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I have two data.frames in R, each indexed by date. One is coarser than the other and I would like to compare the data only along the coarser timescale.

To be more concrete let's say one data.frame has time points DF1[a,b,c,...,x,y,z] and the other only has DF2[f,p,t], where p=="July 19, 1917". I wish to compare DF1[f,p,t] to DF2[f,p,t].

This isn't syntactic but I want to do for each $i { DF_combined <- df1[$i] . df2[$i] if exists(df1[$i]); }. In other words, make a new data.frame that only contains every shared observation day.

I hope the question is clear. I've been looking at other SO answers for a couple of hours and haven't found one that covers what I'm trying to do yet. Thanks in advance.

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2 Answers 2

Merge your data.frames, then do whatever operations you want.

# assume the frequency of x > frequency of y (i.e. y is "coarse")
merge(x, y, by="row.names", all.y=TRUE)  # dates are in row.names
merge(x, y, by="date", all.y=TRUE)       # dates are in "date" column

Since you have a time-series, I would suggest you use a time-series class instead of a data.frame. I recommend xts/zoo. Here's how you would do this with xts:

merge(x, y, join="right")
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Wow, I had a lot to learn. I guess totally ordered objects ⊃ irregular time series ⊃ time series, + headers, are a very specific data type after all. The open source community has done an amazing amount of work even in just the late 2000's, not even counting Chambers et al. Thanks for the right join hint as well, that would have been another fox hunt. –  isomorphismes Jun 30 '11 at 1:56
up vote 1 down vote accepted

Here's the solution to my problem, from start to finish.

Problem: Given records from my broker (not evenly spaced in time), put the time series of my net worth next to a time series of the S&P, for comparison in R.


#get S&P data
getSymbols("^GSPC", from="2004-01-01", src="yahoo")

              GSPC.Open GSPC.High GSPC.Low GSPC.Close GSPC.Volume GSPC.Adjusted
2004-01-02   1111.92   1118.85  1105.08    1108.48  1153200000       1108.48
2004-01-05   1108.48   1122.22  1108.48    1122.22  1578200000       1122.22
2004-01-06   1122.22   1124.46  1118.44    1123.67  1494500000       1123.67

Notice that there is no header over the dates. That's because time-series data types embed the time-value as an ordering index. (class(GSPC) = [1] "xts" "zoo" where zoo is a data type totally ordered by an index, and xts is a time series data-type that tolerates more than the restrictive native ts data type tolerates.)

#coerce the .csv from my broker into a time-series data type as well
MyNetWorth <- read.csv("/home/joey/Desktop/Historical_NAV.csv")
MyNetWorth <- as.xts( MyNetWorth,
                                   order.by= as.Date(MyNetWorth$TradeDate, format="%m/%d/%Y") )

In the date format there is a big difference between %Y ('87) and %y (1987), as well as between %m – months and %M – minutes. My broker wrote 10/23/2009.

So did I do it right?

> class(MyNetWorth)
[1] "xts" "zoo"


Finally, @Joshua Ulrich's advice does the kind of merge I want:

comparison <- merge(GSPC$GSPC.Adjusted, MyNetWorth$NetAssets, join="right")

The right join compares the dates only at the coarser scale (my data is always coarser than Yahoo's).

Last of all, to plot the results:

plot( as.zoo(comparison) , screens=c(1,1), col=c("red", "#333333")  )

Many thanks to all the people who wrote all this open source software — and especially to those who wrote vignettes!

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