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I've found some information about xts fields representation in this thread but I'm still not clear why xts is an index + a matrix. Why not an index + a data frame? Wouldn't that allow more flexibility when working with factors and numeric columns?

Once I've loaded data in xts most of the work consists in performing numerical operations on a full set or a subset of the time series. For this the indexing works very well, but I am forced to go through calls like data.frame(data.matrix(myxts)) to be able to extract factors and numerical columns.

In addition I find more convenient to use the $ notation than the matrix indexing, although this is really a different question. For example:

lm(myxts$Res ~ myxts$ThisVar + myxts$ThatVar)

is easier to write than

lm(myxts[, "Res"] ~ myxts[, "ThisVar"] + myxts[, "ThatVar"]).
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up vote 6 down vote accepted

xts uses matrix rather than data.frame because:

  1. it is a subclass of zoo, and that's how zoo objects are structured, and
  2. matrix objects have much better performance than data.frames.

Your second question could be solved by using the data= argument to lm or, more generally, by using with:

with(myxts, lm(Res ~ ThisVar + ThatVar))
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This answer my question, but how costly is the data.matrix() call to work on numbers? Doesn't it defeat the purpose of using a character matrix vs. data frame in xts for better perfomances? –  Robert Kubrick Jan 14 '12 at 15:27
I'm scratching my head. There are never factor variables in a matrix (of any sort) because matrix objects remove all attributes except names and dimensions. I believe you are missing the point Joshua is making: that you do not need to wrap EITHER data.frame OR data.matrix around the xts-object to get its numeric values into lm when it is accessed using with or passed as a data argument to lm. –  BondedDust Jan 14 '12 at 15:37
Also zoo is designed as an enhanced ts class (in the core of R) which in turn is based on matrices. See the zoo Design vignette: cran.r-project.org/web/packages/zoo/vignettes/zoo-design.pdf . Note that zoo does support $. e.g. library(zoo); z <- zoo(cbind(a = 1:3, b = 4:6)); z$a . By the way, the performance difference is quite significant between matrices and data frames. –  G. Grothendieck Jan 14 '12 at 15:42
@RobertKubrick: I'm not sure. We have not spent a lot of time optimizing xts for time-series estimation. The performance I refer to can be seen in the ability to manipulate xts objects with tens or hundreds of millions of elements very quickly. –  Joshua Ulrich Jan 14 '12 at 15:47
Robert, the cost is not the conversion, the cost is the access of elements. Matrices strongly outperform data.frames, and that has been throroughly debated on r-devel over the years. –  Dirk Eddelbuettel Jan 14 '12 at 17:11
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