I'm trying to retrieve list of topics from a large corpus of news articles, I'm planning to use gensim to extract a topic distribution for each document using LDA. I want to know the format of processed articles required by gensim implementation of lda and how to convert raw articles to that format. I saw this link about using lda on wikipedia dump but I found the corpus to be in a processed state whose format was not mentioned anywhere
There is an offline learning step and an online feature creation step.
Assume you have a big corpus such as Wikipedia or downloaded a bunch of news articles.
For each article/document:
Then you train the TF-IDF model and convert the whole corpus to the TF-IDF space. Finally, you train the LDA model on the "TF-IDF corpus".
With an incoming news article you do almost the same:
I don't know if I got the problem right, but gensim supports multiple corpora. You can find a list of them here.
If you want to process natural language, you have to tokenize the text first. You can follow the step-by-step tutorial on the gensim website here. It's explained pretty well.