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Question

How is document classification based on information extraction used in opinion or sentiment mining?

a.

To identify possible entities or relationships

b.

To generate document term profiles

c.

To detect statements in documents

d.

To examine the degree of concepts related to opinions

Posted under Big Data Computing

Answer: (d).To examine the degree of concepts related to opinions Explanation:Document classification based on information extraction is used in opinion or sentiment mining to examine the degree of concepts related to opinions.

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Q. How is document classification based on information extraction used in opinion or sentiment mining?

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