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Question

What does the generative model in LDA describe?

a.

The sequence of tokens in a document

b.

The probability distribution of terms in a document

c.

The process of predicting relative frequencies of terms in a document

d.

The generation of a document as a combination of topic and term sampling

Posted under Big Data Computing

Answer: (d).The generation of a document as a combination of topic and term sampling Explanation:The generative model in LDA describes the generation of a document as a combination of topic and term sampling.

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Q. What does the generative model in LDA describe?

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