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I'm trying to calculate various time period returns (monthly, quarterly, yearly etc.) for each unique member (identified by Code in the example below) of a data set. The data set will contain monthly pricing information for a 20 year period for approximately 500 stocks. An example of the data is below:

         Date Code    Price Dividend
1  2005-01-31  xyz  1000.00     20.0
2  2005-01-31  abc     1.00      0.1
3  2005-02-28  xyz  1030.00     20.0
4  2005-02-28  abc     1.01      0.1
5  2005-03-31  xyz  1071.20     20.0
6  2005-03-31  abc     1.03      0.1
7  2005-04-30  xyz  1124.76     20.0

I am fairly new to R, but thought that there would be a more efficient solution than looping through each Code and then each Date as shown here:

uniqueDates <- unique(data$Date)
uniqueCodes <- unique(data$Code

for  (date in uniqueDates) {
  for (code in uniqueCodes) {
    nextDate <- seq.Date(from=stock_data$Date[i], by="3 months",length.out=2)[2]
    curPrice <- data$Price[data$Date == date]
    futPrice <- data$Price[data$Date == nextDate]
    data$ret[(data$Date == date) & (data$Code == code)] <- (futPrice/curPrice)-1

This method in itself has an issue in that seq.Date does not always return the final day in the month.

Unfortunately the data is not uniform (the number of companies/codes varies over time) so using a simple row offset won't work. The calculation must match the Code and Date with the desired date offset.

I had initially tried selecting the future dates by using the seq.Date function

data$ret = (data[(data$Date == (seq.Date(from = data$Date, by="3 month", length.out=2)[2])), "Price"] / data$Price) - 1

But this generated an error as seq.Date requires a single entry.

> Error in seq.Date(from = stock_data$Date, by = "3 month", length.out =
> 2) :    'from' must be of length 1

I thought that R would be well suited to this type of calculation but perhaps not. Since all the data is in a mysql database I am now thinking that it might be faster/easier to do this calc directly in the database.

Any suggestions would be greatly appreciated.

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2 Answers 2

up vote 2 down vote accepted

Load data:

  Date Code    Price Dividend
  2005-01-31  xyz  1000.00     20.0
  2005-01-31  abc     1.00      0.1
  2005-02-28  xyz  1030.00     20.0
  2005-02-28  abc     1.01      0.1
  2005-03-31  xyz  1071.20     20.0
  2005-03-31  abc     1.03      0.1
  2005-04-30  xyz  1124.76     20.0'

df = read.table(text=tc,header=T)

First I would organize the data by date:


Then you would like to obtain monthly, quarterly, yearly, etc returns. For that there are several options, one could be:

Make the data zoo or xts class. i.e

pp1[2:ncol(pp1)]  = as.xts(pp1[2:ncol(pp1)],order.by=pp1$Date)

#let's create a function for calculating returns.

Since this database is monthly, the lags for the returns will be: monthly=1, quaterly=3, yearly =12. for instance let's calculate monthly return for xyz.

lagged=1 #for monthly

This calculates Monthly returns for xyz

pp1$returns_xyz= c(NA,rets(pp1$Price.xyz,lagged))

To get all the returns:

#create matrix of returns

pricelist= ls(pp1)[grep('Price',ls(pp1))]

returnsmatrix = data.frame(matrix(rep(0,(nrow(pp1)-1)*length(pricelist)),ncol=length(pricelist)))

for(i in pricelist){
    n = which(names(pp1) == i)
    returnsmatrix[,j] =  rets(pp1[,n],1)

#column names

codename= gsub("Price.", "", pricelist, fixed = TRUE)


share|improve this answer
Thanks for your help @AndresT. I hadn't come across [reshape] function before & it will be useful. Following on from your solution, the only complication that I see is it requires the [ret] function to be called across each individual [Code] column, [$Price.xyz] and [$Price.abc] in the above example. This is fine for a situation with only a few codes, but I'm going to be dealing with more then 500 individual codes, thus requiring 500 lines of code just for this one call and that itself introduces significant opportunities for error in my implementation. Do you see a way around this? –  getting-there Jan 28 '12 at 2:16
@getting-there I can think of a few ways of doing that, I'll edit the answer to account for it. –  AndresT Jan 28 '12 at 3:03
thanks a lot for this. I really thought that there was going to be a simpler solutions so I really appreciate your help. –  getting-there Jan 30 '12 at 2:32

You can do this very easily with the quantmod and xts packages. Using the data in AndresT's answer:

library(quantmod)  # loads xts too
pp1 <- reshape(df,timevar='Code',idvar='Date',direction='wide')
# create an xts object
x <- xts(pp1[,-1], pp1[,1])
# only get the "Price.*" columns
p <- getPrice(x)
# run the periodReturn function on each column
r <- apply(p, 2, periodReturn, period="monthly", type="log")
# merge prior result into a multi-column object
r <- do.call(merge, r)
# rename columns
names(r) <- paste("monthly.return",
  sapply(strsplit(names(p),"\\."), "[", 2), sep=".")

Which leaves you with an r xts object containing:

           monthly.return.xyz monthly.return.abc
2005-01-31         0.00000000        0.000000000
2005-02-28         0.02955880        0.009950331
2005-03-31         0.03922071        0.019608471
2005-04-30         0.04879016                 NA
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