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Question

How can text clustering contribute to the knowledge production phase?

a.

By directly validating knowledge claims

b.

By summarizing knowledge assets

c.

By identifying topics of interest and proximity relationships

d.

By enhancing broadcasting and knowledge sharing

Posted under Big Data Computing

Answer: (c).By identifying topics of interest and proximity relationships Explanation:Text clustering can contribute to the knowledge production phase by identifying topics of interest and estimating their proximity and interrelationships, helping to formulate specific hypotheses relevant to the knowledge life cycle.

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Q. How can text clustering contribute to the knowledge production phase?

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