Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm trying to analyze 1-year %-change data in R on two data series by merging them into one file. One series is weekly and the other is monthly. Converting the weekly series to monthly is the problem. Using apply.monthly() on the weekly data creates a monthly file but with intra-monthly dates that don't match the first-day-of-month format in the monthly series after combining the two files via merge.xts(). Question: How to change the resulting merged file (sample below) to one monthly entry for both series?

2012-11-01 0.02079801          NA
2012-11-24         NA -0.03375796
2012-12-01 0.02052502          NA
2012-12-29         NA  0.04442094
2013-01-01 0.01881466          NA
2013-01-26         NA  0.06370272
2013-02-01 0.01859883          NA
2013-02-23         NA  0.02999318
share|improve this question
add comment

2 Answers

up vote 1 down vote accepted

You can pass indexAt="firstof" in a call to to.monthly to get monthly data using the first of the month for the index.

library(quantmod) 
getSymbols(c("USPRIV", "ICSA"), src="FRED")
merge(USPRIV, to.monthly(ICSA, indexAt="firstof", OHLC=FALSE))
share|improve this answer
    
GSee, that's it. Thank you so much. I can use this with a few tweaks. Success! –  JPP Mar 24 '13 at 12:28
1  
@JPP: if this best answered you question, please consider ticking the green check mark next to it. –  Joshua Ulrich Mar 24 '13 at 17:51
    
This fix doesn't seem to work with later packages and/or versions of R. Any thoughts? All is well with R 2.14.1 and R Studio 0.97.332 and xts 0.8-6. Later versions of one or more of these (I think it's xts) render the fix inoperable. Ugh!!?! –  JPP Mar 26 '13 at 1:32
add comment

Something like this:

do.call(rbind, by(d[-1], d[[1]] - as.POSIXlt(d[[1]])$mday, FUN=apply, 2, sum, na.rm=TRUE))
##                    V2          V3
## 2012-10-31 0.02079801 -0.03375796
## 2012-11-30 0.02052502  0.04442094
## 2012-12-31 0.01881466  0.06370272
## 2013-01-31 0.01859883  0.02999318

Note that the dates are encoded as row names, not as a column in the result.

share|improve this answer
    
Thanks so much, but my apologies for asking further: Would I run this on only the weekly data set? Or both series? Does the "d" represent the series? –  JPP Mar 24 '13 at 2:48
    
d represents a data.frame built from what you have pasted above. However, you could use a very similar expression to aggregate the weekly data. Seeing an example of (a subset of) the original data would help in writing that code. –  Matthew Lundberg Mar 24 '13 at 2:51
    
Much appreciated. Here's what I did. The monthly series is private payrolls (USPRIV), the weekly series is jobless claims (ICSA). First, aggregate weekly to monthly, then create 1yr % changes on both: ICSA <-aggregate(ICSA, as.yearmon(time(ICSA)), mean) –  JPP Mar 24 '13 at 3:16
    
USPRIV 2012-09-01 112120 2012-10-01 112337 2012-11-01 112593 2012-12-01 112817 2013-01-01 112957 2013-02-01 113203 ICSA 2013-02-09 342000 2013-02-16 366000 2013-02-23 347000 2013-03-02 342000 2013-03-09 334000 2013-03-16 336000 –  JPP Mar 24 '13 at 3:40
    
@JPP It's not very usable in that format (just one line in the comment). Best to edit your question instead. –  Matthew Lundberg Mar 24 '13 at 3:43
show 4 more comments

Your Answer

 
discard

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.