A verbal noun is a noun formed from or otherwise corresponding to a verb.
I am looking to write an algorithm which when given a noun returns the corresponding verb (if the input noun is a verbal noun).
My initial thought was to apply a stemmer to the noun, then search a verb list for a verb which has the same stem.
Before doing this, I created a small test data set.
It shows that sometimes this approach will not work:
For example:
'to explain' and 'explanation' do not have the same stem.
'to decide' and 'decision' do not have the same stem.
from nltk.stem.snowball import SnowballStemmer
stemmer = SnowballStemmer('english')
l=[('to increase', 'increase'),
('to inhibit', 'inhibition'),
('to activate', 'activation'),
('to explain', 'explanation'),
('to correlate', 'correlation'),
('to decide', 'decision'),
('to insert', 'insertion')
]
for p in l:
print(stemmer.stem(p[0]), ' <-> ', stemmer.stem(p[1]))
#to increas <-> increas
#to inhibit <-> inhibit
#to activ <-> activ
#to explain <-> explan
#to correl <-> correl
#to decid <-> decis
#to insert <-> insert
Does anyone know of a method which will work in cases of derivative nouns that do not have the same stem?