Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I'm doing a bit more statistical analysis on some things lately, and I'm curious if there are any programming languages that are particularly good for this purpose. I know about R, but I'd kind of prefer something a bit more general-purpose (or is R pretty general-purpose?).

What suggestions do you guys have? Are there any languages out there whose syntax/semantics are particularly oriented towards this? Or are there any languages that have exceptionally good libraries?

share|improve this question

closed as not constructive by Bo Persson, Ben Bolker, gnat, Julius, SztupY Feb 10 '13 at 11:07

As it currently stands, this question is not a good fit for our Q&A format. We expect answers to be supported by facts, references, or expertise, but this question will likely solicit debate, arguments, polling, or extended discussion. If you feel that this question can be improved and possibly reopened, visit the help center for guidance.If this question can be reworded to fit the rules in the help center, please edit the question.

Interesting question because of the general purpose-ness constraint. DSLs can be a PITA to work with when only part of what you want to do is in that domain. – dsimcha Feb 5 '10 at 1:59
Jason's general purpose-ness constraint, as described in a comment to Dirk's answer, seems in fact very well suited to R's strengths. Comparing R to SAS, Stata, Matlab or whatever not is a mistake (in this respect.) – Eduardo Leoni Feb 6 '10 at 4:10

16 Answers 16

up vote 51 down vote accepted

No contest -- R as the main implementation of S (and one that happens to be proper Open Source and a GNU project as well).

Not only as the S language designed precisely for this purpose (see the books by John Chambers), but the rather rich support of domain-specific packages at CRAN is second to none: over 2000 packages with proper quality control, often authored by experts in the field.

The ACM sees it the same way when it gave the ACM Software Systems Award to John Chambers in 1998 with the following citation

John M. Chambers

For The S system, which has forever altered how people analyze, visualize, and manipulate data.

For reference, other winners of this award were TeX, Smalltalk, Postscript, RPC, 'the web', Mosaic, Tcl/Tk, Java, Make, ... Not a bad company to be in.

Now, if you 'only' want to collect and summarize some data just about any procedural or functional language will do. But if you want something that was designed for programming with data then R as the main S implementation it is.

share|improve this answer
I fully understand R's power as a statistical language. However, I need to do some things aside from just statistics (parsing logfiles and accessing a sqlite database). Can R do that? – Jason Baker Feb 5 '10 at 14:57
Yup! There is e.g. the RSQLite package which has everything you need to read/write to/from SQLite files. Plus, it uses the DBI interface so you re-use your code on different backends. As for parsing, R contains several regex engines, including basic, extended and Perl---see help(regex)---so it does this very well too. You can use R for scripting via the 'Rscript' executable on Windows, OS X, Linux as well as 'r' ("littler") on OS X and Linux. [ I co-wrote / maintain littler ]. – Dirk Eddelbuettel Feb 5 '10 at 15:05
You can do anything you want in R, but you probably don't want to. My suggestion would be to learn R and some other language that plays well with R. If you're building heavy-duty applications, maybe Java or Scala. If you're building medium-sized systems that are mostly wrappers around R, maybe Python or Ruby. Then use the various libraries that people have written to call R from your other language when you have a need for sophisticated work with data and statistics. – Harlan Feb 7 '10 at 23:43
You know that saying, "There's an app for that?". When it comes to R, "There's a package for that". Even fortune cookies! – Brandon Bertelsen Nov 30 '12 at 5:30
I've just discovered Stata, do you guys have opinions Vs R? – user1125394 Nov 2 '13 at 16:33

No question that R is the best language for statistics, as Dirk says. I just want to add a few points to this:

First, I think that the primary reason that you should use R is because of the community. It is used so heavily by experts in academia and industry at this stage, that no other language even comes close to rivalling the wealth on CRAN.

Second, it should be acknowledged that R the language is a joy to work with. It is my primary language, and having tried alternatives, I have no intention of abandoning it any time soon. But it also doesn't have a monopoly on it's strength for programming with data and this claim can be taken too far. All the Lisp and Functional languages are strong at data programming. Lisp, after all, was derived from "list programming", and it is Lisp's influence on R that make the language what it is.

There are members of the R community (eg. Ross Ihaka) who are actually viewing Lisp as the statistical languge of the future (see the "back to the future" paper for a reference) due to some deep design problems in the R language (eg. no multithreading).

So while R is undoubtedly the best language for statistical computing, I see some value in being familiar with another language like OCaml, Haskell, or (possibly) Clojure/Incanter.

share|improve this answer

Have a look at Incanter, based on clojure. "Incanter is a Clojure-based, R-like platform for statistical computing and graphics." Clojure is a lisp based language implemented on the top of the JVM. It has easy access to java libraries. Can't get more general purpose than that.

share|improve this answer
I was just looking at that, and it seems pretty interesting! – Jason Baker Feb 5 '10 at 14:55
+1 for Incanter. It isn't yet as well developed as R, but since you get all the Java / Clojure libraries and capabilities it's extremely useful if you want to do statistics and general purpose development at the same time. – mikera Dec 15 '11 at 19:52

From my experience, R is an exceptionally powerful language in these areas:

  1. Manipulation and transformation of data.

  2. Statistical analysis.

  3. Graphics.

But R is by no means a three-trick pony. I have also applied the language to tasks that do not fit entirely into the above categories. Some examples are:

  • A script to assist in the creation of OSX universal binaries by identifying and matching static and dynamic libraries of different architectures and then running the resulting groups through lipo.

  • Scripts to scrape information from web pages.

  • A set of scripts to create georeferenced imagery, cut the images into tilesets using GDAL, form a JSON manifest that describes the output and upload the result to a website for immediate display by OpenLayers.

My favorite part of using the R is the frequency with which I get to say:

WHOA! There's a package that does THAT?!

share|improve this answer

You can have a look at the program sage, which is a re-implementation of the python interpreter that allow you to call different programming languages for statistics (R, matlab, octave, etc..) using a python syntax.

One of the major issues while writing programs to do statistics is that you may end up with having many different small scripts, each one doing a separate task, and you can end up with having messy folders and confusion in your results.

So, apart from choosing a programming language (I think other people have answered to your question already) you also need a syntax to define pipelines of scripts: you can make it with the program 'gnu/make' (e.g. read this) or with this sage, or there are other solutions.

share|improve this answer
spellcheck: mayor -> major – Tshepang Apr 26 '10 at 22:06
fixed, thanks!! – dalloliogm Apr 27 '10 at 8:42

I would say R as most of the Statistics courses in my University use R and most of my friends who have taken such courses are quite content with its range and reach.

I have even tried MATLAB and found it pretty handy.


share|improve this answer

R is great if all you're doing is statistics. It's got a nice interactive interface and visualization tools. However, it's pretty hard to use as a general purpose language because its syntax and semantics are very highly optimized for doing statistics. If you want a more general-purpose language, Python with SciPy would be a decent choice, though I've used it and found the statistical routines in it to be somewhat immature. They often are inefficient or fail in corner cases.

If you're doing data mining on large datasets, making performance important, and/or you don't mind using alpha-ish tools, the D programming language and the dstats library can be pretty good. D is about as general-purpose a language as you get, but IMHO dstats is very easy to use because template metaprogramming makes it easy to design a nice API even in a statically compiled, close-to-the-metal language. (Full disclosure: I wrote most of dstats, so of course I think it's good.)

share|improve this answer
R works quite well for general purpose programming -- eg the code behind the CRANberries html and rss summaries of changes at CRAN is less than 200 lines of ... R. Likewise, more and more of the behind the scenes scripts used by R for building R, running tests, updating documentation from a latex-alike meta format are now in R. And no other language comes even close to CRAN and its 2000+ packages. – Dirk Eddelbuettel Feb 5 '10 at 2:36
@Dirk: I guess it's pretty subjective, but I find most math-oriented languages (R, Matlab, etc.) very awkward and strange for general purpose programming, not just R. – dsimcha Feb 5 '10 at 3:16
Many comparisons are subjective. Also, R != Matlab and this comparison is generally not a good one. Second, I gave you concrete examples of R as a general programming environment. It is quite possible thanks to numerous POSIX calls, wrapping of filesystem / OS level calls, regexp libraries etc pp. So with that I still rebuke your 'if all you are doing is statistics'. – Dirk Eddelbuettel Feb 5 '10 at 11:58
I disagree with this, R quickly replaced Perl as my weapon of choice for most general--purpose programming tasks. – Sharpie Feb 8 '10 at 17:41

The pystats library (for Python) is well-suited for statistical analysis.

share|improve this answer
It seems that the project files haven't been updated since 2005. That is usually a very bad sign. – signalseeker Feb 4 '10 at 16:45
I have a 2005 Jeep that still runs great! – AJ. Feb 4 '10 at 17:08
I have a bit of cheese from 2005! – Thomas Feb 4 '10 at 18:05
@AJ - Probably not enough to make a difference. However, it may mean that nobody's maintained the library since 2005 and thus it may be difficult to get help/fix bugs. Granted, that may not always be the case, but I'll tend to avoid such projects if I can. – Jason Baker Feb 5 '10 at 16:56
Modern python data people generally use a combination of scipy, matplotlib, pandas, statsmodels, scikit-learn, and others, depending on exactly what you're doing. rpy2 is also a great interface to R for when you need something that's just not implemented in python. – Dougal Feb 9 '13 at 5:27

Have you considered using somethinbg like MatLab? It has many advanced capabilities to perform data analysis and you can do some programming in the environment.

share|improve this answer

What about Stata? I have a friend who is a PhD Economics student and he raves about Stata all the time. And I have a personal affinity for Mathematica.

share|improve this answer

Matlab is good at statistics too. It's not exactly free, though.

Octave is a free clone that might also do what you need.

share|improve this answer

A friend of mine who focuses on market statistics uses SAS. I don't know much about it- it doesn't seem like a "real" language, but might be worth checking out.

I'm all for Python with R bindings.

share|improve this answer
SAS is VERY expensive. If one wants a paid statistical software, there are more choices (also cheaper ones) like: spss, jmp, mathlab and so on. Personally, I would prefer R :) – Tal Galili Feb 6 '10 at 10:31
+1, Python and R together is a dream come true. Check out rpy2: rpy.sourceforge.net/rpy2.html – Mark Feb 7 '10 at 19:24

Have a look into the RooFit package for ROOT. It is used by e.g. particle physicists for data analysis.

ROOT is a C++ framework and also comes with python and ruby bindings. It is also includes a limited interactive C++ interpreter.

share|improve this answer

I´d also like to +1 for R. It might not be as easy to handle as STATA or even SPSS, in particular for non-programmers. Though I guess the average stackoverflower is way more of a programmer than I am.

That being said, i´d like to give a short overview, because I have seen a couple of statistical packages from a users (economists( point of view.

STATA is still the choice for the majority of economists, and indeed it has some pluses. STATAs GUI helps to stay in charge of a load of options and statistical functions. Besides STATA appears to be only package which has a mailing list that comes at least somewhat near to the benchmark: the one-of-a-kind R Mailing list. Still one could write sophisticated .do files or download some from the web. STATA might not be as close to a programming language as R but still offers a nice programming language for statistical purposes. Depending on the size of you datasets you should check what license you need.

You could also use SPSS which is even more of a GUI Tool than STATA and is a little less comprehensive for example for econometric work such as TOBIT models or Panel regressions, particularly discrete choice models.

There´s also Eviews – unfortunately I have forgot most about it and only used it for a couple of easy regressions in my studies. Thus I just name it here. Same about GAUSS, which appears more mathematical than the rest of the pack. Recently I have heard about Octave, which is also more mathematical.

For my personal usage R is head and shoulders above anything else. Occasionally I pair it in Python or connect it to MySQL or PostgreSQL databases which also works well. R really helps you to learn statistics because you need to understand more in order to do something than you would need clicking your way through the likes of SPSS. Though if you need a GUI, you could try RKward or consider installing Komodo / Sciviews-R or Tinn-R on windows. The latter ones aren´t GUIs, but editors more or less that support Code Highlight and code suggestions which also help to go get it done. Farnsworth Econometrics in R is a good read. Ah, and I can´t forget to mention the plotting. the ggplot2 package from Hadley Wickham is just off the hook. The best way to create graphics as long as you do not need them to be interactive. At the end of the day R is really to most flexible package: you can even install it on a webserver and build some nice webinterface – the sky is the limit.

share|improve this answer
use python for parsing, and write your stuff to a local SQL database, create some nice views and then use RMySQL for example. It´s worth the hustle! – Matt Bannert Jul 2 '10 at 11:15

APL is apparently one of the best language around for statistics work. It is not general purpose though...

It does require a special keyboard and font as it does not use ascii.

See Conway's Game of Life in one line of APL for a bit of an overview of what can be done with it.

share|improve this answer
APL is as general-purpose as anything else, just a lot harder to learn. +1 for nostalgia – Norman Ramsey Feb 5 '10 at 1:53
If you're thinking of APL, then why not go with J or K instead, which is a little more practical but uses the same basic approach? – Shane Feb 11 '10 at 5:33

As I am the student of statistics. I found R the best among all other statistics related software. perhaps it has capacity to do any thing with the statistics.

share|improve this answer

Not the answer you're looking for? Browse other questions tagged or ask your own question.