I have read that the most common technique for topic modeling (extracting possible topics from text) is Latent Dirichlet allocation (LDA).
However, I am interested whether it is a good idea to try out topic modeling with Word2Vec as it clusters words in vector space. Couldn't the clusters therefore be regarded as topics?
Do you think it makes sense to follow this approach for the sake of some research? In the end what I am interested in is to extract keywords from text according to topics.