NLP | Backoff Tagging to combine taggers
Last Updated :
11 Apr, 2022
What is Part-of-speech (POS) tagging ? It is a process of converting a sentence to forms – list of words, list of tuples (where each tuple is having a form (word, tag)). The tag in case of is a part-of-speech tag, and signifies whether the word is a noun, adjective, verb, and so on. What is Backoff Tagging? It is one of the most important features of SequentialBackoffTagger as it allows to combine the taggers together. The advantage of doing this is that if a tagger doesn’t know about the tagging of a word, then it can pass this tagging task to the next backoff tagger. If that one can’t do it, it can pass the word on to the next backoff tagger, and so on until there are no backoff taggers left to check. Code #1 : Performing tagging
Python3
from nltk.tag import SequentialBackoffTagger
from nltk.tag import DefaultTagger
from nltk.tag import UnigramTagger
from nltk.corpus import treebank
train_data = treebank.tagged_sents()[: 3000 ]
test_data = treebank.tagged_sents()[ 3000 :]
tag1 = DefaultTagger( 'NN' )
tag2 = UnigramTagger(train_data, backoff = tag1)
tag2.evaluate(test_data)
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Output :
0.8752428232246924
How it works ? SequentialBackoffTagger class can take a backoff keyword argument whose value is another instance of a SequentialBackoffTagger. In the code above, unigram part-of-speech tagger is backoff with Default tagger and trained on treebank.tagged_sents() dataset. Code #2 : Preparing internal list of backoff taggers
Python3
from nltk.tag import SequentialBackoffTagger
print (tag1._taggers = = [tag1])
print ("\n", tag2._taggers = = [tag2, tag1])
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Output :
True
True
How it works ?
- SequentialBackoffTagger class is initialized, creating an internal list of the backoff taggers with first element being itself.
- The backoff tagger’s internal list of taggers is appended if a backoff tagger is given.
- SequentialBackoffTagger class uses _taggers list is the internal list of backoff taggers when the tag() method is called.
- Calling choose_tag() on each one of them, it goes through its list of taggers.
- It stops and returns the tag when a tag is found.
- The tag will be returned if primary tagger can tag the word.
- Else, it returns None and the next tagger is tried, and so on until a tag is found, or else None is returned.
Code #3 : Saving and loading a trained tagger with pickle.
Python3
import pickle
file = open ( 'tagger.pickle' , 'wb' )
pickle.dump(tagger, file )
file .close()
file = open ( 'tagger.pickle' , 'rb' )
tagger = pickle.load(f)
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Output :
nltk.data.load('tagger.pickle') will load the file
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