# What is the best method to bin intraday volume figures from a stock price timeseries using XTS / ZOO etc in R?

For instance, let's say you have ~10 years of daily 1 min data for the volume of instrument x as follows (in `xts` format) from 9:30am to 4:30pm :

``````    Date.Time               Volume
2001-01-01 09:30:00     1200
2001-01-01 09:31:00     1110
2001-01-01 09:32:00     1303
``````

All the way through to:

``````    2010-12-20 16:28:00     3200
2010-12-20 16:29:00     4210
2010-12-20 16:30:00     8303
``````

I would like to:

• Get the average volume at each minute for the entire series (ie average volume over all 10 years at 9:30, 9:31, 9:32...16:28, 16:29, 16:30)

How should I best go about:

• Aggregating the data into one minute buckets
• Getting the average of those buckets
• Reconstituting those "average" buckets back to a single xts/zoo time series?

I've had a good poke around with `aggregate`, `sapply`, `period.apply` functions etc, but just cannot seem to "bin" the data correctly.

It's easy enough to solve this with a loop, but very slow. I'd prefer to avoid a programmatic solution and use a function that takes advantage of C++ architecture (ie `xts` based solution)

Can anyone offer some advice / a solution?

First lets create some test data:

``````library(xts) # also pulls in zoo
library(timeDate)
library(chron) # includes times class

# test data
x <- xts(1:3, timeDate(c("2001-01-01 09:30:00", "2001-01-01 09:31:00",
"2001-01-02 09:30:00")))
``````

1) aggregate.zoo. Now try converting it to `times` class and aggregating using this one-liner:

``````aggregate(as.zoo(x), times(format(time(x), "%H:%M:%S")), mean)
``````

1a) aggregate.zoo (variation). or this variation which converts the shorter aggregate series to `times` to avoid having to do it on the longer original series:

``````ag <- aggregate(as.zoo(x), format(time(x), "%H:%M:%S"), mean)
zoo(coredata(ag), times(time(ag)))
``````

2) tapply. An alternative would be `tapply` which is likely faster:

``````ta <- tapply(coredata(x), format(time(x), "%H:%M:%S"), mean)
zoo(unname(ta), times(names(ta)))
``````

EDIT: simplified (1) and added (1a) and (2)

• Excellent. This is very, very good. – n.e.w Feb 27 '12 at 5:58
• Thank you for posting this very elegant solution. – n.e.w Feb 27 '12 at 6:00

Here is a solution with `ddply`, but you can probably also use `sqldf`, `tapply`, `aggregate`, `by`, etc.

``````# Sample data
minutes <- 10 * 60
days <- 250 * 10
d <- seq.POSIXt(
ISOdatetime( 2011,01,01,09,00,00, "UTC" ),
by="1 min", length=minutes
)
d <- outer( d, (1:days) * 24*3600, `+` )
d <- sort(d)
library(xts)
d <- xts( round(100*rlnorm(length(d))), d )

# Aggregate
library(plyr)
d <- data.frame(
minute=format(index(d), "%H:%M"),
value=coredata(d)
)
d <- ddply(
d, "minute",
summarize,
value=mean(value, na.rm=TRUE)
)

# Convert to zoo or xts
zoo(x=d\$value, order.by=d\$minute) # The index does not have to be a date or time
xts(x=d\$value, order.by=as.POSIXct(sprintf("2012-01-01 %s:00",d\$minute), "%Y-%m-%d %H:%M:%S") )
``````
• Thanks for this. I had `sqldf` in mind, but it seemed like a "cheat" for what I was trying to achieve. Now to your code. This is working well up to the use of `ddply` (ie, i've built the data frame with minute and value (structured as chr and num respectively). However, it just returns "NA" for the (mean) value column. Any ideas? – n.e.w Feb 24 '12 at 7:28
• Sorry - I should state that your model code works fine throughout. It is not, however, working on my data. a `str()` call on the volume data returns: num [1:976638, 1] 46 32 24 7 34 27 9 18 2 24 ... - attr(*, "dimnames")=List of 2 ..\$ : NULL ..\$ : chr "Volume" /// and the `index` of my data: Formal class 'timeDate' [package "fCalendar"] with 3 slots ..@ Data : POSIXct[1:976638], format: "2001-07-02 09:51:00" "2001-07-02 09:52:00" "2001-07-02 09:53:00" "2001-07-02 09:54:00" ... ..@ format : chr "%Y-%m-%d %H:%M:%S" – n.e.w Feb 24 '12 at 7:34
• The error being returned in my adaptation is: In mean.default(value, na.rm = TRUE) : argument is not numeric or logical: returning NA – n.e.w Feb 24 '12 at 7:37
• I tried to use `timeDate` objects for the index (`library(timeDate); d <- seq(Sys.timeDate(), by=60, length=10); d <- xts(...)`), but it works fine. However, your `timeDate` objects seem to come from the obsolete `fCalendar` package: it has been replaced with `timeDate`. – Vincent Zoonekynd Feb 24 '12 at 7:57