I'm trying to create a general synonym identifier for the words in a sentence which are significant (i.e. not "a" or "the"), and I am using the natural language toolkit(nltk) in python for it. The problem I am having is that the synonym finder in nltk requires a part of speech argument in order to be linked to its synonyms. My attempted fix for this was to use the simplified part of speech tagger present in nltk, and then reduce the first letter in order to pass this argument into the synonym finder, however this is not working.
def synonyms(Sentence): Keywords =  Equivalence = WordNetLemmatizer() Stemmer = stem.SnowballStemmer('english') for word in Sentence: word = Equivalence.lemmatize(word) words = nltk.word_tokenize(Sentence.lower()) text = nltk.Text(words) tags = nltk.pos_tag(text) simplified_tags = [(word, simplify_wsj_tag(tag)) for word, tag in tags] for tag in simplified_tags: print tag grammar_letter = tag.lower() if grammar_letter != 'd': Call = tag.strip() + "." + grammar_letter.strip() + ".01" print Call Word_Set = wordnet.synset(Call) paths = Word_Set.lemma_names for path in paths: Keywords.append(Stemmer.stem(path)) return Keywords
This is the code I am currently working from, and as you can see I am first lemmatizing the input to reduce the number of matches I will have in the long run (I plan on running this on tens of thousands of sentences), and in theory I would be stemming the word after this to further this effect and reduce the number of redundant words I generate, however this method almost invariably returns errors in the form of the one below:
Traceback (most recent call last): File "C:\Python27\test.py", line 45, in <module> synonyms('spray reddish attack force') File "C:\Python27\test.py", line 39, in synonyms Word_Set = wordnet.synset(Call) File "C:\Python27\lib\site-packages\nltk\corpus\reader\wordnet.py", line 1016, in synset raise WordNetError(message % (lemma, pos)) WordNetError: no lemma 'reddish' with part of speech 'n'
I don't have much control over the data this will be running over, and so simply cleaning my corpus is not really an option. Any ideas on how to solve this one?
I did some more research and I have a promising lead, but I'm still not sure how I could implement it. In the case of a not found, or incorrectly assigned word I would like to use a similarity metric(Leacock Chodorow, Wu-Palmer etc.) to link the word to the closest correctly categorized other keyword. Perhaps in conjunction with an edit distance measure, but again I haven't been able to find any kind of documentation on this.