I have a trained Word2vec model using Python's Gensim Library. I have a tokenized list as below. The vocab size is 34 but I am just giving few out of 34:
b = ['let', 'know', 'buy', 'someth', 'featur', 'mashabl', 'might', 'earn', 'affili', 'commiss', 'fifti', 'year', 'ago', 'graduat', '21yearold', 'dustin', 'hoffman', 'pull', 'asid', 'given', 'one', 'piec', 'unsolicit', 'advic', 'percent', 'buy']
model = gensim.models.Word2Vec(b,min_count=1,size=32) print(model) ### prints: Word2Vec(vocab=34, size=32, alpha=0.025) ####
if I try to get the similarity score by doing
model['buy'] of one the words in the list, I get the
KeyError: "word 'buy' not in vocabulary"
Can you guys suggest me what I am doing wrong and what are the ways to check the model which can be further used to train PCA or t-sne in order to visualize similar words forming a topic? Thank you.