I have two different factorial experiments. Let's say that in experiment one there is a treatment column that splits all reps into treatments 1 and 2. Then there is a second treatment where columns are split again, and a third column splitting them again. There is also a code for each treatment (8, if you're following). I need to do t tests between 2 opposing treatments.
I've tried factor, mydata and subset and get error messages each time, especially since then a t test has 80 variables in the independent variable. Here are the examples (except the factor one)
myvars <- c("SH1RUC", "SH1RC")
newdata <- mydata[myvars]
newdata <- subset(december, shadehouse=="1" & system=="open" & media=="coir")
I'd like to be able to grab either shadehouse, either system and either media for doing t tests. Otherwise I'd like to grab the name, i.e. "SH1RUC" or "SH1RC," grouped together, to run a t test.
Based on the comment, here is a sample dataset:
Dep1 Dep2 Dep3 Ind1 Ind2 Ind3
1 1 3 5 4.63 65 21
2 1 3 5 5.25 64 22
3 1 3 6 4.76 67 23
4 1 3 6 5.87 65 24
5 1 4 5 4.65 87 25
6 1 4 5 5.76 67 21
7 1 4 6 3.99 75 22
8 1 4 6 4.09 46 23
9 2 3 5 5.98 68 24
10 2 3 5 3.67 79 25
11 2 3 6 5.43 75 22
12 2 3 6 4.56 57 23
13 2 4 5 5.43 65 24
14 2 4 5 2.99 68 25
15 2 4 6 4.09 58 26
16 2 4 6 5.70 56 23
I'm trying to perform a t test between two specific dependent variable sets, for example rows 1 & 2 and rows 9 & 10, or rows 5 & 6 and rows 7 & 8. In the actual data there are 10 data points for each set, and I want to compare the means. I can't seems to group columns together effectively.