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Question

What is the practical importance of novelty detection in unstructured information processing?

a.

Detecting typical object configurations

b.

Recognizing spatial relationships

c.

Finding objects unrelated to the theme or scene

d.

Identifying named entities

Posted under Big Data Computing

Answer: (c).Finding objects unrelated to the theme or scene Explanation:The practical importance of novelty detection in unstructured information processing is in finding objects unrelated to the theme or scene.

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Q. What is the practical importance of novelty detection in unstructured information processing?

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