I'm using the NLTK WordNet Lemmatizer for a Part-of-Speech tagging project by first modifying each word in the training corpus to its stem (in place modification), and then training only on the new corpus. However, I found that the lemmatizer is not functioning as I expected it to.
For example, the word
loves is lemmatized to
love which is correct, but the word
loving even after lemmatization. Here
loving is as in the sentence "I'm loving it".
love the stem of the inflected word
loving? Similarly, many other 'ing' forms remain as they are after lemmatization. Is this the correct behavior?
What are some other lemmatizers that are accurate? (need not be in NLTK) Are there morphology analyzers or lemmatizers that also take into account a word's Part Of Speech tag, in deciding the word stem? For example, the word
killing should have
kill as the stem if
killing is used as a verb, but it should have
killing as the stem if it is used as a noun (as in
the killing was done by xyz).