I am currently using uni-grams in my word2vec model as follows.
def review_to_sentences( review, tokenizer, remove_stopwords=False ): #Returns a list of sentences, where each sentence is a list of words # #NLTK tokenizer to split the paragraph into sentences raw_sentences = tokenizer.tokenize(review.strip()) sentences =  for raw_sentence in raw_sentences: # If a sentence is empty, skip it if len(raw_sentence) > 0: # Otherwise, call review_to_wordlist to get a list of words sentences.append( review_to_wordlist( raw_sentence, \ remove_stopwords )) # # Return the list of sentences (each sentence is a list of words, # so this returns a list of lists return sentences
However, then I will miss important bigrams and trigrams in my dataset.
E.g., "team work" -> I am currently getting it as "team", "work" "New York" -> I am currently getting it as "New", "York"
Hence, I want to capture the important bigrams, trigrams etc. in my dataset and input into my word2vec model.
I am new to wordvec and struggling how to do it. Please help me.