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Question

How can unstructured information processing enhance knowledge dissemination?

a.

By creating new knowledge claims

b.

By enabling better searching and retrieving processes

c.

By facilitating knowledge sharing within communities

d.

By providing dynamic reorganization of textual material

Posted under Big Data Computing

Answer: (b).By enabling better searching and retrieving processes Explanation:Unstructured information processing can enhance knowledge dissemination by enabling better searching and retrieving processes, allowing more comprehensive sets of knowledge resources to be integrated.

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Q. How can unstructured information processing enhance knowledge dissemination?

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