After going through the documentation of the Gensim package, I found out that there are total 4 ways of transforming a text repository into a corpus.
There are total 4 formats for the corpus:
- Market Matrix (.mm)
- SVM Light (.svmlight)
- Blie Format (.lad-c)
- Low Format (.low)
In this problem, as mentioned above there are total of 19,188 documents in the database.
One has to read each document and remove stopwords and punctuations from the sentences, which can be done using
from gensim import corpora, similarities, models
##Text Preprocessing is done here using nltk
##Saving of the dictionary and corpus is done here
##final_text contains the tokens of all the documents
dictionary = corpora.Dictionary(final_text)
corpus = [dictionary.doc2bow(text) for text in final_text]
##Then the dictionary and corpus can be used to train using LDA
mm = corpora.MmCorpus('questions.mm')
lda = gensim.models.ldamodel.LdaModel(corpus=mm, id2word=dictionary, num_topics=100, update_every=0, chunksize=19188, passes=20)
This way one can transform his dataset to a corpus that can be trained for topic modelling using LDA using gensim package.