I've been attempting to aggregate (some what erratic) daily data. I'm actually working with csv data, but if i recreate it - it would look something like this:
library(zoo) dates <- c("20100505", "20100505", "20100506", "20100507") val1 <- c("10", "11", "1", "6") val2 <- c("5", "31", "2", "7") x <- data.frame(dates = dates, val1=val1, val2=val2) z <- read.zoo(x, format = "%Y%m%d")
Now i'd like to aggregate this on a daily basis (notice that some times there are >1 datapoint for a day, and sometimes there arent.
I've tried lots and lots of variations, but i cant seem to aggregate, so for instance this fails:
aggregate(z, as.Date(time(z)), sum) # Error in Summary.factor(2:3, na.rm = FALSE) : sum not meaningful for factors
There seems to be a lot of content regarding aggregate, and i've tried a number of versions but cant seem to sum this on a daily level. I'd also like to run cummax and cumulative averages in addition to the daily summing.
Any help woudl be greatly appreciated.
The code I am actually using is as follows:
z <- read.zoo(file = "data.csv", sep = ",", header = TRUE, stringsAsFactors = FALSE, blank.lines.skip = T, na.strings="NA", format = "%Y%m%d");
It seems my (unintentional) quotation of the numbers above is similar to what is happening in practice, because when I do:
aggregate(z, index(z), sum) #Error in Summary.factor(25L, na.rm = FALSE) : sum not meaningful for factors
There a number of columns (100 or so), how can i specify them to be as.numeric automatically ? (
stringAsFactors = False doesnt appear to work?)