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Question

Which of the following features is often considered in opinion mining?

a.

Term frequency and presence

b.

Syntactical analysis and semantic ambiguity

c.

Sentence length and readability

d.

Pronoun usage and punctuation marks

Posted under Big Data Computing

Answer: (a).Term frequency and presence Explanation:Term frequency and presence are often considered features in opinion mining.

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Q. Which of the following features is often considered in opinion mining?

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