Sign up ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

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 zoo/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 plyr and reshape, but I think this is a round-about way to do so.

#Aggregate by date and category <- 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, ...) : 
  '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?

share|improve this question
What do you mean by "months or quarters get added to the data frame incrementally to the X-axis"? –  Joshua Ulrich Sep 3 '12 at 22:10
I was thinking like an OLAP cube - The category would be on the Y axis, then Jan, Feb, Mar... Sept 2012. The answer you gave will get me to that, or to quarters. I just need to figure out how to group by category or ClientID now. Thanks. –  mikebmassey Sep 3 '12 at 22:14

1 Answer 1

up vote 4 down vote accepted

products$numProducts is a vector, not a zoo object. You'd need to create a zoo object before you can use method dispatch to call aggregate.zoo.

pz <- with(products, zoo(numProducts, OrderDate))
products.TS <- aggregate(pz, as.yearmon, mean)
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.