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I have two time series, one being a daily time series and the other one a discrete one. In my case I have share prices and ratings I need to merge but in a way that the merged time series keeps the daily dates according to the stock prices and that the rating is fitted to the daily data by ticker and date. A simple merge command would only look for the exact date and ticker and apply NA to non-fitting cases. But I would like to look for the exact matches and fill the dates between with last rating.

 Daily time series:

         ticker       date        stock.price
          AA US Equity 2004-09-06  1
          AA US Equity 2004-09-07  2
          AA US Equity 2004-09-08  3
          AA US Equity 2004-09-09  4
          AA US Equity 2004-09-10  5
          AA US Equity 2004-09-11  6

  Discrete time series
          ticker        date        Rating Last_Rating
          AA US Equity   2004-09-08   A         A+
          AA US Equity   2004-09-11   AA        A
          AAL LN Equity  2005-09-08   BB        BB
          AAL LN Equity  2007-09-09   AA        AA-
          ABE SM Equity  2006-09-10   AA        AA-
          ABE SM Equity  2009-09-11   AA        AA-


  Required Output:

           ticker       date        stock.price  Rating
          AA US Equity 2004-09-06    1             A+
          AA US Equity 2004-09-07    2             A+
          AA US Equity 2004-09-08    3             A
          AA US Equity 2004-09-09    4             A
          AA US Equity 2004-09-10    5             A
          AA US Equity 2004-09-11    6             AA

I would be very greatful for your help.

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3  
please make your data easy to load, i.e. dput instead of/in addition to copy-pasting (this is simple rolling merge problem in data.table, but your current data presentation is too cumbersome to work with) –  eddi Oct 28 '13 at 20:56

1 Answer 1

up vote 1 down vote accepted

Maybe this is the solution you want. The function na.locf in the time series package zoo can be used to carry values forward (or backward).

library(zoo)
library(plyr)
options(stringsAsFactors=FALSE)

daily_ts=data.frame(
    ticker=c('A','A','A','A','B','B','B','B'),
    date=c(1,2,3,4,1,2,3,4),
    stock.price=c(1.1,1.2,1.3,1.4,4.1,4.2,4.3,4.4)
    )
discrete_ts=data.frame(
    ticker=c('A','A','B','B'),
    date=c(2,4,2,4),
    Rating=c('A','AA','BB','BB-'),
    Last_Rating=c('A+','A','BB+','BB')
    )

res=ddply(
    merge(daily_ts,discrete_ts,by=c("ticker","date"),all=TRUE),
    "ticker",
    function(x) 
        data.frame(
            x[,c("ticker","date","stock.price")],
            Rating=na.locf(x$Rating,na.rm=FALSE),
            Last_Rating=na.locf(x$Last_Rating,na.rm=FALSE,fromLast=TRUE)
            )
    )

res=within(
    res,
    Rating<-ifelse(
        is.na(Rating),
        Last_Rating,Rating
        )
    )[,setdiff(colnames(res),"Last_Rating")]

res

Gives

#  ticker date stock.price Rating
#1      A    1         1.1     A+
#2      A    2         1.2      A
#3      A    3         1.3      A
#4      A    4         1.4     AA
#5      B    1         4.1    BB+
#6      B    2         4.2     BB
#7      B    3         4.3     BB
#8      B    4         4.4    BB-
share|improve this answer
    
Thanks alot, it works perfectly fine! –  New2R Oct 29 '13 at 16:02
    
Cool! Glad it helped. –  cryo111 Oct 29 '13 at 16:58

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