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Question

Which type of learning is often used in knowledge discovery, data mining, and machine learning?

a.

Learning by being told

b.

Learning by analogy

c.

Learning from examples

d.

Rote learning

Posted under Big Data Computing

Answer: (c).Learning from examples Explanation:Learning from examples, which involves inductive inference, is commonly used in knowledge discovery, data mining, machine learning, and related disciplines.

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Q. Which type of learning is often used in knowledge discovery, data mining, and machine learning?

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