# R: Iteration by variable

I have the following dataset1:

``````Height | Group
1,556  |  A
2,111  |  B
1,556  |  A
2,341  |  B
1,256  |  A
2,411  |  B
``````

I would like to compute shapiro wilk normality test for Height by variable Group

``````myvar <- c("Height")

res<- vector("list", length(myvars))

a <- factor(dataset1\$Group)
myfactor <- levels(a)

i=1
for (myfactor in dataset1) {
res[[i]] <- shapiro.test(dataset1\$Size)
i=i+1
}
``````

res - returns n groups of tests, but all with same p-value and W. Can anyone help me figure out what's wrong?

-

It is easier to write new code than find all errors in your code.

``````lapply(split(dataset1\$Height,dataset1\$Group),shapiro.test)

\$`  A`

Shapiro-Wilk normality test

data:  X[[1L]]
W = 0.75, p-value = 3.031e-08

\$`  B`

Shapiro-Wilk normality test

data:  X[[2L]]
W = 0.9134, p-value = 0.4295
``````
-

Your code is hosed is all sorts of ways. Here are a few:

1. You create `myfactor` outside of the loop, but then you make it the iterator.
2. `dataset1` is your data (data.frame?). I'm not even sure what `myfactor` will be inside a loop created by `for (myfactor in dataset1)`.
3. You don't subset the data sent to `shapiro.test`.
4. `myvars` isn't defined and `dataset1\$Size` should probably be `dataset1\$Height`.

``````res <- list()
for (mf in levels(dataset1\$Group)) {
res[[mf]] <- shapiro.test(dataset1\$Height[dataset1\$Group == mf])
}
``````
-

For future notice:
If you wish to compute (for selected variables in a dataset) a normality test by factor:

``````variaveis <- colnames(dataset1)[c(1:2)]
/////alternative: variaveis <- c("height", "weight")
res<- vector("list", length(variaveis))

for (i in 1:length(variaveis)) {
#calcula o shapiro por factor para variaveis selecionadas
res[[i]] <- lapply(split(dataset1[,variaveis[i]] ,dataset1\$sex), shapiro.test)
}
res
``````

PS: sex = GROUP in the previous example
Again Thanks
Wish this code helps reducing code M.

-