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Griffiths and Steyvers give an example of word probabilities under topics in their 2006 book contribution.

I'm using R and would like to reproduce such word probabilities per topic and per document applied to my own data. Unfortunately, I'm pretty new to R and topicmodels and I grow desperate since the answer to that particular question seems to be so obvious that nobody asks the question.

So, given a DTM or a TDM or the results of the LDA function in topicmodels package, how can I get the posterior distribution?

The following output like in Griffiths and Steyvers would be great:

Topic xyz

word prob.
hello 0.069
world (1-0.069)

In the paper, they give this kind of output for several topics - this short one is just for clarifying my question.

PS: Any links or hints would be very much appreciated!

share|improve this question
Did you use ?LDA and try the examples? – Tyler Rinker Apr 15 '14 at 0:06
Just did it. Solved one problem by giving the topic probabilities per document. Still, cannot retrieve the word probabilities per doc or topic. Maybe I don't see wood for the trees? – Matt Apr 15 '14 at 4:32
I think you want topicmodels::posterior(lda_model)[["terms"]] – Tyler Rinker Dec 22 '15 at 5:46

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