I've been working on getting a table of shapiro-wilkes normality hypothesis test p-values on a data frame of mine. Here is the data frame (named "mdf1") as a comma-delimeted CSV.
Shapiro-Wilkes testing in R requires a sample size greater than 3. In order to subset my data frame (which contains two pertinent factors, "variable", and "Site"), I used the following code:
Z <- as.data.frame(data.table(mdf1)[, list(freq=.N, value=value), by=list(Site,variable)][freq > 3])
This resulted in the data frame "Z" which contained all values which belonged to a "Site"*"variable" combination of n greater than 3. Then, I try to pass Z to the
ddply function to obtain a table of shapiro-wilkes p-values:
norm2 <- ddply(Z, .(Site, variable), summarize, n=length(value), sw=shapiro.test(value))
The result of this command is:
Error in shapiro.test(val) : all 'x' values are identical
How can that be? Any thoughts?