I am manipulating a data set comprising several factors with several variables. The idea is that I want to do ANOVA analysis between factor levels nested within one level of another factor.
Here is an example similar to my data set:
treatment category trial individual response
1 A big 1 F1 0.10
2 A big 2 F1 0.20
3 A big 1 F2 0.30
4 A big 2 F2 0.11
5 A small 1 F3 0.12
6 A small 2 F3 0.13
7 A small 1 F4 0.20
8 A small 2 F4 0.30
9 B big 1 F5 0.40
10 B big 2 F5 0.21
11 B big 1 F6 0.22
12 B big 2 F6 0.23
13 B small 1 F7 0.31
14 B small 2 F7 0.32
15 B small 1 F8 0.34
16 B small 2 F8 0.25
So basically, I'd like to do an ANOVA between big and small when treatment is A, then B, then same idea with ANOVA between big and small when treatment is A and trial 1... you get the logic.
It seems I have to use:
anova(lm(Y~x,data=dataset))
and add a subset argument, but I can't work the logic out of it and I can't find any example similar to mine. Any hint for it? Thank you in advance!
anova(lm(response ~ category, data = df[, df$treatment == 'A']), lm(response ~ category, data = df[, df$treatment == 'B']))
.aov
provides a better option, I think.aovdf<-anova(lm(response~category, data = df[,df$treatment == "A"]))´
Error in[.data.frame
(df, , df$treatment == "A") :undefined columns selected´ and also if I tryaovdf<-anova(lm(response~category, data = df[,df$treatment == 1]))´
Error in eval(expr, envir, enclos) : object 'response' not found´ . How `aov´ would be better?