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I have a one dimensional csv which contains data of many time series, each time series is tagged with two labels.

After reading the file into R, what key function(s) should I use to quickly turn the data into 3D matrix?

The data are in this format:

Date, Price, Stock Ticker, Country
1/1/2012, 98, ABC.US, US
1/2/2012, 100, ABC.US, US
.
.
.
1/1/2012, 36, XYZ.US, US
1/2/2012, 34, XYZ.US, US
.
.
.
.
1/1/2012, 78, MNO.LN, UK
1/2/2012, 75, MNO.LN, UK
.
.

I want to turn this table into 3D array with dimensions of date, stock ticker and country:

3DTable[Date,Ticker,Country]
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3 Answers 3

Assuming that @sebastian-c interpreted your question correctly, this is a one-liner in base R that gets you there:

tapply(x$Price, x[, -2], c)
# , , Country = UK
# 
#           Stock.Ticker
# Date       ABC.US MNO.LN XYZ.US
#   1/1/2012     NA     78     NA
#   1/2/2012     NA     75     NA
# 
# , , Country = US
# 
#           Stock.Ticker
# Date       ABC.US MNO.LN XYZ.US
#   1/1/2012     98     NA     36
#   1/2/2012    100     NA     34
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Nice, thanks much for the extra info! –  Joyce Jul 18 '12 at 13:53

I think I have an answer for what you want.

Create data frame

x <- data.frame(Date=rep(c("1/1/2012", "1/2/2012"), 3), 
  Price=c(98, 100, 36, 34, 78, 75),
  "Stock Ticker"=rep(c("ABC.US", "XYZ.US", "MNO.LN"), each=2), 
  Country=rep(c("US", "US", "UK"), each=2))

Create set of all possible options

all.opts <- expand.grid(Date=levels(x$Date), 
  Stock.Ticker=levels(x$Stock.Ticker), 
  Country=levels(x$Country))

Join this with the data (there may be a way in base R, but I don't know it)

library(plyr)
x2 <- join(all.opts, x)

Make the array

x.arr2 <- array(x2$Price, dim=c(2, 3, 2), 
  dimnames=list(levels(x2$Date), levels(x2$Stock.Ticker), levels(x2$Country)))

Admire handiwork:

x.arr2

#, , UK
#
#         ABC.US MNO.LN XYZ.US
#1/1/2012     NA     78     NA
#1/2/2012     NA     75     NA
#
#, , US
#
#         ABC.US MNO.LN XYZ.US
#1/1/2012     98     NA     36
#1/2/2012    100     NA     34
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Good, thanks a lot! –  Joyce Jul 18 '12 at 13:53

Try this:

library(plyr)
daply(x, c("Date", "Stock Ticker", "Country"), function(y) y$Price)

The first argument to daply is your data frame, the second are the variables you want to use as dimensions (perhaps you need to change the space to a dot, depending on how you read your data), and the third is the function which computes the array value from the daraframe row.

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Great function, thanks much! –  Joyce Jul 18 '12 at 13:53

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