Ah yes, Punkt tokenizer is the magical unsupervised sentence boundary detection. And the author's last name is pretty cool too, Kiss and Strunk (2006). The idea is to use NO annotation to train a sentence boundary detector, hence the input will be ANY sort of plaintext (as long as the encoding is consistent).
To train a new model, simply use:
tokenizer = nltk.tokenize.punkt.PunktSentenceTokenizer()
text = codecs.open("someplain.txt","r","utf8").read()
out = open("someplain.pk","wb")
To achieve higher precision and allow you to stop training at any time and still save a proper pickle for your tokenizer, do look at this code snippet for training a German sentence tokenizer, https://github.com/alvations/DLTK/blob/master/dltk/tokenize/tokenizer.py :
def train_punktsent(trainfile, modelfile):
""" Trains an unsupervised NLTK punkt sentence tokenizer. """
punkt = PunktTrainer()
with codecs.open(trainfile, 'r','utf8') as fin:
punkt.train(fin.read(), finalize=False, verbose=False)
print 'KeyboardInterrupt: Stopping the reading of the dump early!'
##HACK: Adds abbreviations from rb_tokenizer.
abbrv_sent = " ".join([i.strip() for i in \
abbrv_sent = "Start"+abbrv_sent+"End."
# Finalize and outputs trained model.
model = PunktSentenceTokenizer(punkt.get_params())
with open(modelfile, mode='wb') as fout:
pickle.dump(model, fout, protocol=pickle.HIGHEST_PROTOCOL)
However do note that the period detection is **very sensitive to the latin fullstop, question mark and exclamation mark **. If you're going to train a punkt tokenizer for other languages that doesn't use latin orthography, you'll need to somehow hack the code to use the appropriate sentence boundary punctuation. If you're using NLTK's implementation of punkt, edit the
There are pre-trained models available other than the 'default' English tokenizer using
nltk.tokenize.sent_tokenize(). Here they are: https://github.com/evandrix/nltk_data/tree/master/tokenizers/punkt
Note the pre-trained models are currently not available because the
nltk_data github repo listed above has been removed.