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This morning I was reading an interview with Bradford Cross of FlightCaster over on the DataWrangling blog. Bradford mentions in the interview that one of his biggest challenges has been the wrangling of their data. Even though I am an economist I find that I spend more than 70% of my time doing reformatting, ETL, cleaning, etc. I spend much less time doing actual econometrics.

If you were to counsel a relatively new R user on which data wrangling method and commands to learn, which would you tell them to focus on and why?

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closed as not constructive by Will Feb 22 '13 at 16:28

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I like this question. The data wrangling is really where the steep learning curve resides. However it is the part I always stress with new R users as its where the power is. – kpierce8 Aug 26 '09 at 15:54
@kpierce8 I notice you didn't answer this question — what tools do you counsel new users to try? – isomorphismes Jun 30 '11 at 23:59

13 Answers 13

up vote 20 down vote accepted

The reshape package has some nice tools (melt and cast) changing the data from a wide to a long format and vice versa.

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Agreed. I've been meaning to work on my fluency with this package for some time now. Completely changed the way I think about data. – Matt Parker Aug 24 '09 at 18:56
Melt got my attention when Jonathan Chang used it in his answer here: stackoverflow.com/questions/1313954 I thought to myself, "Self, you gotta learn melt... what other methods like this am I missing" – JD Long Aug 24 '09 at 19:03

The plyr package.

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Naturally! GGPLOT2 is pretty good too. :) – JD Long Aug 25 '09 at 2:00

I use indexing all the damn time. Fairly basic, but completely essential.

merge() and subset() are also incredibly useful.

Knowing how to wrangle factors is fairly vital, if you use that sort of data.

Finally, for getting the data into R, the package RODBC is handy - it put my introduction to SQL into a cozy, familiar environment. I've also found that learning the parameters of read.table() is useful, too - even though the defaults work so well most of the time, a lot of things are easiest to deal with right when you're bringing the data in.

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Update: Sweet Mother of God, I love merge(). – Matt Parker Sep 1 '09 at 22:16

Apply and friends: tapply, lapply, sapply, aggregate, by.

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This is not specific to R, but regular expressions are very handy for ill-formatted data. In R, look at grep/grepl, and gsub. And agrep for approximate matching of strings (not regular expressions.)

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ave() is a great, underappreciated function that will sort of is like tapply() and will let you determine values by levels. For example, take the data frame foo below and you wanted to find the cities with the highest population by state. ave() will return a vector as follows.

foo <- data.frame(state=c('California', 'California','Texas', 'Texas'),
        city=c('LA', 'SF', 'Austin', 'Fort Worth'), 
        population=c(3.83e6, 8e5, 7.57e5, 7.03e5))    
ave(foo$population, foo$state, FUN=function(x) rank(-1*x))
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I have to admit that I feel a little dirty using this one, but I get huge mileage out of the package slqdf which allows using SQL syntax on a data frame. It has allowed me to leverage my kick ass SQL skills in R land. It also allows me to write some really odd code that's pretty inefficient. But it does what I want and I get analysis out the door faster because I use it. It's a trade-off.

Earlier SO question on sqldf

Google Code page on sqldf

It's pretty dang amusing how it works. My read of the docs (I have not delved into the source code) is that it pushes the data frame into SQLite, executes an SQLite query on the table and then passes back the result. Pretty slick way to get SQL syntax against a data frame... albeit of dubious code efficiency. Definitely from the school of 'code that gets shit done.' Pragmatic and ingenious.

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I just discovered the command agrep which does fuzzy matching of strings. It is incredibly useful in certain situations. ?agrep.

Furthermore, the data.table package is very useful for aggregating and summarizing data prior to analysis.

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The person who wrote above that sqldf has dubious efficiency should note that performance is rarely intuitive. Despite the fact that sqldf is intended for convenience rather than speed several users have done speed comparisons and each found that sqldf was actually faster in the cases they benchmarked than performing the manipulations in plain R. The users posted their results. Links to their original postings can be found in the December 9, 2009 News item on the sqldf home page.

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Welcome to stackoverflow, Gabor! – Shane Feb 21 '10 at 20:46
Gabor, I'm rally glad that you've joined Stack Overflow. You're comments on sqldf() are spot on. I've been using sqldf as my prefered method for pulling big(ish) data into R with great success (cerebralmastication.com/2009/11/loading-big-data-into-r). Fast and easy. Just how I like it! ;) – JD Long Feb 22 '10 at 16:52
-1 sqldf is dubious because it prevents users from getting into the only truly convenient and always the fastest way to do things -- using vectorisation and indices. BTW, in the tests you linked sqldf wins only with other "confidence" methods. – mbq Jun 13 '11 at 17:47

Another useful set of functions are those that read data into R: readLines() with strsplit(), read.table() and its very useful parameter colClasses.

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Write regular expressions using regexpr, gsub, or grep. Make them a function and use lapply, sapply, and do.call. I can't emphasize this last part (a functional approach) enough; R is a vectorized language and these commands are very fast!

There is also the XML package which allows with extraction with XPath. Highly recommended!

Hope this helps!

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Sadly, I do not think that there is a magic bullet, or magic wand.

So my recommendation is to learn the language, period, as it is the tool to 'program with data'.

Many CRAN packages are surely of help (e.g. for data input/output as in database connections, for report creation, for domain-specific modeling, ...) but the crux lies in the actual data work.

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It's a totally valid point to say one has to learn the language. But for the beginner it's an issue of maximizing utility from R subject to a time constraint. From what I've been doing the last few days I feel I need to get much better with melt and with Hadley's plyr tools. Learning those two could save me lots of time. – JD Long Aug 24 '09 at 16:39
Perhaps there's no royal road -- but what's the Pareto Principle road to R? – isomorphismes Sep 5 '11 at 21:46

Just a newbie, but I've found the following useful: with, by, and their plyr alternatives. sapply, ifelse, and for.

In Rstudio, View() and fix() are helpful.

Command-line, head, dim, names, colnames, cbind, c, and of course read.csv, ?, and ??.

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