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
#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. (
 "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$TradeDate, format="%m/%d/%Y") )
In the date
format there is a big difference between
%Y ('87) and
%y (1987), as well as between
%m – months and
%M – minutes. My broker wrote 10/23/2009.
So did I do it right?
 "xts" "zoo"
Finally, @Joshua Ulrich's advice does the kind of merge I want:
comparison <- merge(GSPC$GSPC.Adjusted, MyNetWorth$NetAssets, join="right")
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!