I need to classify words into their parts of speech. Like a verb, a noun, an adverb etc.. I used the
nltk.word_tokenize() #to identify word in a sentence nltk.pos_tag() #to identify the parts of speech nltk.ne_chunk() #to identify Named entities.
The out put of this is a tree. Eg
>>> sentence = "I am Jhon from America" >>> sent1 = nltk.word_tokenize(sentence ) >>> sent2 = nltk.pos_tag(sent1) >>> sent3 = nltk.ne_chunk(sent2, binary=True) >>> sent3 Tree('S', [('I', 'PRP'), ('am', 'VBP'), Tree('NE', [('Jhon', 'NNP')]), ('from', 'IN'), Tree('NE', [('America', 'NNP')])])
When accessing the element in this tree, i did it as follows:
>>> sent3 ('I', 'PRP') >>> sent3 'I' >>> sent3 'PRP'
But when accessing a Named Entity:
>>> sent3 Tree('NE', [('Jhon', 'NNP')]) >>> sent3 ('Jhon', 'NNP') >>> sent3 Traceback (most recent call last): File "<pyshell#121>", line 1, in <module> sent3 File "C:\Python26\lib\site-packages\nltk\tree.py", line 139, in __getitem__ return list.__getitem__(self, index) IndexError: list index out of range
I got the above error.
What i want is to get the output as 'NE' similar to the previous 'PRP' so i cant identify which word is a Named Entity. Is there any way of doing this with NLTK in python?? If so please post the command. Or is there a function in the tree library to do this? I need the node value 'NE'