the following:

                 [,1]        [,2]
mean of x  0.12095949  0.03029474
mean of y -0.05337072  0.07226999
ci.lower  -0.11448679 -0.31771191
ci.upper   0.46314721  0.23376141
p.value    0.23534905  0.76434012

But will have 48 columns. You can t() the result if you'd like it transposed.

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