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Question

What advantage does unstructured information processing provide in knowledge integration for teaching?

a.

Increased reliability of knowledge sharing

b.

Monitoring and control over knowledge transfer

c.

Dynamic reorganization of textual material

d.

Improved content syndication capabilities

Posted under Big Data Computing

Answer: (b).Monitoring and control over knowledge transfer Explanation:Unstructured information processing can offer monitoring and control over knowledge transfer, making it more effective for teaching purposes.

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Q. What advantage does unstructured information processing provide in knowledge integration for teaching?

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