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Question

How are entities and their relationships treated in the modeling level of information extraction?

a.

As individual sentences within a document

b.

As separate XML schema elements

c.

As bags of words

d.

As mentions and their possible relationships to other entities

Posted under Big Data Computing

Answer: (d).As mentions and their possible relationships to other entities Explanation:In the modeling level of information extraction, entities and their relationships are treated as mentions and their possible relationships to other entities.

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Q. How are entities and their relationships treated in the modeling level of information extraction?

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