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I am using NLTK to extract nouns from a text-string starting with the following command:

tagged_text = nltk.pos_tag(nltk.Text(nltk.word_tokenize(some_string)))

It works fine in English. Is there an easy way to make it work for German as well?

(I have no experience with natural language programming, but I managed to use the python nltk library which is great so far.)

thx for any hints.

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1  
An advantage you might exploit is that all nouns are capitalized in German. –  Abhranil Das Apr 30 '12 at 12:24
2  
Tag german removed as part of the 2012 cleanup. –  Abhranil Das Apr 30 '12 at 12:25

5 Answers 5

up vote 16 down vote accepted

Natural language software does its magic by leveraging corpora and the statistics they provide. You'll need to tell nltk about some German corpus to help it tokenize German correctly. I believe the EUROPARL corpus might help get you going.

See nltk.corpus.europarl.german - this is what you're looking for.

Also, consider tagging this question with "nlp".

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2  
+1 for beating me to it ;-), also thanks for the hint about tagging the question itself. –  mjv Oct 28 '09 at 21:07
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Thx. I got the German file from the EUROPAL corpus with your help and another useful hint. code.google.com/p/nltk/issues/detail?id=415 On to training the tokenizer. Johannes –  Johannes Meier Oct 29 '09 at 10:55
1  
With the europarl_raw module you can only train a tokenizer but not a POS tagger because the corpus is not POS tagged. –  Suzana_K Feb 28 '13 at 17:23

Part-of-Speech (POS) tagging is very specific to a particular [natural] language. NLTK includes many different taggers, which use distinct techniques to infer the tag of a given token in a given token. Most (but not all) of these taggers use a statistical model of sorts as the main or sole device to "do the trick". Such taggers require some "training data" upon which to build this statistical representation of the language, and the training data comes in the form of corpora.

The NTLK "distribution" itself includes many of these corpora, as well a set of "corpora readers" which provide an API to read different types of corpora. I don't know the state of affairs in NTLK proper, and if this includes any german corpus. You can however locate free some free corpora which you'll then need to convert to a format that satisfies the proper NTLK corpora reader, and then you can use this to train a POS tagger for the German language.

You can even create your own corpus, but that is a hell of a painstaking job; if you work in a univeristy, you gotta find ways of bribing and otherwise coercing students to do that for you ;-)

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The Pattern library includes a function for parsing German sentences and the result includes the part-of-speech tags. The following is copied from their documentation:

from pattern.de import parse, split
s = parse('Die Katze liegt auf der Matte.')
s = split(s)
print s.sentences[0]

>>>   Sentence('Die/DT/B-NP/O Katze/NN/I-NP/O liegt/VB/B-VP/O'
     'auf/IN/B-PP/B-PNP der/DT/B-NP/I-PNP Matte/NN/I-NP/I-PNP ././O/O')

If you prefer the SSTS tag set you can set the optional parameter tagset="STTS".

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I have written a blog-post about how to convert the German annotated TIGER Corpus in order to use it with the NLTK. Have a look at it here.

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2  
Referenced blog post not available anymore. –  Tim Sep 7 '13 at 20:12

Possibly you can use the Stanford POS tagger. Below is a recipe i've wrote. There are python recipes for German NLP that i've compiled and you can access them on www.alvations.github.io/dltk.github.io/

#-*- coding: utf8 -*-

import os, glob, codecs

def installStanfordTag():
    if not os.path.exists('stanford-postagger-full-2013-06-20'):
        os.system('wget http://nlp.stanford.edu/software/stanford-postagger-full-2013-06-20.zip')
        os.system('unzip stanford-postagger-full-2013-06-20.zip')
    return

def tag(infile):
    cmd = "./stanford-postagger.sh "+models[m]+" "+infile
    tagout = os.popen(cmd).readlines()
    return [i.strip() for i in tagout]

def taglinebyline(sents):
    tagged = []
    for ss in sents:
        os.popen("echo '''"+ss+"''' > stanfordtemp.txt")
        tagged.append(tag('stanfordtemp.txt')[0])
    return tagged

installStanfordTag()
stagdir = './stanford-postagger-full-2013-06-20/'
models = {'fast':'models/german-fast.tagger',
          'dewac':'models/german-dewac.tagger',
          'hgc':'models/german-hgc.tagger'}
os.chdir(stagdir)
print os.getcwd()


m = 'fast' # It's best to use the fast german tagger if your data is small.

sentences = ['Ich bin schwanger .','Ich bin weider schwanger .','Ich verstehe nur bahnhof .']

tagged_sents = taglinebyline(sentences) # Call the stanford tagger

for sent in tagged_sents:
    print sent
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