I consistently need to take transaction data and aggregate it by Day, Week, Month, Quarter, Year - essentially, it's time-series data. I started to apply
xts to my data in hopes I could aggregate the data faster, but I either don't fully understand the packages' purpose or I'm trying to apply it incorrectly.
In general, I would like to calculate the number of orders and the number of products ordered by category, by time period (day, week, month, etc).
#Create the data clients <- 1:10 dates <- seq(as.Date("2012/1/1"), as.Date("2012/9/1"), "days") categories <- LETTERS[1:5] products <- data.frame(numProducts = 1:10, category = sample(categories, 1000, replace = TRUE), clientID = sample(clients, 1000, replace = TRUE), OrderDate = sample(dates, 1000, replace = TRUE))
I could do this with
reshape, but I think this is a round-about way to do so.
#Aggregate by date and category products.day <- ddply(products, .(OrderDate, category), summarize, numOrders = length(numProducts), numProducts = sum(numProducts)) #Aggregate by Month and category products.month <- ddply(products, .(Month = months(OrderDate), Category = category), summarize, numOrders = length(numProducts), numProducts = sum(numProducts)) #Make a wide-version of the data frame products.month.wide <- cast(products.month, Month~Category, sum)
I tried to apply
zoo to the data like so:
products.TS <- aggregate(products$numProducts, yearmon, mean)
It returned this error:
Error in aggregate.data.frame(as.data.frame(x), ...) : 'by' must be a list
I've read the
zoo vignettes and documentation, but every example that I've found only shows 1 record/row/entry per time entry.
Do I have to pre-aggregate the data I want to time-series on? I was hoping that I could simply group by the fields I want, then have the months or quarters get added to the data frame incrementally to the X-axis.
Is there a better approach to aggregating this or a more appropriate package?