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Question

In a business context, how can unstructured information processing contribute to the knowledge production phase of the knowledge life cycle?

a.

By supporting the adoption of knowledge claims

b.

By enhancing knowledge sharing within organizations

c.

By aiding in information extraction on the relational level

d.

By facilitating knowledge integration processes

Posted under Big Data Computing

Answer: (c).By aiding in information extraction on the relational level Explanation:Unstructured information processing can contribute to the knowledge production phase by aiding in information extraction on the relational level, helping to formulate meaningful sentences and gathering evidence for or against hypotheses.

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Q. In a business context, how can unstructured information processing contribute to the knowledge production phase of the knowledge life cycle?

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