I am trying to write a function that takes as arguments the name of a data frame holding time series data and the name of a column in that data frame. The function performs various manipulations on that data, one of which is adding a running total for each year in a column. I am using plyr.
When I use the name of the column directly with ddply and cumsum I have no problems:
require(plyr) df <- data.frame(date = seq(as.Date("2007/1/1"), by = "month", length.out = 60), sales = runif(60, min = 700, max = 1200)) df$year <- as.numeric(format(as.Date(df$date), format="%Y")) df <- ddply(df, .(year), transform, cum_sales = (cumsum(as.numeric(sales))))
This is all well and good but the ultimate aim is to be able to pass a column name to this function. When I try to use a variable in place of the column name, it doesn't work as I expected:
mycol <- "sales" df[mycol] df <- ddply(df, .(year), transform, cum_value2 = cumsum(as.numeric(df[mycol])))
I thought I knew how to access columns by name. This worries me because it suggests that I have failed to understand something basic about indexing and extraction. I would have thought that referring to columns by name in this way would be a common need.
I have two questions.
- What am I doing wrong i.e. what have I misunderstood?
- Is there a better way of going about this, bearing in mind that the names of the columns will not be known beforehand by the function?