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Question

What is the primary purpose of using Gibbs sampling or variational inference methods in LDA?

a.

To estimate the number of topics for an LDA analysis

b.

To adapt the parameters and hyperparameters according to Bayes' rule

c.

To count the number of documents in a corpus

d.

To define the anchor terms in LDA

Posted under Big Data Computing

Answer: (b).To adapt the parameters and hyperparameters according to Bayes' rule Explanation:The primary purpose of using Gibbs sampling or variational inference methods in LDA is to adapt the parameters and hyperparameters according to Bayes' rule.

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Q. What is the primary purpose of using Gibbs sampling or variational inference methods in LDA?

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