Can Python + NLTK be used to identify the subject of a sentence? From what I have learned till now is that a sentence can be broken into a head and its dependents. For e.g. "I shot an elephant". In this sentence, I and elephant are dependents to shot. But How do I discern that the subject in this sentence is I.
You can use Spacy.
import spacy nlp = spacy.load('en') sent = "I shot an elephant" doc=nlp(sent) sub_toks = [tok for tok in doc if (tok.dep_ == "nsubj") ] print(sub_toks)
English language has two voices: Active voice and passive voice. Lets take most used voice: Active voice.
subject-verb-object model. To mark the subject, write a rule set with POS tags. Tag the sentence
I[NOUN] shot[VERB] an elephant[NOUN]. If you see the first noun is subject, then there is a verb and then there is an object.
If you want to make it more complicated, a sentence-
I shot an elephant with a gun. Here the prepositions or subordinate conjunctions like with, at, in can be given roles. Here the sentence will be tagged as
I[NOUN] shot[VERB] an elephant[NOUN] with[IN] a gun[NOUN]. You can easily say that word with gets instrumentative role. You can build a rule based system to get role of every word in the sentence.
Also look at the patterns in passive voice and write rules for the same.
You can paper over the issue by doing something like
doc = nlp(text.decode('utf8')), but this will likely bring you more bugs in future.