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Question

What is the purpose of ontology-based text annotation technology in information extraction?

a.

To generate document term profiles

b.

To perform unsupervised knowledge extraction

c.

To define ontology concepts and predicates

d.

To combine information extraction with conceptual analysis

Posted under Big Data Computing

Answer: (d).To combine information extraction with conceptual analysis Explanation:The purpose of ontology-based text annotation technology in information extraction is to combine information extraction with conceptual analysis.

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Q. What is the purpose of ontology-based text annotation technology in information extraction?

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