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Is there any C# library which can detect the language of a particular piece of text? i.e. for an input text "This is a sentence", it should detect the language as "English". Or for "Esto es una sentencia" it should detect the language as "Spanish".

I understand that language detection from text is not a deterministic problem. But both Google Translate and Bing Translator have an "Auto detect" option, which best-guesses the input language. Is there something similar available publicly, preferably in C#?

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marked as duplicate by animuson May 10 '14 at 14:08

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

Only the other day I saw one of my intranet webpages on a PC with Google Translator installed. The page just had a few words like mean and stddev and some numbers. Google Translator told me the page was in Romanian and asked if I wanted a translation. If it's not a deterministic problem, how can software do a good job? –  pavium Sep 23 '09 at 7:19
They do a good job sometimes. Of course there will be inputs for which they utterly fail, but for the more likely inputs they perform reasonably well –  Vinko Vrsalovic Sep 23 '09 at 7:22
@pavium. Web search is a non-deterministic problem. Software does a decent job of solving that :). –  Nikhil Oct 10 '09 at 22:16
"decent job" is highly subjective... bing.com/search?q=linux and google.com/#q=linux give you trully different results - but I tend to have an opinion like yours. –  ANeves Apr 14 '10 at 13:33

8 Answers 8

Yes indeed, TextCat is very good for language identification. And it has a lot of implementations in different languages.

There were no ports in .Net. So I have written one: NTextCat.codeplex.com.

It is pure .Net Framework dll + command line interface to it. It is fully compatible with 74 language models from TextCat, so it is capable of detecting language out of the box.

Any feedback is very appreciated! New ideas and feature requests are welcomed too :)

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Tried NTextCat today, and it's very easy to work with! –  Niels Bosma Aug 1 '11 at 15:24
Thanks for using it! Any particular feedback is very much appreciated. Please post your feedback (if any) on this page –  Ivan Akcheurov Aug 15 '11 at 14:58

Here you have a simple detector based on bigram statistics (basically means learning from a big set which bigrams occur more frequently on each language and then count those in a piece of text, comparing to your previously detected values):


This is probably good enough for many (most?) applications and doesn't require Internet access.

Of course it will perform worse than Google's or Bing's algorithm (which themselves aren't great). If you need excellent detection performance you would have to do both a lot of hard work and over huge amounts of data.

The other option would be to leverage Google's or Bing APIs if your app has Internet access.

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In fact, this approach will give quite good results. It can be improved by using n-grams instead of bi-grams. However, it will always be difficult to tell very similar languages (e.g. Polish and Czech) apart. Languages such as Greek will be very easy though... –  Dirk Vollmar - 0xA3 Sep 23 '09 at 7:23
To avoid misunderstandings, what would you call quite good in this context? –  Vinko Vrsalovic Sep 23 '09 at 7:36

Language detection is a pretty hard thing to do.

Some languages are much easier to detect than others simply due to the diacritics and digraphs/trigraphs used. For example, double-acute accents are used almost exclusively in Hungarian. The dotless i ‘ı’, is used exclusively [I think] in Turkish, t-comma (not t-cedilla) is used only in Romanian, and the eszett ‘ß’ occurs only in German.

Some digraphs, trigraphs and tetragraphs are also a good give-away. For example, you'll most likely find ‘eeuw’ and ‘ieuw’ primarily in Dutch, and ‘tsch’ and ‘dsch’ primarily in German etc.

More giveaways would include common words or common prefixes/suffixes used in a particular language. Sometimes even the punctuation that is used can help determine a language (quote-style and use, etc).

If such a library exists I would like to know about it, since I'm working on one myself.

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You should think about a more generic n-grams based classifier based on a training corpus. –  Luca Martinetti Sep 21 '10 at 12:13

You'll want a machine learning algorithm based on hidden markov chains, process a bunch of texts in different languages.

Then when it gets to the unidentified text, the language that has the closer 'score' is the winner.

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You can utilize Google's translation webservice to do this.

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There is a simple tool to identify text language: http://www.detectlanguage.com/

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I've found that "textcat" is very useful for this. I've used a PHP implementation, PHP Text Cat, based on this this original implementation, and found it reliable. If you have a look at the sources, you'll find it's not a terrifyingly difficult thing to implement in the language of your choice. The hard work -- the letter combinations that are relevant to a particular language -- is all in there as data.

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Please find a C# implementation based on of 3grams analysis here:


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