I am trying to use
summarise together from the
plyr package but am having difficulty parsing through column names that keep changing...In my example i would like something that would parse in X1 programatically rather than hard coding in X1 into the ddply function.
setting up an example
require(xts) require(plyr) require(reshape2) require(lubridate) t <- xts(matrix(rnorm(10000),ncol=10), Sys.Date()-1000:1) t.df <- data.frame(coredata(t)) t.df <- cbind(day=wday(index(t), label=TRUE, abbr=TRUE), t.df) t.df.l <- melt(t.df, id.vars=c("day",colnames(t.df)), measure.vars=colnames(t.df)[3:ncol(t.df)])
This is the bit im am struggling with....
cor.vars <- ddply(t.df.l, c("day","variable"), summarise, cor(X1, value))
i do not want to use the term X1 and would like to use something like
cor.vars <- ddply(t.df.l, c("day","variable"), summarise, cor(colnames(t.df), value))
but that comes up with the error:
Error in cor(colnames(t.df), value) : 'x' must be numeric
I also tried various other combos that parse in the vector values for the x argument in cor...but for some reason none of them seem to work...