I am looking for a way to manipulate multiple columns in a data.table in R. As I have to address the columns dynamically as well as a second input, I wasn't able to find an answer.
The idea is to index two or more series on a certain date by dividing all values by the value of the date eg:
set.seed(132)
# simulate some data
dt <- data.table(date = seq(from = as.Date("2000-01-01"), by = "days", length.out = 10),
X1 = cumsum(rnorm(10)),
X2 = cumsum(rnorm(10)))
# set a date for the index
indexDate <- as.Date("2000-01-05")
# get the column names to be able to select the columns dynamically
cols <- colnames(dt)
cols <- cols[substr(cols, 1, 1) == "X"]
Part 1: The Easy data.frame/apply approach
df <- as.data.frame(dt)
# get the right rownumber for the indexDate
rownum <- max((1:nrow(df))*(df$date==indexDate))
# use apply to iterate over all columns
df[, cols] <- apply(df[, cols],
2,
function(x, i){x / x[i]}, i = rownum)
Part 2: The (fast) data.table approach So far my data.table approach looks like this:
for(nam in cols) {
div <- as.numeric(dt[rownum, nam, with = FALSE])
dt[ ,
nam := dt[,nam, with = FALSE] / div,
with=FALSE]
}
especially all the with = FALSE
look not very data.table-like.
Do you know any faster/more elegant way to perform this operation?
Any idea is greatly appreciated!